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How-To Tutorials - Single Board Computers

71 Articles
article-image-raspberry-pi-4-is-up-for-sale-at-35-with-64-bit-arm-core-up-to-4gb-memory-full-throughput-gigabit-ethernet-and-more
Vincy Davis
24 Jun 2019
5 min read
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Raspberry Pi 4 is up for sale at $35, with 64-bit ARM core, up to 4GB memory, full-throughput gigabit Ethernet and more!

Vincy Davis
24 Jun 2019
5 min read
Today, the Raspberry Pi 4 model is up for sale, starting at $35. It has a 1.5GHz quad-core 64-bit ARM Cortex-A72 CPU, three memory options of up to 4GB, full-throughput gigabit Ethernet, Dual-band 802.11ac wireless networking, two USB 3.0 and two USB 2.0 ports, a complete compatibility with earlier Raspberry Pi products and more. Eben Upton, Chief Executive at Raspberry Pi Trading has said that “This is a comprehensive upgrade, touching almost every element of the platform.” This is the first Raspberry Pi product available offline, since the opening of their store in Cambridge, UK.   https://youtu.be/sajBySPeYH0   What’s new in Raspberry Pi 4? New Raspberry Pi silicon Previous Raspberry Pi models are based on 40nm silicon. However, the new Raspberry Pi 4 is a complete re-implementation of BCM283X on 28nm. The power saving delivered by the smaller process geometry has enabled the use of Cortex-A72 core, which has a 1.5GHz quad-core 64-bit ARM. The Cortex-A72 core can execute more instructions per clock, yielding four times performance improvement, over Raspberry Pi 3B+, depending on the benchmark. New Raspbian software The new Raspbian software provides numerous technical improvements, along with an extensively modernized user interface, and updated applications including the Chromium 74 web browser. For Raspberry Pi 4, the Raspberry team has retired the legacy graphics driver stack used on previous models and opted for the Mesa “V3D” driver. It offers benefits like OpenGL-accelerated web browsing and desktop composition, and also eliminates roughly half of the lines of closed-source code in the platform. Raspberry Pi 4 memory options For the first time, Raspberry Pi 4 is offering a choice of memory capacities, as shown below: All three variants of the new Raspberry Pi model have been launched. The entry-level Raspberry Pi 4 Model B is priced at 35$, excluding sales tax, import duty, and shipping. Additional improvements in Raspberry Pi 4 Power Raspberry Pi 4 has USB-C as the power connector, which will support an extra 500mA of current, ensuring 1.2A for downstream USB devices, even under heavy CPU load. Video The previous type-A HDMI connector has been replaced with a pair of type-D HDMI connectors, so as to accommodate dual display output within the existing board footprint. Ethernet and USB The Gigabit Ethernet magjack has been moved to the top right of the board, hence simplifying the PCB routing. The 4-pin Power-over-Ethernet (PoE) connector is in the same location, thus Raspberry Pi 4 remains compatible with the PoE HAT. The Ethernet controller on the main SoC is connected to an external Broadcom PHY, thus providing full throughput. USB is provided via an external VLI controller, connected over a single PCI Express Gen 2 lane, and providing a total of 4Gbps of bandwidth, shared between the four ports. The Raspberry Pi 4 model has the LPDDR4 memory technology, with triple bandwidth. It has also upgraded the video decode, 3D graphics, and display output to support 4Kp60 throughput. Onboard Gigabit Ethernet and PCI Express controllers have been added to address the non-multimedia I/O limitations of the previous devices. Image Source: Raspberry Pi blog New Raspberry Pi 4 accessories Due to the connector and form-factor changes, Raspberry Pi 4 has the requirement of new accessories. The Raspberry Pi 4 has its own case, priced at $5. It also has developed a suitable 5V/3A power supply, which is priced at $8 and is available in the UK, European, North American and Australian plug formats. The Raspberry Pi 4 Desktop Kit is also available and priced at $120. While the earlier Raspberry Pi models will be available in the market, Upton has mentioned that Raspberry Pi will continue to build these models as long as there's a demand for them. Users are quite ecstatic with the availability of Raspberry Pi 4 and many have already placed orders for it. https://twitter.com/Morphy99/status/1143103131821252609 https://twitter.com/M0VGA/status/1143064771446677509 A user on Reddit comments, “Very nice. Gigabit LAN and 4GB memory is opening it up to a hell of a lot more use cases. I've been tempted by some of the Pi's higher-specced competitors like the Pine64, but didn't want to lose out on the huge community behind the Pi. This seems like the best of both worlds to me.” A user on Hacker News says that “Oh my! This is such a crazy upgrade. I've been using the RPI2 as my HTPC/NAS at my folks, and I'm so happy with it. I was itching to get the last one for myself. USB 3.0! Gigabit Ethernet! WiFi 802.11ac, BT 5.0, 4GB RAM! 4K! $55 at most?! What the!? How the??! I know I'm not maintaining decorum at Hacker News, but I am SO mighty, MIGHTY excited! I'm setting up a VPN to hook this (when I get it) to my VPS and then do a LOT of fun stuff back and forth, remotely, and with the other RPI at my folks.” Another comment reads “This is absolutely great. The RPi was already exceptional for its price point, and this version seems to address the few problems it had (lack of Gigabit, USB speed and RAM capacity) and add onto it even more features. It almost seems too good to be true. Can't wait!” Another user says that “I'm most excited about the modern A72 cores, upgraded hardware decode, and up to 4 GB RAM. They really listened and delivered what most people wanted in a next gen RPi.” For more details, head over to the Raspberry Pi official blog. You can now install Windows 10 on a Raspberry Pi 3 Setting up a Raspberry Pi for a robot – Headless by Default [Tutorial] Introducing Strato Pi: An industrial Raspberry Pi
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Gebin George
13 Jul 2018
10 min read
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How to secure your Raspberry Pi board [Tutorial]

Gebin George
13 Jul 2018
10 min read
In this Raspberry Pi tutorial,  we will learn to secure our Raspberry Pi board. We will also learn to implement and enable the security features to make the Pi secure. This article is an excerpt from the book, Internet of Things with Raspberry Pi 3,  written by Maneesh Rao. Changing the default password Every Raspberry Pi that is running the Raspbian operating system has the default username pi and default password raspberry, which should be changed as soon as we boot up the Pi for the first time. If our Raspberry Pi is exposed to the internet and the default username and password has not been changed, then it becomes an easy target for hackers. To change the password of the Pi in case you are using the GUI for logging in, open the menu and go to Preferences and Raspberry Pi Configuration, as shown in Figure 10.1: Within Raspberry Pi Configuration under the System tab, select the change password option, which will prompt you to provide a new password. After that, click on OK and the password is changed (refer Figure 10.2): If you are logging in through PuTTY using SSH, then open the configuration setting by running the sudo raspi-config command, as shown in Figure 10.3: On successful execution of the command, the configuration window opens up. Then, select the second option to change the password and finish, as shown in Figure 10.4: It will prompt you to provide a new password; you just need to provide it and exit. Then, the new password is set. Refer to Figure 10.5: Changing the username All Raspberry Pis come with the default username pi, which should be changed to make it more secure. We create a new user and assign it all rights, and then delete the pi user. To add a new user, run the sudo adduser adminuser command in the terminal. It will prompt for a password; provide it, and you are done, as shown in Figure 10.6: Now, we will add our newly created user to the sudo group so that it has all the root-level permissions, as shown in Figure 10.7: Now, we can delete the default user, pi, by running the sudo deluser pi command. This will delete the user, but its repository folder /home/pi will still be there. If required, you can delete that as well. Making sudo require a password When a command is run with sudo as the prefix, then it'll execute it with superuser privileges. By default, running a command with sudo doesn't need a password, but this can cost dearly if a hacker gets access to Raspberry Pi and takes control of everything. To make sure that a password is required every time a command is run with superuser privileges, edit the 010_pi-nopasswd file under /etc/sudoers.d/ by executing the command shown in Figure 10.8: This command will open up the file in the nano editor; replace the content with pi ALL=(ALL) PASSWD: ALL, and save it. Updated Raspbain operating system To get the latest security updates, it is important to ensure that the Raspbian OS is updated with the latest version whenever available. Visit https://www.raspberrypi.org/documentation/raspbian/updating.md to learn the steps to update Raspbain. Improving SSH security SSH is one of the most common techniques to access Raspberry Pi over the network and it becomes necessary to use if you want to make it secure. Username and password security Apart from having a strong password, we can allow and deny access to specific users. This can be done by making changes in the sshd_config file. Run the sudo nano /etc/ssh/sshd_config command. This will open up the sshd_config file; then, add the following line(s) at the end to allow or deny specific users: To allow users, add the line: AllowUsers tom john merry To deny users, add this line: DenyUsers peter methew For these changes to take effect, it is necessary to reboot the Raspberry Pi. Key-based authentication Using a public-private key pair for authenticating a client to an SSH server (Raspberry Pi), we can secure our Raspberry Pi from hackers. To enable key-based authentication, we first need to generate a public-private key pair using tools called PuTTYgen for Windows and ssh-keygen for Linux. Note that a key pair should be generated by the client and not by Raspberry Pi. For our purpose, we will use PuTTYgen for generating the key pair. Download PuTTY from the following web link: Note that puTTYgen comes with PuTTY, so you need not install it separately. Open the puTTYgen client and click on Generate, as shown in Figure 10.9: Next, we need to hover the mouse over the blank area to generate the key, as highlighted in Figure 10.10: Once the key generation process is complete, there will be an option to save the public and private keys separately for later use, as shown in Figure 10.11—ensure you keep your private key safe and secure: Let's name the public key file rpi_pubkey, and the private key file rpi_privkey.ppk and transfer the public key file rpi_pubkey from our system to Raspberry. Log in to Raspberry Pi and under the user repository, which is /home/pi in our case, create a special directory with the name .ssh, as shown in Figure 10.12: Now, move into the .ssh directory using the cd command and create/open the file with the name authorized_keys, as shown in Figure 10.13: The nano command opens up the authorized_keys file in which we will copy the content of our public key file, rpi_pubkey. Then, save (Ctrl + O) and close the file (Ctrl + X). Now, provide the required permissions for your pi user to access the files and folders. Run the following commands to set permissions: chmod 700 ~/.ssh/ (set permission for .ssh directory) chmod 600 ~/.ssh/authorized_keys (set permission for key file) Refer to Figure 10.14, which shows the permissions before and after running the chmod commands: Finally, we need to disable the password logins to avoid unauthorized access by editing the /etc/ssh/sshd_config file. Open the file in the nano editor by running the following command: sudo nano etc/ssh/sshd_config In the file, there is a parameter #PasswordAuthentication yes. We need to uncomment the line by removing # and setting the value to no: PasswordAuthentication no Save (Ctrl + O) and close the file (Ctrl + X). Now, password login is prohibited and we can access the Raspberry Pi using the key file only. Restart Raspberry Pi to make sure all the changes come into effect with the following command: sudo reboot Here, we are assuming that both Raspberry Pi and the system that is being used to log in to Pi are one and the same. Now, you can log in to Raspberry Pi using PuTTY. Open the PuTTY terminal and provide the IP address of your Pi. On the left-hand side of the PuTTY window, under Category, expand SSH as shown in Figure 10.15: Then, select Auth, which will provide the option to browse and upload the private key file, as shown in Figure 10.16: Once the private key file is uploaded, click on Open and it will log in to Raspberry Pi successfully without any password. Setting up a firewall There are many firewall solutions available for Linux/Unix-based operating systems, such as Raspbian OS in the case of Raspberry Pi. These firewall solutions have IP tables underneath to filter packets coming from different sources and allow only the legitimate ones to enter the system. IP tables are installed in Raspberry Pi by default, but are not set up. It is a bit tedious to set up the default IP table. So, we will use an alternate tool, Uncomplicated Fire Wall (UFW), which is extremely easy to set up and use ufw. To install ufw, run the following command (refer to Figure 10.17): sudo apt install ufw Once the download is complete, enable ufw (refer to Figure 10.18) with the following command: sudo ufw enable If you want to disable the firewall (refer to Figure 10.20), use the following command: sudo ufw disable Now, let's see some features of ufw that we can use to improve the safety of Raspberry Pi. Allow traffic only on a particular port using the allow command, as shown in Figure 10.21: Restrict access on a port using the deny command, as shown in Figure 10.22: We can also allow and restrict access for a specific service on a specific port. Here, we will allow tcp traffic on port 21 (refer to Figure 10.23): We can check the status of all the rules under the firewall using the status command, as shown in Figure 10.24: Restrict access for particular IP addresses from a particular port. Here, we deny access to port 30 from the IP address 192.168.2.1, as shown in Figure 10.25: To learn more about ufw, visit https://www.linux.com/learn/introduction-uncomplicated-firewall-ufw. Fail2Ban At times, we use our Raspberry Pi as a server, which interacts with other devices that act as a client for Raspberry Pi. In such scenarios, we need to open certain ports and allow certain IP addresses to access them. These access points can become entry points for hackers to get hold of Raspberry Pi and do damage. To protect ourselves from this threat, we can use the fail2ban tool. This tool monitors the logs of Raspberry Pi traffic, keeps a check on brute-force attempts and DDOS attacks, and informs the installed firewall to block a request from that particular IP address. To install Fail2Ban, run the following command: sudo apt install fail2ban Once the download is completed successfully, a folder with the name fail2ban is created at path /etc. Under this folder, there is a file named jail.conf. Copy the content of this file to a new file and name it jail.local. This will enable fail2ban on Raspberry Pi. To copy, you can use the following command: sudo /etc/fail2ban/jail.conf /etc/fail2ban/jail.local Now, edit the file using the nano editor: sudo nano /etc/fail2ban/jail.local Look for the [ssh] section. It has a default configuration, as shown in Figure 10.26: This shows that Fail2Ban is enabled for ssh. It checks the port for ssh connections, filters the traffic as per conditions set under in the sshd configuration file located at path etcfail2banfilters.dsshd.conf, parses the logs at /var/log/auth.log for any suspicious activity, and allows only six retries for login, after which it restricts that particular IP address. The default action taken by fail2ban in case someone tries to hack is defined in jail.local, as shown in Figure 10.27: This means when the iptables-multiport action is taken against any malicious activity, it runs as per the configuration in /etc/fail2ban/action.d/iptables-multiport.conf. To summarize, we learned how to secure our Raspberry Pi single-board. If you found this post useful, do check out the book Internet of Things with Raspberry Pi 3, to interface various sensors and actuators with Raspberry Pi 3 to send data to the cloud. Build an Actuator app for controlling Illumination with Raspberry Pi 3 Should you go with Arduino Uno or Raspberry Pi 3 for your next IoT project? Build your first Raspberry Pi project
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Gebin George
28 Jun 2018
10 min read
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Build an Actuator app for controlling Illumination with Raspberry Pi 3

Gebin George
28 Jun 2018
10 min read
In this article, we will look at how to build an actuator application for controlling illuminations. This article is an excerpt from the book, Mastering Internet of Things, written by Peter Waher. This book will help you design and implement IoT solutions with single board computers. Preparing our project Let's create a new Universal Windows Platform application project. This time, we'll call it Actuator. We can also use the Raspberry Pi 3, even though we will only use the relay in this project. To make the persistence of application states even easier, we'll also include the latest version of the NuGet package Waher.Runtime.Settings in the project. It uses the underlying object database defined by Waher.Persistence to persist application settings. Defining control parameters Actuators come in all sorts, types, and sizes, from the very complex to the very simple. While it would be possible to create a proprietary format that configures the actuator in a bulk operation, such a method is doomed to fail if you aim for any type of interoperable communication. Since the internet is based on interoperability as a core principle, we should consider this from the start, during the design phase. Interoperability means devices can learn to operate together, even if they are from different manufacturers. To achieve this, devices must be able to describe what they can do, in a way that each participant understands. To be able to do this, we need a way to break down (divide and conquer) a complex actuator into parts that are easily described and understood. One way is to see an actuator as a collection of control parameters. Each control parameter is a named parameter with a simple and recognizable data type. (In the same way, we can see a sensor as a collection of sensor data fields.): For our example, we will only need one control parameter: A Boolean control parameter controlling the state of our relay. We'll just call it Output, for simplicity. Understanding relays Relays, simply put, are electric switches that we can control using a small output signal. They're perfect for small controllers, like Raspberry Pi, to switch other circuits with higher voltages on and off. The simplest example is to use a relay to switch a lamp on and off. We can't light the lamp using the voltage available to us in Raspberry Pi, but we can use a relay as a switch to control the lamp. The principal part of a normal relay is a coil. When electricity runs through it, it magnetizes an iron core, which in turn moves a lever from the Normally Closed (NC) connector to the Normally Open (NO) connector. When electricity is cut, a spring returns the lever from the NO connector to the NC connector. This movement of the lever from one connector to the other causes a characteristic clicking sound. This tells you that the relay works. The lever in turn is connected to the Common Ground (COM) connector. The following figure illustrates how a simple relay is constructed. We control the flow of the current through the coil (L1) using our output SIGNAL (D1 in our case). Internally, in the relay, a resistor (R1) is placed before the base pin of the transistor (T1), to adapt the signal voltage to an appropriate level. When we connect or cut the current through the coil, it will induce a reverse current. This may be harmful for the transistor when the current is being cut. For that reason, a fly-back diode (D1) is added, allowing excess current to be fed back, avoiding harm to the transistor: Connecting our lamp Now that we know how a relay works, it's relatively easy to connect our lamp to it. Since we want the lamp to be illuminated when we turn the relay on (set D1to HIGH), we will use the NO and COM connectors, and let the NC connector be. If the lamp has a normal two-wire AC cable, we can insert the relay into the AC circuit by simply cutting one of the wires, inserting one end into the NO connector and the other into the COM connector, as is illustrated in the following figure: Be sure to follow appropriate safety regulations when working with electricity. Connecting an LED An alternative to working with the alternating current (AC) is to use a low-power direct current (DC) source and an LED to simulate a lamp. You can connect the COM connector to a resistor and an LED, and then to ground (GND) on one end, and the NO directly to the 5V or 3.3V source on the Raspberry Pi on the other end. The size of the resistor is determined by how much current the LED needs to light up, and the voltage source you choose. If the LED needs 20 mA, and you connect it to a 5V source, Ohms Law tells us we need an R = U/I = 5V/0.02A = 250 Ω resistor. The following figure illustrates this: Controlling the output The relay is connected to our digital output pin 9 on the Arduino board. As such, controlling it is a simple call to the digitalWrite() method on our arduino object. Since we will need to perform this control action from various locations in code in later chapters, we'll create a method for it: internal async Task SetOutput(bool On, string Actor) { if (this.arduino != null) { this.arduino.digitalWrite(9, On ? PinState.HIGH : PinState.LOW); The first parameter simply states the new value of the control parameter. We'll add a second parameter that describes who is making the requested change. This will come in handy later, when we allow online users to change control parameters. Persisting control parameter states If the device reboots for some reason, for instance after a power outage, it's normally desirable that it returns to the state it was in before it shut down. For this, we need to persist the output value. We can use the object database defined in Waher.Persistence and Waher.Persistence.Files for this. But for simple control states, we don't need to create our own data-bearing classes. That has already been done by Waher.Runtime.Settings. To use it, we first include the NuGet, as described earlier. We must also include its assembly when we initialize the runtime inventory, which is used by the object database: Types.Initialize( typeof(FilesProvider).GetTypeInfo().Assembly, typeof(App).GetTypeInfo().Assembly, typeof(RuntimeSettings).GetTypeInfo().Assembly); Depending on the build version selected when creating your UWP application, different versions of .NET Standard will be supported. Build 10586 for instance, only supports .NET Standard up to v1.4. Build 16299, however, supports .NET Standard up to v2.0. The Waher.Runtime.Inventory.Loader library, available as a NuGet package, provides the capability to loop through existing assemblies in a simple manner, but it requires support for .NET Standard 1.5. You can call its TypesLoader.Initialize() method to initialize Waher.Runtime.Inventory with all assemblies available in the runtime. It also dynamically loads all permitted assemblies available in the application folder that have not been loaded. Saving the current control state is then simply a matter of calling the Set() or SetAsync() methods on the static RuntimeSettings class, defined in the Waher.Runtime.Settings namespace: await RuntimeSettings.SetAsync("Actuator.Output", On); During the initialization of the device, we then call the Get() or GetAsync() methods to get the last value, if it exists. If it does not exist, a default value we define is returned: bool LastOn = await RuntimeSettings.GetAsync("Actuator.Output", false); this.arduino.digitalWrite(1, LastOn ? PinState.HIGH : PinState.LOW); Logging important control events In distributed IoT control applications, it's vitally important to make sure unauthorized access to the system is avoided. While we will dive deeper into this subject in later chapters, one important tool we can start using it to log everything of a security interest in the event log. We can decide what to do with the event log later, whether we want to analyze or store it locally or distribute it in the network for analysis somewhere else. But unless we start logging events of security interest directly when we develop, we risk forgetting logging certain events later. So, let's log an event every time the output is set: Log.Informational("Setting Control Parameter.", string.Empty, Actor ?? "Windows user", new KeyValuePair<string, object>("Output", On)); If the Actor parameter is null, we assume the control parameter has been set from the Windows GUI. We use this fact, to update the window if the change has been requested from somewhere else: if (Actor != null) await MainPage.Instance.OutputSet(On); Using Raspberry Pi GPIO pins directly The Raspberry Pi can also perform input and output without an Arduino board. But the General-Purpose Input/Output (GPIO) pins available only supports digital input and output. Since the relay module is controlled through a digital output, we can connect it directly to the Raspberry Pi, if we want. That way, we don't need the Arduino board. (We wouldn't be able to test-run the application on the local machine either, though.) Checking whether GPIO is available GPIO pins are accessed through the GpioController class defined in the Windows.Devices.Gpio namespace. First, we must check that GPIO is available on the machine. We do this by getting the default controller, and checking whether it's available: gpio = GpioController.GetDefault(); if (gpio != null) { ... } else Log.Error("Unable to get access to GPIO pin " + gpioOutputPin.ToString()); Initializing the GPIO output pin Once we have access to the controller, we can try to open exclusive access to the GPIO pin we've connected the relay to: if (gpio.TryOpenPin(gpioOutputPin, GpioSharingMode.Exclusive, out this.gpioPin, out GpioOpenStatus Status) && Status == GpioOpenStatus.PinOpened) { ... } else Log.Error("Unable to get access to GPIO pin " + gpioOutputPin.ToString()); Through the GpioPin object gpioPin, we can now control the pin. The first step is to set the operating mode for the pin. This is done by calling the SetDriveMode() method. There are many different modes a pin can be set to, not all necessarily supported by the underlying firmware and hardware. To check that a mode is supported, call the IsDriveModeSupported() method first: if (this.gpioPin.IsDriveModeSupported(GpioPinDriveMode.Output)) { This.gpioPin.SetDriveMode(GpioPinDriveMode.Output); ... } else Log.Error("Output mode not supported for GPIO pin " + gpioOutputPin.ToString()); There are various output modes available: Output, OutputOpenDrain, OutputOpenDrainPullUp, OutputOpenSource, and OutputOpenSourcePullDown. The code documentation for each flag describes the particulars of each option. Setting the GPIO pin output To set the actual output value, we call the Write() method on the pin object: bool LastOn = await RuntimeSettings.GetAsync("Actuator.Output", false); this.gpioPin.Write(LastOn ? GpioPinValue.High : GpioPinValue.Low); We need to make a similar change in the SetOutput() method. The Actuator project in the MIOT repository uses the Arduino use case by default. The GPIO code is also available through conditional compiling. It is activated by uncommenting the GPIO switch definition on the first row of the App.xaml.cs file. You can also perform Digital Input using principles similar to the preceding ones, with some differences. First, you select an input drive mode: Input, InputPullUp or InputPullDown. You then use the Read() method to read the current state of the pin. You can also use the ValueChanged event to get a notification whenever the input pin changes value. We saw how to create a simple actuator app for the Raspberry Pi using C#. If you found our post useful, do check out this title Mastering Internet of Things, to build complex projects using motions detectors, controllers, sensors, and Raspberry Pi 3. Should you go with Arduino Uno or Raspberry Pi 3 for your next IoT project? Build your first Raspberry Pi project Meet the Coolest Raspberry Pi Family Member: Raspberry Pi Zero W Wireless
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Gebin George
27 Jun 2018
19 min read
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Build an IoT application with Google Cloud [Tutorial]

Gebin George
27 Jun 2018
19 min read
In this tutorial, we will build a sample internet of things application using Google Cloud IoT. We will start off by implementing the end-to-end solution, where we take the data from the DHT11 sensor and post it to the Google IoT Core state topic. This article is an excerpt from the book, Enterprise Internet of Things Handbook, written by Arvind Ravulavaru. End-to-end communication To get started with Google IoT Core, we need to have a Google account. If you do not have a Google account, you can create one by navigating to this URL: https://accounts.google.com/SignUp?hl=en. Once you have created your account, you can login and navigate to Google Cloud Console: https://console.cloud.google.com. Setting up a project The first thing we are going to do is create a project. If you have already worked with Google Cloud Platform and have at least one project, you will be taken to the first project in the list or you will be taken to the Getting started page. As of the time of writing this book, Google Cloud Platform has a free trial for 12 months with $300 if the offer is still available when you are reading this chapter, I would highly recommend signing up: Once you have signed up, let's get started by creating a new project. From the top menu bar, select the Select a Project dropdown and click on the plus icon to create a new project. You can fill in the details as illustrated in the following screenshot: Click on the Create button. Once the project is created, navigate to the Project and you should land on the Home page. Enabling APIs Following are the steps to be followed for enabling APIs: From the menu on the left-hand side, select APIs & Services | Library as shown in the following screenshot: On the following screen, search for pubsub and select the Pub/Sub API from the results and we should land on a page similar to the following: Click on the ENABLE button and we should now be able to use these APIs in our project. Next, we need to enable the real-time API; search for realtime and we should find something similar to the following: Click on the ENABLE & button. Enabling device registry and devices The following steps should be used for enabling device registry and devices: From the left-hand side menu, select IoT Core and we should land on the IoT Core home page: Instead of the previous screen, if you see a screen to enable APIs, please enable the required APIs from here. Click on the & Create device registry button. On the Create device registry screen, fill the details as shown in the following table: Field Value Registry ID Pi3-DHT11-Nodes Cloud region us-central1 Protocol MQTT HTTP Default telemetry topic device-events Default state topic dht11 After completing all the details, our form should look like the following: We will add the required certificates later on. Click on the Create button and a new device registry will be created. From the Pi3-DHT11-Nodes registry page, click on the Add device button and set the Device ID as Pi3-DHT11-Node or any other suitable name. Leave everything as the defaults and make sure the Device communication is set to Allowed and create a new device. On the device page, we should see a warning as highlighted in the following screenshot: Now, we are going to add a new public key. To generate a public/private key pair, we need to have OpenSSL command line available. You can download and set up OpenSSL from here: https://www.openssl.org/source/. Use the following command to generate a certificate pair at the default location on your machine: openssl req -x509 -newkey rsa:2048 -keyout rsa_private.pem -nodes -out rsa_cert.pem -subj "/CN=unused" If everything goes well, you should see an output as shown here: Do not share these certificates anywhere; anyone with these certificates can connect to Google IoT Core as a device and start publishing data. Now, once the certificates are created, we will attach them to the device we have created in IoT Core. Head back to the device page of the Google IoT Core service and under Authentication click on Add public key. On the following screen, fill it in as illustrated: The public key value is the contents of rsa_cert.pem that we generated earlier. Click on the ADD button. Now that the public key has been successfully added, we can connect to the cloud using the private key. Setting up Raspberry Pi 3 with DHT11 node Now that we have our device set up in Google IoT Core, we are going to complete the remaining operation on Raspberry Pi 3 to send data. Pre-requisites The requirements for setting up Raspberry Pi 3 on a DHT11 node are: One Raspberry Pi 3: https://www.amazon.com/Raspberry-Pi-Desktop-Starter-White/dp/B01CI58722 One breadboard: https://www.amazon.com/Solderless-Breadboard-Circuit-Circboard-Prototyping/dp/B01DDI54II/ One DHT11 sensor: https://www.amazon.com/HiLetgo-Temperature-Humidity-Arduino-Raspberry/dp/B01DKC2GQ0 Three male-to-female jumper cables: https://www.amazon.com/RGBZONE-120pcs-Multicolored-Dupont-Breadboard/dp/B01M1IEUAF/ If you are new to the world of Raspberry Pi GPIO's interfacing, take a look at this Raspberry Pi GPIO Tutorial: The Basics Explained on YouTube: https://www.youtube.com/watch?v=6PuK9fh3aL8. The following steps are to be used for the setup process: Connect the DHT11 sensor to Raspberry Pi 3 as shown in the following diagram: Next, power up Raspberry Pi 3 and log in to it. On the desktop, create a new folder named Google-IoT-Device. Open a new Terminal and cd into this folder. Setting up Node.js Refer to the following steps to install Node.js: Open a new Terminal and run the following commands: $ sudo apt update $ sudo apt full-upgrade This will upgrade all the packages that need upgrades. Next, we will install the latest version of Node.js. We will be using the Node 7.x version: $ curl -sL https://deb.nodesource.com/setup_7.x | sudo -E bash - $ sudo apt install nodejs This will take a moment to install, and once your installation is done, you should be able to run the following commands to see the version of Node.js and npm: $ node -v $ npm -v Developing the Node.js device app Now, we will set up the app and write the required code: From the Terminal, once you are inside the Google-IoT-Device folder, run the following command: $ npm init -y Next, we will install jsonwebtoken (https://www.npmjs.com/package/jsonwebtoken) and mqtt (https://www.npmjs.com/package/mqtt) from npm. Execute the following command: $ npm install jsonwebtoken mqtt--save Next, we will install rpi-dht-sensor (https://www.npmjs.com/package/rpi-dht-sensor) from npm. This module will help in reading the DHT11 temperature and humidity values: $ npm install rpi-dht-sensor --save Your final package.json file should look similar to the following code snippet: { "name": "Google-IoT-Device", "version": "1.0.0", "description": "", "main": "index.js", "scripts": { "test": "echo "Error: no test specified" && exit 1" }, "keywords": [], "author": "", "license": "ISC", "dependencies": { "jsonwebtoken": "^8.1.1", "mqtt": "^2.15.3", "rpi-dht-sensor": "^0.1.1" } } Now that we have the required dependencies installed, let's continue. Create a new file named index.js at the root of the Google-IoT-Device folder. Next, create a folder named certs at the root of the Google-IoT-Device folder and move the two certificates we created using OpenSSL there. Your final folder structure should look something like this: Open index.js in any text editor and update it as shown here: var fs = require('fs'); var jwt = require('jsonwebtoken'); var mqtt = require('mqtt'); var rpiDhtSensor = require('rpi-dht-sensor'); var dht = new rpiDhtSensor.DHT11(2); // `2` => GPIO2 var projectId = 'pi-iot-project'; var cloudRegion = 'us-central1'; var registryId = 'Pi3-DHT11-Nodes'; var deviceId = 'Pi3-DHT11-Node'; var mqttHost = 'mqtt.googleapis.com'; var mqttPort = 8883; var privateKeyFile = '../certs/rsa_private.pem'; var algorithm = 'RS256'; var messageType = 'state'; // or event var mqttClientId = 'projects/' + projectId + '/locations/' + cloudRegion + '/registries/' + registryId + '/devices/' + deviceId; var mqttTopic = '/devices/' + deviceId + '/' + messageType; var connectionArgs = { host: mqttHost, port: mqttPort, clientId: mqttClientId, username: 'unused', password: createJwt(projectId, privateKeyFile, algorithm), protocol: 'mqtts', secureProtocol: 'TLSv1_2_method' }; console.log('connecting...'); var client = mqtt.connect(connectionArgs); // Subscribe to the /devices/{device-id}/config topic to receive config updates. client.subscribe('/devices/' + deviceId + '/config'); client.on('connect', function(success) { if (success) { console.log('Client connected...'); sendData(); } else { console.log('Client not connected...'); } }); client.on('close', function() { console.log('close'); }); client.on('error', function(err) { console.log('error', err); }); client.on('message', function(topic, message, packet) { console.log(topic, 'message received: ', Buffer.from(message, 'base64').toString('ascii')); }); function createJwt(projectId, privateKeyFile, algorithm) { var token = { 'iat': parseInt(Date.now() / 1000), 'exp': parseInt(Date.now() / 1000) + 86400 * 60, // 1 day 'aud': projectId }; var privateKey = fs.readFileSync(privateKeyFile); return jwt.sign(token, privateKey, { algorithm: algorithm }); } function fetchData() { var readout = dht.read(); var temp = readout.temperature.toFixed(2); var humd = readout.humidity.toFixed(2); return { 'temp': temp, 'humd': humd, 'time': new Date().toISOString().slice(0, 19).replace('T', ' ') // https://stackoverflow.com/a/11150727/1015046 }; } function sendData() { var payload = fetchData(); payload = JSON.stringify(payload); console.log(mqttTopic, ': Publishing message:', payload); client.publish(mqttTopic, payload, { qos: 1 }); console.log('Transmitting in 30 seconds'); setTimeout(sendData, 30000); } In the previous code, we first define the projectId, cloudRegion, registryId, and deviceId based on what we have created. Next, we build the connectionArgs object, using which we are going to connect to Google IoT Core using MQTT-SN. Do note that the password property is a JSON Web Token (JWT), based on the projectId and privateKeyFile algorithm. The token that is created by this function is valid only for one day. After one day, the cloud will refuse connection to this device if the same token is used. The username value is the Common Name (CN) of the certificate we have created, which is unused. Using mqtt.connect(), we are going to connect to the Google IoT Core. And we are subscribing to the device config topic, which can be used to send device configurations when connected. Once the connection is successful, we callsendData() every 30 seconds to send data to the state topic. Save the previous file and run the following command: $ sudo node index.js And we should see something like this: As you can see from the previous Terminal logs, the device first gets connected then starts transmitting the temperature and humidity along with time. We are sending time as well, so we can save it in the BigQuery table and then build a time series chart quite easily. Now, if we head back to the Device page of Google IoT Core and navigate to the Configuration & state history tab, we should see the data that we are sending to the state topic here: Now that the device is sending data, let's actually read the data from another client. Reading the data from the device For this, you can either use the same Raspberry Pi 3 or another computer. I am going to use MacBook as a client that is interested in the data sent by the Thing. Setting up credentials Before we start reading data from Google IoT Core, we have to set up our computer (for example, MacBook) as a trusted device, so our computer can request data. Let's perform the following steps to set the credentials: To do this, we need to create a new Service account key. From the left-hand-side menu of the Google Cloud Console, select APIs & Services | Credentials. Then click on the Create credentials dropdown and select Service account key as shown in the following screenshot: Now, fill in the details as shown in the following screenshot: We have given access to the entire project for this client and as an Owner. Do not select these settings if this is a production application. Click on Create and you will be asked to download and save the file. Do not share this file; this file is as good as giving someone owner-level permissions to all assets of this project. Once the file is downloaded somewhere safe, create an environment variable with the name GOOGLE_APPLICATION_CREDENTIALS and point it to the path of the downloaded file. You can refer to Getting Started with Authentication at https://cloud.google.com/docs/authentication/getting-started if you are facing any difficulties. Setting up subscriptions The data from the device is being sent to Google IoT Core using the state topic. If you recall, we have named that topic dht11. Now, we are going to create a subscription for this topic: From the menu on the left side, select Pub/Sub | Topics. Now, click on New subscription for the dht11 topic, as shown in the following screenshot: Create a new subscription by setting up the options selected in this screenshot: We are going to use the subscription named dht11-data to get the data from the state topic. Setting up the client Now that we have provided the required credentials as well as subscribed to a Pub/Sub topic, we will set up the Pub/Sub client. Follow these steps: Create a folder named test_client inside the test_client directory. Now, run the following command: $ npm init -y Next, install the @google-cloud/pubsub (https://www.npmjs.com/package/@google-cloud/pubsub) module with the help of the following command: $ npm install @google-cloud/pubsub --save Create a file inside the test_client folder named index.js and update it as shown in this code snippet: var PubSub = require('@google-cloud/pubsub'); var projectId = 'pi-iot-project'; var stateSubscriber = 'dht11-data' // Instantiates a client var pubsub = new PubSub({ projectId: projectId, }); var subscription = pubsub.subscription('projects/' + projectId + '/subscriptions/' + stateSubscriber); var messageHandler = function(message) { console.log('Message Begin >>>>>>>>'); console.log('message.connectionId', message.connectionId); console.log('message.attributes', message.attributes); console.log('message.data', Buffer.from(message.data, 'base64').toString('ascii')); console.log('Message End >>>>>>>>>>'); // "Ack" (acknowledge receipt of) the message message.ack(); }; // Listen for new messages subscription.on('message', messageHandler); Update the projectId and stateSubscriber in the previous code. Now, save the file and run the following command: $ node index.js We should see the following output in the console: This way, any client that is interested in the data of this device can use this approach to get the latest data. With this, we conclude the section on posting data to Google IoT Core and fetching the data. In the next section, we are going to work on building a dashboard. Building a dashboard Now that we have seen how a client can read the data from our device on demand, we will move on to building a dashboard, where we display data in real time. For this, we are going to use Google Cloud Functions, Google BigQuery, and Google Data Studio. Google Cloud Functions Cloud Functions are solution for serverless services. Cloud Functions is a lightweight solution for creating standalone and single-purpose functions that respond to cloud events. You can read more about Google Cloud Functions at https://cloud.google.com/functions/. Google BigQuery Google BigQuery is an enterprise data warehouse that solves this problem by enabling super-fast SQL queries using the processing power of Google's infrastructure. You can read more about Google BigQuery at https://cloud.google.com/bigquery/. Google Data Studio Google Data Studio helps to build dashboards and reports using various data connectors, such as BigQuery or Google Analytics. You can read more about Google Data Studio at https://cloud.google.com/data-studio/. As of April 2018, these three services are still in beta. As we have already seen in the Architecture section, once the data is published on the state topic, we are going to create a cloud function that will get triggered by the data event on the Pub/Sub client. And inside our cloud function, we are going to get a copy of the published data and then insert it into the BigQuery dataset. Once the data is inserted, we are going to use Google Data Studio to create a new report by linking the BigQuery dataset to the input. So, let's get started. Setting up BigQuery The first thing we are going to do is set up BigQuery: From the side menu of the Google Cloud Platform Console, our project page, click on the BigQuery URL and we should be taken to the Google BigQuery home page. Select Create new dataset, as shown in the following screenshot: Create a new dataset with the values illustrated in the following screenshot: Once the dataset is created, click on the plus sign next to the dataset and create an empty table. We are going to name the table dht11_data and we are going have three fields in it, as shown here: Click on the Create Table button to create the table. Now that we have our table ready, we will write a cloud function to insert the incoming data from Pub/Sub into this table. Setting up Google Cloud Function Now, we are going to set up a cloud function that will be triggered by the incoming data: From the Google Cloud Console's left-hand-side menu, select Cloud Functions under Compute. Once you land on the Google Cloud Functions homepage, you will be asked to enable the cloud functions API. Click on Enable API: Once the API is enabled, we will be on the Create function page. Fill in the form as shown here: The Trigger is set to Cloud Pub/Sub topic and we have selected dht11 as the Topic. Under the Source code section; make sure you are in the index.js tab and update it as shown here: var BigQuery = require('@google-cloud/bigquery'); var projectId = 'pi-iot-project'; var bigquery = new BigQuery({ projectId: projectId, }); var datasetName = 'pi3_dht11_dataset'; var tableName = 'dht11_data'; exports.pubsubToBQ = function(event, callback) { var msg = event.data; var data = JSON.parse(Buffer.from(msg.data, 'base64').toString()); // console.log(data); bigquery .dataset(datasetName) .table(tableName) .insert(data) .then(function() { console.log('Inserted rows'); callback(); // task done }) .catch(function(err) { if (err && err.name === 'PartialFailureError') { if (err.errors && err.errors.length > 0) { console.log('Insert errors:'); err.errors.forEach(function(err) { console.error(err); }); } } else { console.error('ERROR:', err); } callback(); // task done }); }; In the previous code, we were using the BigQuery Node.js module to insert data into our BigQuery table. Update projectId, datasetName, and tableName as applicable in the code. Next, click on the package.json tab and update it as shown: { "name": "cloud_function", "version": "0.0.1", "dependencies": { "@google-cloud/bigquery": "^1.0.0" } } Finally, for the Function to execute field, enter pubsubToBQ. pubsubToBQ is the name of the function that has our logic and this function will be called when the data event occurs. Click on the Create button and our function should be deployed in a minute. Running the device Now that the entire setup is done, we will start pumping data into BigQuery: Head back to Raspberry Pi 3 which was sending the DHT11 temperature and humidity data, and run the application. We should see the data being published to the state topic: Now, if we head back to the Cloud Functions page, we should see the requests coming into the cloud function: You can click on VIEW LOGS to view the logs of each function execution: Now, head over to our table in BigQuery and click on the RUN QUERY button; run the query as shown in the following screenshot: Now, all the data that was generated by the DHT11 sensor is timestamped and stored in BigQuery. You can use the Save to Google Sheets button to save this data to Google Sheets and analyze the data there or plot graphs, as shown here: Or we can go one step ahead and use the Google Data Studio to do the same. Google Data Studio reports Now that the data is ready in BigQuery, we are going to set up Google Data Studio and then connect both of them, so we can access the data from BigQuery in Google Data Studio: Navigate to https://datastudio.google.com and log in with your Google account. Once you are on the Home page of Google Data Studio, click on the Blank report template. Make sure you read and agree to the terms and conditions before proceeding. Name the report PI3 DHT11 Sensor Data. Using the Create new data source button, we will create a new data source. Click on Create new data source and we should land on a page where we need to create a new Data Source. From the list of Connectors, select BigQuery; you will be asked to authorize Data Studio to interface with BigQuery, as shown in the following screenshot: Once we authorized, we will be shown our projects and related datasets and tables: Select the dht11_data table and click on Connect. This fetches the metadata of the table as shown here: Set the Aggregation for the temp and humd fields to Max and set the Type for time as Date & Time. Pick Minute (mm) from the sub-list. Click on Add to report and you will be asked to authorize Google Data Studio to read data from the table. Once the data source has been successfully linked, we will create a new time series chart. From the menu, select Insert | Time Series link. Update the data configuration of the chart as shown in the following screenshot: You can play with the styles as per your preference and we should see something similar to the following screenshot: This report can then be shared with any user. With this, we have seen the basic features and implementation process needed to work with Google Cloud IoT Core as well other features of the platform. If you found this post useful, do check out the book,  Enterprise Internet of Things Handbook, to build state of the art IoT applications best-fit for Enterprises. Cognitive IoT: How Artificial Intelligence is remoulding Industrial and Consumer IoT Five Most Surprising Applications of IoT How IoT is going to change tech teams
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Gebin George
21 Jun 2018
13 min read
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Build an IoT application with Azure IoT [Tutorial]

Gebin George
21 Jun 2018
13 min read
Azure IoT makes it relatively easy to build an IoT application from scratch. In this tutorial, you'll find out how to do it. This article is an excerpt from the book, Enterprise Internet of Things Handbook, written by Arvind Ravulavaru. This book will help you work with various trending enterprise IoT platforms. End-to-end communication To get started with Azure IoT, we need to have an Azure account. If you do not have an Azure account, you can create one by navigating to this URL: https://azure.microsoft.com/en-us/free/. Once you have created your account, you can log in and navigate to the Azure portal or you can visit https://portal.azure.com to reach the required page. Setting up the IoT hub The following are the steps required for the setup. Once we are on the portal dashboard, we will be presented with the dashboard home page as illustrated here: Click on +New from the top-left-hand-side menu, then, from the Azure Marketplace, select Internet of Things | IoT Hub, as depicted in the following screenshot: Fill in the IoT hub form to create a new IoT hub, as illustrated here: I have selected F1-Free for the pricing and selected Free Trial as a Subscription, and, under Resource group, I have selected Create new and named it Pi3-DHT11-Node. Now, click on the Create button. It will take a few minutes for the IoT hub to be provisioned. You can keep an eye on the notifications to see the status. If everything goes well, on your dashboard, under the All resources tile, you should see the newly created IoT hub. Click on it and you will be taken to the IoT hub page. From the hub page, click on IoT Devices under the EXPLORERS section and you should see something similar to what is shown in the following screenshot: As you can see, there are no devices. Using the +Add button at the top, create a new device. Now, in the Add Device section, fill in the details as illustrated here: Make sure the device is enabled; else you will not be able to connect using this device ID. Once the device is created, you can click on it to see the information shown in the following screenshot: Do note the Connection string-primary key field. We will get back to this in our next section. Setting up Raspberry Pi on the DHT11 node Now that we have our device set up in Azure IoT, we are going to complete the remaining operations on the Raspberry Pi 3 to send data. Things needed The things required to set up the Raspberry Pi DHT11 node are as follows: One Raspberry Pi 3: https://www.amazon.com/Raspberry-Pi-Desktop-Starter-White/dp/B01CI58722 One breadboard: https://www.amazon.com/Solderless-Breadboard-Circuit-Circboard-Prototyping/dp/B01DDI54II/ One DHT11 sensor: https://www.amazon.com/HiLetgo-Temperature-Humidity-Arduino-Raspberry/dp/B01DKC2GQ0 Three male-to-female jumper cables: https://www.amazon.com/RGBZONE-120pcs-Multicolored-Dupont-Breadboard/dp/B01M1IEUAF/ If you are new to the world of Raspberry Pi GPIO's interfacing, take a look at Raspberry Pi GPIO Tutorial: The Basics Explained video tutorial on YouTube: https://www.youtube.com/watch?v=6PuK9fh3aL8. The steps for setting up the smart device are as follows: Connect the DHT11 sensor to the Raspberry Pi 3 as shown in the following schematic: Next, power up the Raspberry Pi 3 and log into it. On the desktop, create a new folder named Azure-IoT-Device. Open a new Terminal and cd into this newly created folder. Setting up Node.js If Node.js is not installed, please refer to the following steps: Open a new Terminal and run the following commands: $ sudo apt update $ sudo apt full-upgrade This will upgrade all the packages that need upgrades. Next, we will install the latest version of Node.js. We will be using the Node 7.x version: $ curl -sL https://deb.nodesource.com/setup_7.x | sudo -Ebash- $ sudo apt install nodejs This will take a moment to install, and, once your installation is done, you should be able to run the following commands to see the versions of Node.js and NPM: $ node -v $ npm -v Developing the Node.js device app Now we will set up the app and write the required code: From the Terminal, once you are inside the Azure-IoT-Device folder, run the following command: $ npm init -y Next, we will install azure-iot-device-mqtt from NPM (https://www.npmjs.com/package/azure-iot-device-mqtt). This module has the required client code to interface with Azure IoT. Along with this, we are going to install the azure-iot-device (https://www.npmjs.com/package/azure-iot-device) and async modules (https://www.npmjs.com/package/async). Execute the following command: $ npm install azure-iot-device-mqtt azure-iot-device async --save Next, we will install rpi-dht-sensor from NPM (https://www.npmjs.com/package/rpi-dht-sensor). This module will help to read the DHT11 temperature and humidity values. Run the following command: $ npm install rpi-dht-sensor --save Your final package.json file should look like this: { "name":"Azure-IoT-Device", "version":"1.0.0", "description":"", "main":"index.js", "scripts":{ "test":"echo"Error:notestspecified"&&exit1" }, "keywords":[], "author":"", "license":"ISC", "dependencies":{ "async":"^2.6.0", "azure-iot-device-mqtt":"^1.3.1", "rpi-dht-sensor":"^0.1.1" } } Now that we have the required dependencies installed, let's continue. Create a new file named index.js at the root of the Azure-IoT-Device folder. Your final folder structure should look similar to the following screenshot: Open index.js in any text editor and update it as illustrated in the code snippet that can be found here: https://github.com/PacktPublishing/Enterprise-Internet-of-Things-Handbook. In the previous code, we are creating a new MQTTS client from the connectionString. You can get the value of this connection string from IoT Hub | IoT Devices | Pi3-DHT11-Node | Device Details | Connection string-primary key as shown in the following screenshot: Update the connectionString in our code with the previous values. Going back to the code, we are using client.open(connectCallback) to connect to the Azure MQTT broker for our IoT hub, and, once the connection has been made successfully, we call the connectCallback(). In the connectCallback(), we get the device twin using client.getTwin(). Once we have gotten the device twin, we will start collecting the data, send this data to other clients listening to this device using client.sendEvent(), and then send the copy to the device twin using twin.properties.reported.update, so any new client that joins gets the latest saved data. Now, save the file and run the sudo node index.js command. We should see the command output in the console of Raspberry Pi 3: The device has successfully connected, and we are sending the data to both the device twin and the MQTT event. Now, if we head back to the Azure IoT portal, navigate to IoT Hub | IoT Device | Pi3-DHT11-Node | Device Details and click on the device twin, we should see the last data record that was sent by the Raspberry Pi 3, as shown in the following image: Now that we are able to send the data from the device, let's read this data from another MQTT client. Reading the data from the IoT Thing To read the data from the device, you can either use the same Raspberry Pi 3 or another computer. I am going to use my MacBook as a client that is interested in the data sent by the device: Create a folder named test_client. Inside the test_client folder, run the following command: $ npm init --yes Next, install the azure-event-hubs module (https://www.npmjs.com/package/azure-event-hubs) using the following command: $ npm install azure-event-hubs --save Create a file named index.js inside the test_client folder and update it as detailed in the following code snippet: var EventHubClient = require('azure-event-hubs').Client; var connectionString = 'HostName=Pi3-DHT11-Nodes.azure-devices.net;SharedAccessKeyName=iothubowner;SharedAccessKey=J0MTJVy+RFkSaaenfegGMJY3XWKIpZp2HO4eTwmUNoU='; constTAG = '[TESTDEVICE]>>>>>>>>>'; var printError = function(err) { console.log(TAG, err); }; var printMessage = function(message) { console.log(TAG, 'Messagereceived:', JSON.stringify(message.body)); }; var client = EventHubClient.fromConnectionString(connectionString); client.open() .then(client.getPartitionIds.bind(client)) .then(function(partitionIds) { returnpartitionIds.map(function(partitionId) { returnclient.createReceiver('$Default', partitionId, { 'startAfterTime': Date.now() }) .then(function(receiver) { //console.log(TAG,'Createdpartitionreceiver:'+partitionId) console.log(TAG, 'Listening...'); receiver.on('errorReceived', printError); receiver.on('message', printMessage); }); }); }) .catch(printError); In the previous code snippet, we have a connectionString variable. To get the value of this variable, head back to the Azure portal, via IoT Hub | Shared access policies | iothubowner | Connection string-primary key as illustrated in the following screenshot: Copy the value from the Connection string-primary key field and update the code. Finally, run the following command: $ node index.js The following console screenshot shows the command's output: This way, any client that is interested in the data from this device can use this approach to get the latest data. You can also use an MQTT library on the client side to do the same, but do keep in mind that this is not advisable as the connection string is exposed. Instead, you can have a backend micro service that can achieve the same for you and then expose the data via HTTPS. With this, we conclude the section on posting data to Azure IoT and fetching that data. In the next section, we are going to work with building a dashboard for our data. Building a dashboard Now that we have seen how a client can read data from our device on demand, we will move to building a dashboard on which we will show data in real time. For this, we are going to use an Azure stream analytics job and Power BI. Azure stream analytics Azure stream analytics is a managed event-processing engine set up with real-time analytic computations on streaming data. It can gather data coming from various sources, collate it, and stream it into a different source. Using stream analytics, we can examine high volumes of data streamed from devices, extract information from that data stream, and identify patterns, trends, and relationships. Read more about Azure stream analytics. Power BI Power BI is a suite of business-analytics tools used to analyze data and share insights. A Power BI dashboard updates in real time and provides a single interface for exploring all the important metrics. With one click, users can explore the data behind their dashboard using intuitive tools that make finding answers easy. Creating dashboards and accessing them across various sources is also quite easy. Read more about Power BI. As we have seen in the architecture section, we are going to follow the steps given in the next section to create a dashboard in Power BI. Execution steps These are the steps that need to be followed: Create a new Power BI account. Set up a new consumer group for events (built-in endpoint). Create a stream analytics job. Set up input and outputs. Build the query to stream data from the Azure IoT hub to Power BI. Visualize the datasets in Power BI and build a dashboard. So let's get started. Signing up to Power BI Navigate to the Power BI sign-in page, and use the Sign up free option and get started today form on this page to create an account. Once an account has been created, validate the account. Log in to Power BI with your credentials and you will land on your default workspace. At the time of writing, Power BI needs an official email to create an account. Setting up events Now that we have created a new Power BI, let's set up the remaining pieces: Head back to https://portal.azure.com and navigate to the IoT hub we have created. From the side menu inside the IoT hub page, select Endpoints then Events under the Built-in endpoints section. When the form opens, under the Consumer groups section, create a new consumer group with the name, pi3-dht11-stream, as illustrated, and then click on the Save button to save the changes: Next, we will create a new stream analytics job. Creating a stream analytics job Let's see how to create a stream analytics job by following these steps: Now that the IoT hub setup is done, head back to the dashboard. From the top-left menu, click on +New, then Internet of Things and Stream Analytics job, as shown in the following screenshot: Fill in the New Stream Analytics job form, as illustrated here: Then click on the Create button. It will take a couple of minutes to create a new job. Do keep an eye on the notification section for any updates. Once the job has been created, it will appear on your dashboard. Select the job that was created and navigate to the Inputs section under JOB TOPOLOGY, as shown here: Click on +Add stream input and select IoT Hub, as shown in the previous screenshot. Give the name pi3dht11iothub to the input alias, and click on Save. Next, navigate to the Outputs section under JOB TOPOLOGY, as shown in the following screenshot: Click +Add and select Power BI, as shown in the previous screenshot. Fill in the details given in the following table: Field Value Output alias powerbi Group workspace My workspace (after completing the authorization step) Dataset name pi3dht11 Table name dht11 Click the Authorize button to authorize the IoT hub to create the table and datasets, as well as to stream data. The final form before creation should look similar to this: Click on Save. Next, click on Query under JOB TOPOLOGY and update it as depicted in the following screenshot: Now, click on the Save button. Next, head over to the Overview section, click on Start, select Now, and then click on Start: Once the job starts successfully, you should see the Status of Running instead of Starting. Running the device Now that the entire setup is done, we will start pumping data into the Power BI. Head back to the Raspberry Pi 3 that was sending the DHT11 temperature and humidity data, and run our application. We should see the data being published to the IoT hub as the Data Sent log gets printed: Building the visualization Now that the data is being pumped to Power BI via the Azure IoT hub and stream analytics, we will start building the dashboard: Log in to Power BI, navigate to the My Workspace that we selected when we created the Output in the Stream Analytics job, and select Datasets. We should see something similar to the screenshot illustrated here: Using the first icon under the ACTIONS column, for the pi3dht11 dataset, create a new report. When you are in the report page, under VISUALIZATIONS, select line chart, drag EventEnqueuedUtcTime to the Axis field, and set the temp and humd fields to the values as shown in the following screenshot: You can also see the graph data in real time. You can save this report for future reference. This wraps up the section of building a visualization using Azure IoT hub, a stream analytics job, and Power BI. With this, we have seen the basic features and implementation of an end to end IoT application with Azure IoT platform. If you found this post useful, do check out the book, Enterprise Internet of Things Handbook, to build end-to-end IoT solutions using popular IoT platforms. Introduction to IOT Introducing IoT with Particle's Photon and Electron Five developer centric sessions at IoT World 2018
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article-image-build-sensor-application-measure-ambient-light
Gebin George
01 May 2018
16 min read
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How to build a sensor application to measure Ambient Light

Gebin George
01 May 2018
16 min read
In today's tutorial, we will look at how to build a sensor application to measure the ambient light. Preparing our Sensor project We will create a new Universal Windows Platform application project. This time, we call it Sensor. We can use the Raspberry Pi 3, even though we will only use the light sensor and motion detector (PIR sensor) in this project. We will also add the latest version of a new NuGet package, the Waher.Persistence.FilesLW package. This package will help us with data persistence. It takes our objects and stores them in a local object database. We can later load the objects back into the memory and search for them. This is all done by analyzing the metadata available in the class definitions, so there's no need to do any database programming. Go ahead and install the package in your new project. The Waher.Persistence.Files package contains similar functionality, but it performs data encryption and dynamic code compilation of object serializes as well. These features require .NET standard v1.5, which is not compatible with the Universal Windows Platform in its current state. That is why we use the Light Weight version of the same library, which only requires .NET standard 1.3. The Universal Windows Platform supports .NET Standard up to 1.4. For more information, visit https://docs.microsoft.com/en-us/dotnet/articles/standard/library#net-platforms-support. Initializing the inventory library The next step is to initialize the libraries we have just included in the project. The persistence library includes an inventory library (Waher.Runtime.Inventory) that helps with dynamic type-related tasks, as well as keeping track of available types, interfaces and which ones have implemented which interfaces in the runtime environment. This functionality is used by the object database defined in the persistence libraries. The object database figures out how to store, load, search for, and create objects, using only their class definitions appended with a minimum of metadata in the form of attributes. So, one of the first things we need to do during startup is to tell the inventory environment which assemblies it and, by extension, the persistence library can use. We do this as follows: Log.Informational("Starting application."); Types.Initialize( typeof(FilesProvider).GetTypeInfo().Assembly, typeof(App).GetTypeInfo().Assembly); Here, Types is a static class defined in the Waher.Runtime.Inventory namespace. We initialize it by providing an array of assemblies it can use. In our case, we include the assembly of the persistence library, as well as the assembly of our own application. Initializing the persistence library We then go on to initialize our persistence library. It is accessed through the static Database class, defined in the Waher.Persistence namespace. Initialization is performed by registering one object database provider. This database provider will then be used for all object database transactions. In our case, we register our local files object database provider, FilesProvider, defined in the Waher.Persistence.Files namespace: Database.Register(new FilesProvider( Windows.Storage.ApplicationData.Current.LocalFolder.Path + Path.DirectorySeparatorChar + "Data", "Default", 8192, 1000, 8192, Encoding.UTF8, 10000)); The first parameter defines a folder where database files will be stored. In our case, we store database files in the Data subfolder of the application local data folder. Objects are divided into collections. Collections are stored in separate files and indexed differently, for performance reasons. Collections are defined using attributes in the class definition. Classes lacing a collection definition are assigned the default collection, which is specified in the second argument. Objects are then stored in B-tree ordered files. Such files are divided into blocks into which objects are crammed. For performance reasons, the block size, defined in the third argument, should be correlated to the sector size of the underlying storage medium, which is typically a power of two. This minimizes the number of reads and writes necessary. In our example, we've chosen 8,192 bytes as a suitable block size. The fourth argument defines the number of blocks the provider can cache in the memory. Caching improves performance, but requires more internal memory. In our case, we're satisfied with a relatively modest cache of 1,000 blocks (about 8 MB). Binary Large Objects (BLOBs), that is, objects that cannot efficiently be stored in a block, are stored separately in BLOB files. These are binary files consisting of doubly linked blocks. The fifth parameter controls the block size of BLOB files. The sixth parameter controls the character encoding to use when serializing strings. The seventh, and last parameter, is the maximum time the provider will wait, in milliseconds, to get access to the underlying database when an operation is to be performed. Sampling raw sensor data After the database provider has been successfully registered, the persistence layer is ready to be used. We now continue with the first step in acquiring the sensor data: sampling. Sampling is normally done using a short regular time interval. Since we use the Arduino, we get values as they change. While such values can be an excellent source for event-based algorithms, they are difficult to use in certain kinds of statistical calculations and error-correction algorithms. To set up the regular sampling of values, we begin by creating a Timer object from the System.Threading namespace, after the successful initialization of the Arduino: this.sampleTimer = new Timer(this.SampleValues, null, 1000 - DateTime.Now.Millisecond, 1000); This timer will call the SampleValues method every thousand milliseconds, starting the next second. The second parameter allows us to send a state object to the timer callback method. We will not use this, so we let it be null. We then sample the values, as follows: privateasync void SampleValues(object State) { try { ushort A0 = this.arduino.analogRead("A0"); PinState D8= this.arduino.digitalRead(8); ... } catch (Exception ex) { Log.Critical(ex); } } We define the method as asynchronous at this point, even though we still haven't used any asynchronous calls. We will do so, later in this chapter. Since the method does not return a Task object, exceptions are not propagated to the caller. This means that they must be caught inside the method to avoid unhandled exceptions closing the application. Performing basic error correction Values we sample may include different types of errors, some of which we can eliminate in the code to various degrees. There are systematic errors and random errors. Systematic errors are most often caused by the way we've constructed our device, how we sample, how the circuit is designed, how the sensors are situated, how they interact with the physical medium and our underlying mathematical model, or how we convert the sampled value into a physical quantity. Reducing systematic errors requires a deeper analysis that goes beyond the scope of this book. Random errors are errors that are induced stochastically and are often unbiased. They can be induced due to a lack of resolution or precision, by background noise, or through random events in the physical world. While background noise and the lack of resolution or precision in our electronics create a noise in the measured input, random events in the physical world may create spikes. If something briefly flutters past our light sensor, it might register a short downwards spike, even though the ambient light did not change. You'll learn how to correct for both types of random errors. Canceling noise Since the digital PIR sensor already has error correction built into it, we will only focus on how to cancel noise from our analog light sensor. Noise can be canceled electronically, using, for instance, low-pass filters. It can also be cancelled algorithmically, using a simple averaging calculation over a short window of values. The averaging calculation will increase our resolution, at the cost of a small delay in the output. If we perform the average over 10 values, we effectively gain one power of 10, or one decimal, of resolution in our output value. The value will be delayed 10 seconds, however. This algorithm is therefore only suitable for input signals that vary slowly, or where a quick reaction to changes in the input stimuli is not required. Statistically, the expected average value is the same as the expected value, if the input is a steady signal overlaid with random noise. The implementation is simple. We need the following variables to set up our averaging algorithm: privateconstintwindowSize = 10; privateint?[] windowA0 = new int?[windowSize]; privateint nrA0 = 0; privateint sumA0 = 0; We use nullable integers (int?), to be able to remove bad values later. In the beginning, all values are null. After sampling the value, we first shift the window one step, and add our newly sampled value at the end. We also update our counters and sums. This allows us to quickly calculate the average value of the entire window, without having to loop through it each time: if (this.windowA0[0].HasValue) { this.sumA0 -= this.windowA0[0].Value; this.nrA0--; } Array.Copy(this.windowA0, 1, this.windowA0, 0, windowSize - 1); this.windowA0[windowSize - 1] = A0; this.sumA0 += A0; this.nrA0++; double AvgA0 = ((double)this.sumA0) / this.nrA0; int? v; Removing random spikes We now have a value that is 10 times more accurate than the original, in cases where our ambient light is not expected to vary quickly. This is typically the case, if ambient light depends on the sun and weather. Calculating the average over a short window has an added advantage: it allows us to remove bad measurements, or spikes. When a physical quantity changes, it normally changes continuously, slowly, and smoothly. This will have the effect that roughly half of the measurements, even when the input value changes, will be on one side of the average value, and the other half on the other side. A single spike, on the other hand, especially in the middle of the window, if sufficiently large, will stand out alone on one side, while the other values remain on the other. We can use this fact to remove bad measurements from our window. We define our middle position first: private const int spikePos = windowSize / 2; We proceed by calculating the number of values on each side of the average, if our window is sufficiently full: if (this.nrA0 >= windowSize - 2) { int NrLt = 0; int NrGt = 0; foreach (int? Value in this.windowA0) { if (Value.HasValue) { if (Value.Value < AvgA0) NrLt++; else if (Value.Value > AvgA0) NrGt++; } } If we only have one value on one side, and this value happens to be in the middle of the window, we identify it as a spike and remove it from the window. We also make sure to adjust our average value accordingly: if (NrLt == 1 || NrGt == 1) { v = this.windowA0[spikePos]; if (v.HasValue) { if ((NrLt == 1 && v.Value < AvgA0) || (NrGt == 1 && v.Value > AvgA0)) { this.sumA0 -= v.Value; this.nrA0--; this.windowA0[spikePos] = null; AvgA0 = ((double)this.sumA0) / this.nrA0; } } } } Since we remove the spike when it reaches the middle of the window, it might pollute the average of the entire window up to that point. We therefore need to recalculate an average value for the half of the window, where any spikes have been removed. This part of the window is smaller, so the resolution gain is not as big. Instead, the average value will not be polluted by single spikes. But we will still have increased the resolution by a factor of five: int i, n; for (AvgA0 = i = n = 0; i < spikePos; i++) { if ((v = this.windowA0[i]).HasValue) { n++; AvgA0 += v.Value; } } if (n > 0) { AvgA0 /= n; Converting to a physical quantity It is not sufficient for a sensor to have a numerical raw value of the measured quantity. It only tells us something if we know something more about the raw value. We must, therefore, convert it to a known physical unit. We must also provide an estimate of the precision (or error) the value has. A sensor measuring a physical quantity should report a numerical value, its physical unit, and the corresponding precision, or error of the estimate. To avoid creating a complex mathematical model that converts our measured light intensity into a known physical unit, which would go beyond the scope of this book, we convert it to a percentage value. Since we've gained a factor of five of precision using our averaging calculation, we can report two decimals of precision, even though the input value is only 1,024 bits, and only contains one decimal of precision: double Light = (100.0 * AvgA0) / 1024; MainPage.Instance.LightUpdated(Light, 2, "%"); } Illustrating measurement results Following image shows how our measured quantity behaves. The light sensor is placed in broad daylight on a sunny day, so it's saturated. Things move in front of the sensor, creating short dips. The thin blue line is a scaled version of our raw input A0. Since this value is event based, it is being reported more often than once a second. Our red curve is our measured, and corrected, ambient light value, in percent. The dots correspond to our second values. Notice that the first two spikes are removed and don't affect the measurement, which remains close to 100%. Only the larger dips affect the measurement. Also, notice the small delay inherent in our algorithm. It is most noticeable if there are abrupt changes: If we, on the other hand, have a very noisy input, our averaging algorithm helps our measured value to stay more stable. Perhaps the physical quantity goes below some sensor threshold, and input values become uncertain. In the following image, we see how the floating average varies less than the noisy input: Calculating basic statistics A sensor normally reports more than the measured momentary value. It also calculates basic statistics on the measured input, such as peak values. It also makes sure to store measured values regularly, to allow its users to view historical measurements. We begin by defining variables to keep track of our peak values: private int? lastMinute = null; private double? minLight = null; private double? maxLight = null; private DateTime minLightAt = DateTime.MinValue; private DateTime maxLightAt = DateTime.MinValue; We then make sure to update these after having calculated a new measurement: DateTime Timestamp = DateTime.Now; if (!this.minLight.HasValue || Light < this.minLight.Value) { this.minLight = Light; this.minLightAt = Timestamp; } if (!this.maxLight.HasValue || Light > this.maxLight.Value) { this.maxLight = Light; this.maxLightAt = Timestamp; } Defining data persistence The last step in this is to store our values regularly. Later, when we present different communication protocols, we will show how to make these values available to users. Since we will use an object database to store our data, we need to create a class that defines what to store. We start with the class definition: [TypeName(TypeNameSerialization.None)] [CollectionName("MinuteValues")] [Index("Timestamp")] public class LastMinute { [ObjectId] public string ObjectId = null; } The class is decorated with a couple of attributes from the Waher.Persistence.Attributes namespace. The CollectionName attribute defines the collection in which objects of this class will be stored. The TypeName attribute defines if we want the type name to be stored with the data. This is useful, if you mix different types of classes in the same collection. We plan not to, so we choose not to store type names. This saves some space. The Index attribute defines an index. This makes it possible to do quick searches. Later, we will want to search historical records based on their timestamps, so we add an index on the Timestamp field. We also define an Object ID field. This is a special field that is like a primary key in object databases. We need it to be able to delete objects later. You can add any number of indices and any number of fields in each index. Placing a hyphen (-) before the field name makes the engine use descending sort order for that field. Next, we define some member fields. If you want, you can use properties as well, if you provide both getters and setters for the properties you wish to persist. By providing default values, and decorating the fields (or properties) with the corresponding default value, you can optimize storage somewhat. Only members with values different from the declared default values will then be persisted, to save space: [DefaultValueDateTimeMinValue] public DateTime Timestamp = DateTime.MinValue; [DefaultValue(0)] public double Light = 0; [DefaultValue(PinState.LOW)] public PinState Motion= PinState.LOW; [DefaultValueNull] public double? MinLight = null; [DefaultValueDateTimeMinValue] public DateTime MinLightAt = DateTime.MinValue; [DefaultValueNull] public double? MaxLight = null; [DefaultValueDateTimeMinValue] public DateTime MaxLightAt = DateTime.MinValue; Storing measured data We are now ready to store our measured data. We use the lastMinute field defined earlier to know when we pass into a new minute. We use that opportunity to store the most recent value, together with the basic statistics we've calculated: if (!this.lastMinute.HasValue) this.lastMinute = Timestamp.Minute; else if (this.lastMinute.Value != Timestamp.Minute) { this.lastMinute = Timestamp.Minute; We begin by creating an instance of the LastMinute class defined earlier: LastMinute Rec = new LastMinute() { Timestamp = Timestamp, Light = Light, Motion= D8, MinLight = this.minLight, MinLightAt = this.minLightAt, MaxLight = this.maxLight, MaxLightAt = this.maxLightAt }; Storing this object is very easy. The call is asynchronous and can be executed in parallel, if desired. We choose to wait for it to complete, since we will be making database requests after the operation has completed: await Database.Insert(Rec); We then clear our variables used for calculating peak values, to make sure peak values are calculated within the next period: this.minLight = null; this.minLightAt = DateTime.MinValue; this.maxLight = null; this.maxLightAt = DateTime.MinValue; } Removing old data We cannot continue storing new values without also having a plan for removing old ones. Doing so is easy. We choose to delete all records older than 100 minutes. This is done by first performing a search, and then deleting objects that are found in this search. The search is defined by using filters from the Waher.Persistence.Filters namespace: foreach (LastMinute Rec2 in await Database.Find<LastMinute>( new FilterFieldLesserThan("Timestamp", Timestamp.AddMinutes(-100)))) { await Database.Delete(Rec2); } You can now execute the application, and monitor how the MinuteValues collection is being filled. We created a simple sensor app for the Raspberry Pi using C#. You read an excerpt from the book, Mastering Internet of Things, written by Peter Waher. This book will help you augment your IoT skills with the help of engaging and enlightening tutorials designed for Raspberry Pi 3. 25 Datasets for Deep Learning in IoT How IoT is going to change tech teams How to run and configure an IoT Gateway
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article-image-run-and-configure-iot-gateway
Gebin George
26 Apr 2018
9 min read
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How to run and configure an IoT Gateway

Gebin George
26 Apr 2018
9 min read
What is an IoT gateway? An IoT gateway is the protocol or software that's used to connect Internet of Things servers to the cloud. The IoT Gateway can be run as a standalone application, without any modification. There are different encapsulations of the IoT Gateway already prepared. They are built using the same code, but have different properties and are aimed at different operating systems. In today's tutorial, we will explore how to run and configure the IoT gateway. Since all libraries used are based on .NET Standard, they are portable across platforms and operating systems. The encapsulations are then compiled into .NET Core 2 applications. These are the ones being executed. Since both .NET Standard and .NET Core 2 are portable, the gateway can, therefore, be encapsulated for more operating systems than currently supported. Check out this link for a list of operating systems supported by .NET Core 2. Available encapsulations such as installers or app package bundles are listed in the following table. For each one is listed the start project that can be used if you build the project and want to start or debug the application from the development environment: Platform Executable project Windows console Waher.IoTGateway.Console Windows service Waher.IoTGateway.Svc Universal Windows Platform app Waher.IoTGateway.App The IoT Gateway encapsulations can be downloaded from the GitHub project page: All gateways use the library Waher.IoTGateway, which defines the executing environment of the gateway and interacts with all pluggable modules and services. They also use the Waher.IoTGateway.Resources library, which contains resource files common among all encapsulations. The Waher.IoTGateway library is also available as a NuGet: Running the console version The console version of the IoT Gateway (Waher.IoTGateway.Console) is the simplest encapsulation. It can be run from the command line. It requires some basic configuration to run properly. This configuration can be provided manually (see following sections), or by using the installer. The installer asks the user for some basic information and generates the configuration files necessary to execute the application. The console version is the simplest encapsulation, with a minimum of operating system dependencies. It's the easiest to port to other environments. It's also simple to run from the development environment. When run, it outputs any events directly to the terminal window. If sniffers are enabled, the corresponding communication is also output to the terminal window. This provides a simple means to test and debug encrypted communication: Running the gateway as a Windows service The IoT Gateway can also be run as a Windows service (Waher.IoTGateway.Svc). This requires the application be executed on a Windows operating system. The application is a .NET Core 2 console application that has command-line switches allowing it to be registered and executed in the background as a Windows service. Since it supports a command-line interface, it can be used to run the gateway from the console as well. The following table lists recognized command-line switches: Switch Description -? Shows help information. -console Runs the service as a console application. -install Installs the application as a Window Service in the underlying operating system. -displayname Name Sets a custom display name for the Windows service. The default name if omitted is IoT Gateway Service. -description Desc Sets a custom textual description for the Windows service. The default description if omitted is Windows Service hosting the Waher IoT Gateway. -immediate If the service should be started immediately. -localsystem Installed service will run using the Local System account. -localservice Installed service will run using the Local Service account (default). -networkservice Installed service will run using the Network Service account. -start Mode Sets the default starting mode of the Windows service. The default is Disabled. Available options are StartOnBoot, StartOnSystemStart, AutoStart, StartOnDemand and Disabled -uninstall Uninstalls the application as a Windows service from the operating system.   Running the gateway as an app It is possible to run the IoT Gateway as a Universal Windows Platform (UWP) app (Waher.IoTGateway.App). This allows it to be run on Windows phones or embedded devices such as the Raspberry Pi running Windows 10 IoT Core (16299 and later). It can also be used as a template for creating custom apps based on the IoT Gateway: Configuring the IoT Gateway All application data files are separated from the executable files. Application data files are files that can be potentially changed by the user. Executable files are files potentially changed by installers. For the Console and Service applications, application data files are stored in the IoT Gateway subfolder to the operating system's Program Data folder. Example: C:ProgramDataIoT Gateway. For the UWP app, a link to the program data folder is provided at the top of the window. The application data folder contains files you might have to configure to get it to work as you want. Configuring the XMPP interface All IoT Gateways connect to the XMPP network. This connection is used to provide a secure and interoperable interface to your gateway and its underlying devices. You can also administer the gateway through this XMPP connection. The XMPP connection is defined in different manners, depending on the encapsulation. The app lets the user configure the connection via a dialog window. The credentials are then persisted in the object database. The Console and Service versions of the IoT Gateway let the user define the connection using an xmpp.config file in the application data folder. The following is an example configuration file: <?xml version='1.0' encoding='utf-8'?> <SimpleXmppConfiguration xmlns='http://waher.se/Schema/SimpleXmppConfiguration.xsd'> <Host>waher.se</Host> <Port>5222</Port> <Account>USERNAME</Account> <Password>PASSWORD</Password> <ThingRegistry>waher.se</ThingRegistry> <Provisioning>waher.se</Provisioning> <Events></Events> <Sniffer>true</Sniffer> <TrustServer>false</TrustServer> <AllowCramMD5>true</AllowCramMD5> <AllowDigestMD5>true</AllowDigestMD5> <AllowPlain>false</AllowPlain> <AllowScramSHA1>true</AllowScramSHA1> <AllowEncryption>true</AllowEncryption> <RequestRosterOnStartup>true</RequestRosterOnStartup> </SimpleXmppConfiguration> The following is a short recapture: Element Type Description Host String Host name of the XMPP broker to use. Port 1-65535 Port number to connect to. Account String Name of XMPP account. Password String Password to use (or password hash). ThingRegistry String Thing registry to use, or empty if not. Provisioning String Provisioning server to use, or empty if not. Events String Event long to use, or empty if not. Sniffer Boolean If network communication is to be sniffed or not. TrustServer Boolean If the XMPP broker is to be trusted. AllowCramMD5 Boolean If the CRAM-MD5 authentication mechanism is allowed. AllowDigestMD5 Boolean If the DIGEST-MD5 authentication mechanism is allowed. AllowPlain Boolean If the PLAIN authentication mechanism is allowed. AllowScramSHA1 Boolean If the SCRAM-SHA-1 authentication mechanism is allowed. AllowEncryption Boolean If encryption is allowed. RequestRosterOnStartup Boolean If the roster is required, it should be requested on start up. Securing the password Instead of writing the password in clear text in the configuration file, it is recommended that the password hash is used instead of the authentication mechanism supports hashes. When the installer sets up the gateway, it authenticates the credentials during startup and writes the hash value in the file instead. When the hash value is used, the mechanism used to create the hash must be written as well. In the following example, new-line characters are added for readability: <Password type="SCRAM-SHA-1"> rAeAYLvAa6QoP8QWyTGRLgKO/J4= </Password> Setting basic properties of the gateway The basic properties of the IoT Gateway are defined in the Gateway.config file in the program data folder. For example: <?xml version="1.0" encoding="utf-8" ?> <GatewayConfiguration xmlns="http://waher.se/Schema/GatewayConfiguration.xsd"> <Domain>example.com</Domain> <Certificate configFileName="Certificate.config"/> <XmppClient configFileName="xmpp.config"/> <DefaultPage>/Index.md</DefaultPage> <Database folder="Data" defaultCollectionName="Default" blockSize="8192" blocksInCache="10000" blobBlockSize="8192" timeoutMs="10000" encrypted="true"/> <Ports> <Port protocol="HTTP">80</Port> <Port protocol="HTTP">8080</Port> <Port protocol="HTTP">8081</Port> <Port protocol="HTTP">8082</Port> <Port protocol="HTTPS">443</Port> <Port protocol="HTTPS">8088</Port> <Port protocol="XMPP.C2S">5222</Port> <Port protocol="XMPP.S2S">5269</Port> <Port protocol="SOCKS5">1080</Port> </Ports> <FileFolders> <FileFolder webFolder="/Folder1" folderPath="ServerPath1"/> <FileFolder webFolder="/Folder2" folderPath="ServerPath2"/> <FileFolder webFolder="/Folder3" folderPath="ServerPath3"/> </FileFolders> </GatewayConfiguration> Element Type Description Domain String The name of the domain, if any, pointing to the machine running the IoT Gateway. Certificate String The configuration file name specifying details about the certificate to use. XmppClient String The configuration file name specifying details about the XMPP connection. DefaultPage String Relative URL to the page shown if no web page is specified when browsing the IoT Gateway. Database String How the local object database is configured. Typically, these settings do not need to be changed. All you need to know is that you can persist and search for your objects using the static Database defined in Waher.Persistence. Ports Port Which port numbers to use for different protocols supported by the IoT Gateway. FileFolders FileFolder Contains definitions of virtual web folders. Providing a certificate Different protocols (such as HTTPS) require a certificate to allow callers to validate the domain name claim. Such a certificate can be defined by providing a Certificate.config file in the application data folder and then restarting the gateway. If providing such a file, different from the default file, it will be loaded and processed, and then deleted. The information, together with the certificate, will be moved to the relative safety of the object database. For example: <?xml version="1.0" encoding="utf-8" ?> <CertificateConfiguration xmlns="http://waher.se/Schema/CertificateConfiguration.xsd"> <FileName>certificate.pfx</FileName> <Password>testexamplecom</Password> </CertificateConfiguration> Element Type Description FileName String Name of certificate file to import. Password String Password needed to access private part of certificate.   This tutorial was taken from Mastering Internet of Things. Read More IoT Forensics: Security in an always connected world where things talk How IoT is going to change tech teams 5 reasons to choose AWS IoT Core for your next IoT project  
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Gebin George
20 Apr 2018
7 min read
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Build your first Raspberry Pi project

Gebin George
20 Apr 2018
7 min read
In today's tutorial, we will build a simple Raspberry Pi 3 project. Since our Raspberry Pi now runs Windows 10 IoT Core, .NET Core applications will run on it, including Universal Windows Platform (UWP) applications. From a blank solution, let's create our first Raspberry Pi application. Choose Add and New Project. In the Visual C# category, select Blank App (Universal Windows). Let's call our project FirstApp. Visual Studio will ask us for target and minimum platform versions. Check the screenshot and make sure the version you select is lower than the version installed on your Raspberry Pi. In our case, the Raspberry Pi runs Build 15063. This is the March 2017 release. So, we accept Build 14393 (July 2016) as the target version and Build 10586 (November 2015) as the minimum version. If you want to target the Windows 10 Fall Creators Update, which supports .NET Core 2, you should select Build 16299 for both. In the Solution Explorer, we should now see the files of our new UWP project: New project Adding NuGet packages We proceed by adding functionality to our app from downloadable packages, or NuGets. From the References node, right-click and select Manage NuGet Packages. First, go to the Updates tab and make sure the packages that you already have are updated. Next, go to the Browse tab, type Firmata in the search box, and press Enter. You should see the Windows-Remote-Arduino package. Make sure to install it in your project. In the same way, search for the Waher.Events package and install it. Aggregating capabilities Since we're going to communicate with our Arduino using a USB serial port, we must make a declaration in the Package.appxmanifest file stating this. If we don't do this, the runtime environment will not allow the app to do it. Since this option is not available in the GUI by default, you need to edit the file using the XML editor. Make sure the serialCommunication device capability is added, as follows: <Capabilities> <Capability Name="internetClient" /> <DeviceCapability Name="serialcommunication"> <Device Id="any"> <Function Type="name:serialPort" /> </Device> </DeviceCapability> </Capabilities> Initializing the application Before we do any communication with the Arduino, we need to initialize the application. We do this by finding the OnLaunched method in the App.xml.cs file. After the Window.Current.Activate() call, we make a call to our Init() method where we set up the application. Window.Current.Activate(); Task.Run((Action)this.Init); We execute our initialization method from the thread pool, instead of the standard thread. This is done by calling Task.Run(), defined in the System.Threading.Tasks namespace. The reason for this is that we want to avoid locking the standard thread. Later, there will be a lot of asynchronous calls made during initialization. To avoid problems, we should execute all these from the thread pool, instead of from the standard thread. We'll make the method asynchronous: private async void Init() { try { Log.Informational("Starting application."); ... } catch (Exception ex) { Log.Emergency(ex); MessageDialog Dialog = new MessageDialog(ex.Message, "Error"); await Dialog.ShowAsync(); } IoT Desktop } The static Log class is available in the Waher.Events namespace, belonging to the NuGet we included earlier. (MessageDialog is available in Windows.UI.Popups, which might be a new namespace if you're not familiar with UWP.) Communicating with the Arduino The Arduino is accessed using Firmata. To do that, we use the Windows.Devices.Enumeration, Microsoft.Maker.RemoteWiring, and Microsoft.Maker.Serial namespaces, available in the Windows-Remote-Arduino NuGet. We begin by enumerating all the devices it finds: DeviceInformationCollection Devices = await UsbSerial.listAvailableDevicesAsync(); foreach (DeviceInformationDeviceInfo in Devices) { If our Arduino device is found, we will have to connect to it using USB: if (DeviceInfo.IsEnabled&&DeviceInfo.Name.StartsWith("Arduino")) { Log.Informational("Connecting to " + DeviceInfo.Name); this.arduinoUsb = new UsbSerial(DeviceInfo); this.arduinoUsb.ConnectionEstablished += () => Log.Informational("USB connection established."); Attach a remote device to the USB port class: this.arduino = new RemoteDevice(this.arduinoUsb); We need to initialize our hardware, when the remote device is ready: this.arduino.DeviceReady += () => { Log.Informational("Device ready."); this.arduino.pinMode(13, PinMode.OUTPUT); // Onboard LED. this.arduino.digitalWrite(13, PinState.HIGH); this.arduino.pinMode(8, PinMode.INPUT); // PIR sensor. MainPage.Instance.DigitalPinUpdated(8, this.arduino.digitalRead(8)); this.arduino.pinMode(9, PinMode.OUTPUT); // Relay. this.arduino.digitalWrite(9, 0); // Relay set to 0 this.arduino.pinMode("A0", PinMode.ANALOG); // Light sensor. MainPage.Instance.AnalogPinUpdated("A0", this.arduino.analogRead("A0")); }; Important: the analog input must be set to PinMode.ANALOG, not PinMode.INPUT. The latter is for digital pins. If used for analog pins, the Arduino board and Firmata firmware may become unpredictable. Our inputs are then reported automatically by the Firmata firmware. All we need to do to read the corresponding values is to assign the appropriate event handlers. In our case, we forward the values to our main page, for display: this.arduino.AnalogPinUpdated += (pin, value) => { MainPage.Instance.AnalogPinUpdated(pin, value); }; this.arduino.DigitalPinUpdated += (pin, value) => { MainPage.Instance.DigitalPinUpdated(pin, value); }; Communication is now set up. If you want, you can trap communication errors, by providing event handlers for the ConnectionFailed and ConnectionLost events. All we need to do now is to initiate communication. We do this with a simple call: this.arduinoUsb.begin(57600, SerialConfig.SERIAL_8N1); Testing the app Make sure the Arduino is still connected to your PC via USB. If you run the application now (by pressing F5), it will communicate with the Arduino, and display any values read to the event log. In the GitHub project, I've added a couple of GUI components to our main window, that display the most recently read pin values on it. It also displays any event messages logged. We leave the relay for later chapters. For a more generic example, see the Waher.Service.GPIO project at https://github.com/PeterWaher/IoTGateway/tree/master/Services/Waher.Service.GPIO. This project allows the user to read and control all pins on the Arduino, as well as the GPIO pins available on the Raspberry Pi directly. Deploying the app You are now ready to test the app on the Raspberry Pi. You now need to disconnect the Arduino board from your PC and install it on top of the Raspberry Pi. The power of the Raspberry Pi should be turned off when doing this. Also, make sure the serial cable is connected to one of the USB ports of the Raspberry Pi. Begin by switching the target platform, from Local Machine to Remote Machine, and from x86 to ARM: Run on a remote machine with an ARM processor Your Raspberry Pi should appear automatically in the following dialog. You should check the address with the IoT Dashboard used earlier, to make sure you're selecting the correct machine: Select your Raspberry Pi You can now run or debug your app directly on the Raspberry Pi, using your local PC. The first deployment might take a while since the target system needs to be properly prepared. Subsequent deployments will be much faster. Open the Device Portal from the IoT Dashboard, and take a Screenshot, to see the results. You can also go to the Apps Manager in the Device Portal, and configure the app to be started automatically at startup: App running on the Raspberry Pi To summarize, we saw how to practically build a simple application using Raspberry Pi 3 and C#. You read an excerpt from the book, Mastering Internet of Things, written by Peter Waher. This book will help you design and implement scalable IoT solutions with ease. Meet the Coolest Raspberry Pi Family Member: Raspberry Pi Zero W Wireless AI and the Raspberry Pi: Machine Learning and IoT, What’s the Impact?    
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Packt Editorial Staff
16 Apr 2018
12 min read
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Meet the Coolest Raspberry Pi Family Member: Raspberry Pi Zero W Wireless

Packt Editorial Staff
16 Apr 2018
12 min read
In early 2017, Raspberry Pi community announced a new board with wireless extension. It is a highly promising board allowing everyone to connect their devices to the Internet. Offering a wireless functionality where everyone can develop their own projects without cables and components. It uses their skills to develop projects including software and hardware. This board is the new toy of any engineer interested in Internet of Things, security, automation and more! Comparing the new board with Raspberry Pi 3 Model B we can easily figure that it is quite small with many possibilities over the Internet of Things. But what is a Raspberry Pi Zero W and why do you need it? In today’s post, we will cover the following topics: Overview of the Raspberry Pi family Introduction to the new Raspberry Pi Zero W Distributions Common issues Raspberry Pi family As said earlier Raspberry Pi Zero W is the new member of Raspberry Pi family boards. All these years Raspberry Pi evolved and became more user friendly with endless possibilities. Let's have a short look at the rest of the family so we can understand the difference of the Pi Zero board. Right now, the heavy board is named Raspberry Pi 3 Model B. It is the best solution for projects such as face recognition, video tracking, gaming or anything else that is in demand: It is the 3rd generation of Raspberry Pi boards after Raspberry Pi 2 and has the following specs: A 1.2GHz 64-bit quad-core ARMv8 CPU 11n Wireless LAN Bluetooth 4.1 Bluetooth Low Energy (BLE) Like the Pi 2, it also has 1GB RAM 4 USB ports 40 GPIO pins Full HDMI port Ethernet port Combined 3.5mm audio jack and composite video Camera interface (CSI) Display interface (DSI) Micro SD card slot (now push-pull rather than push-push) VideoCore IV 3D graphics core The next board is Raspberry Pi Zero, in which the Zero W was based. A small low cost and power board able to do many things: The specs of this board can be found as follows: 1GHz, Single-core CPU 512MB RAM Mini-HDMI port Micro-USB OTG port Micro-USB power HAT-compatible 40-pin header Composite video and reset headers CSI camera connector (v1.3 only) At this point we should not forget to mention that apart from the boards mentioned earlier there are several other modules and components such as the Sense Hat or Raspberry Pi Touch Display available which will work great for advance projects. The 7″ Touchscreen Monitor for Raspberry Pi gives users the ability to create all-in-one, integrated projects such as tablets, infotainment systems and embedded projects: Where Sense HAT is an add-on board for Raspberry Pi, made especially for the Astro Pi mission. The Sense HAT has an 8×8 RGB LED matrix, a five-button joystick and includes the following sensors: Gyroscope Accelerometer Magnetometer Temperature Barometric pressure Humidity Stay tuned with more new boards and modules at the official website: https://www.raspberrypi.org/ Raspberry Pi Zero W Raspberry Pi Zero W is a small device that has the possibilities to be connected either on an external monitor or TV and of course it is connected to the internet. The operating system varies as there are many distros in the official page and almost everyone is baled on Linux systems. With Raspberry Pi Zero W you have the ability to do almost everything, from automation to gaming! It is a small computer that allows you easily program with the help of the GPIO pins and some other components such as a camera. Its possibilities are endless! Specifications If you have bought Raspberry PI 3 Model B you would be familiar with Cypress CYW43438 wireless chip. It provides 802.11n wireless LAN and Bluetooth 4.0 connectivity. The new Raspberry Pi Zero W is equipped with that wireless chip as well. Following you can find the specifications of the new board: Dimensions: 65mm × 30mm × 5mm SoC:Broadcom BCM 2835 chip ARM11 at 1GHz, single core CPU 512ΜΒ RAM Storage: MicroSD card Video and Audio:1080P HD video and stereo audio via mini-HDMI connector Power:5V, supplied via micro USB connector Wireless:2.4GHz 802.11 n wireless LAN Bluetooth: Bluetooth classic 4.1 and Bluetooth Low Energy (BLE) Output: Micro USB GPIO: 40-pin GPIO, unpopulated Notice that all the components are on the top side of the board so you can easily choose your case without any problems and keep it safe. As far as the antenna concern, it is formed by etching away copper on each layer of the PCB. It may not be visible as it is in other similar boards but it is working great and offers quite a lot functionalities: Also, the product is limited to only one piece per buyer and costs 10$. You can buy a full kit with microsd card, a case and some more extra components for about 45$ or choose the camera full kit which contains a small camera component for 55$. Camera support Image processing projects such as video tracking or face recognition require a camera. Following you can see the official camera support of Raspberry Pi Zero W. The camera can easily be mounted at the side of the board using a cable like the Raspberry Pi 3 Model B board: Depending on your distribution you many need to enable the camera though command line. More information about the usage of this module will be mentioned at the project. Accessories Well building projects with the new board there are some other gadgets that you might find useful working with. Following there is list of some crucial components. Notice that if you buy Raspberry Pi Zero W kit, it includes some of them. So, be careful and don't double buy them: OTG cable powerHUB GPIO header microSD card and card adapter HDMI to miniHDMI cable HDMI to VGA cable Distributions The official site https://www.raspberrypi.org/downloads/ contains several distributions for downloading. The two basic operating systems that we will analyze after are RASPBIAN and NOOBS. Following you can see how the desktop environment looks like. Both RASPBIAN and NOOBS allows you to choose from two versions. There is the full version of the operating system and the lite one. Obviously the lite version does not contain everything that you might use so if you tend to use your Raspberry with a desktop environment choose and download the full version. On the other side if you tend to just ssh and do some basic stuff pick the lite one. It' s really up to you and of course you can easily download again anything you like and re-write your microSD card: NOOBS distribution Download NOOBS: https://www.raspberrypi.org/downloads/noobs/. NOOBS distribution is for the new users with not so much knowledge in linux systems and Raspberry PI boards. As the official page says it is really "New Out Of the Box Software". There is also pre-installed NOOBS SD cards that you can purchase from many retailers, such as Pimoroni, Adafruit, and The Pi Hut, and of course you can download NOOBS and write your own microSD card. If you are having trouble with the specific distribution take a look at the following links: Full guide at https://www.raspberrypi.org/learning/software-guide/. View the video at https://www.raspberrypi.org/help/videos/#noobs-setup. NOOBS operating system contains Raspbian and it provides various of other operating systems available to download. RASPBIAN distribution Download RASPBIAN: https://www.raspberrypi.org/downloads/raspbian/. Raspbian is the official supported operating system. It can be installed though NOOBS or be downloading the image file at the following link and going through the guide of the official website. Image file: https://www.raspberrypi.org/documentation/installation/installing-images/README.md. It has pre-installed plenty of software such as Python, Scratch, Sonic Pi, Java, Mathematica, and more! Furthermore, more distributions like Ubuntu MATE, Windows 10 IOT Core or Weather Station are meant to be installed for more specific projects like Internet of Things (IoT) or weather stations. To conclude with, the right distribution to install actually depends on your project and your expertise in Linux systems administration. Raspberry Pi Zero W needs an microSD card for hosting any operating system. You are able to write Raspbian, Noobs, Ubuntu MATE, or any other operating system you like. So, all that you need to do is simple write your operating system to that microSD card. First of all you have to download the image file from https://www.raspberrypi.org/downloads/ which, usually comes as a .zip file. Once downloaded, unzip the zip file, the full image is about 4.5 Gigabytes. Depending on your operating system you have to use different programs: 7-Zip for Windows The Unarchiver for Mac Unzip for Linux Now we are ready to write the image in the MicroSD card. You can easily write the .img file in the microSD card by following one of the next guides according to your system. For Linux users dd tool is recommended. Before connecting your microSD card with your adaptor in your computer run the following command: df -h Now connect your card and run the same command again. You must see some new records. For example if the new device is called /dev/sdd1 keep in your mind that the card is at /dev/sdd (without the 1). The next step is to use the dd command and copy the image to the microSD card. We can do this by the following command: dd if=<path to your image> of=</dev/***> Where if is the input file (image file or the distribution) and of is the output file (microSD card). Again be careful here and use only /dev/sdd or whatever is yours without any numbers. If you are having trouble with that please use the full manual at the following link https://www.raspberrypi.org/documentation/installation/installing-images/linux.md. A good tool that could help you out for that job is GParted. If it is not installed on your system you can easily install it with the following command: sudo apt-get install gparted Then run sudogparted to start the tool. Its handles partitions very easily and you can format, delete or find information about all your mounted partitions. More information about ddcan be found here: https://www.raspberrypi.org/documentation/installation/installing-images/linux.md For Mac OS users dd tool is always recommended: https://www.raspberrypi.org/documentation/installation/installing-images/mac.md For Windows users Win32DiskImager utility is recommended: https://www.raspberrypi.org/documentation/installation/installing-images/windows.md There are several other ways to write an image file in a microSD card. So, if you are against any kind of problems when following the guides above feel free to use any other guide available on the Internet. Now, assuming that everything is ok and the image is ready. You can now gently plugin the microcard to your Raspberry PI Zero W board. Remember that you can always confirm that your download was successful with the sha1 code. In Linux systems you can use sha1sum followed by the file name (the image) and print the sha1 code that should and must be the same as it is at the end of the official page where you downloaded the image. Common issues Sometimes, working with Raspberry Pi boards can lead to issues. We all have faced some of them and hope to never face them again. The Pi Zero is so minimal and it can be tough to tell if it is working or not. Since, there is no LED on the board, sometimes a quick check if it is working properly or something went wrong is handy. Debugging steps With the following steps you will probably find its status: Take your board, with nothing in any slot or socket. Remove even the microSD card! Take a normal micro-USB to USB-ADATA SYNC cable and connect the one side to your computer and the other side to the Pi's USB, (not the PWR_IN). If the Zero is alive: On Windows the PC will go ding for the presence of new hardware and you should see BCM2708 Boot in Device Manager. On Linux, with a ID 0a5c:2763 Broadcom Corp message from dmesg. Try to run dmesg in a Terminal before your plugin the USB and after that. You will find a new record there. Output example: [226314.048026] usb 4-2: new full-speed USB device number 82 using uhci_hcd [226314.213273] usb 4-2: New USB device found, idVendor=0a5c, idProduct=2763 [226314.213280] usb 4-2: New USB device strings: Mfr=1, Product=2, SerialNumber=0 [226314.213284] usb 4-2: Product: BCM2708 Boot [226314.213] usb 4-2: Manufacturer: Broadcom If you see any of the preceding, so far so good, you know the Zero's not dead. microSD card issue Remember that if you boot your Raspberry and there is nothing working, you may have burned your microSD card wrong. This means that your card many not contain any boot partition as it should and it is not able to boot the first files. That problem occurs when the distribution is burned to /dev/sdd1 and not to /dev/sdd as we should. This is a quite common mistake and there will be no errors in your monitor. It will just not work! Case protection Raspberry Pi boards are electronics and we never place electronics in metallic surfaces or near magnetic objects. It will affect the booting operation of the Raspberry and it will probably not work. So a tip of advice, spend some extra money for the Raspberry PI Case and protect your board from anything like that. There are many problems and issues when hanging your raspberry pi using tacks. To summarize, we introduced the new Raspberry Pi Zero board with the rest of its family and a brief analysis on some extra components that are must buy as well. [box type="shadow" align="aligncenter" class="" width=""]This article is an excerpt from the book Raspberry Pi Zero W Wireless Projects written by Vasilis Tzivaras. The Raspberry Pi has always been the go–to, lightweight ARM-based computer. This book will help you design and build interesting DIY projects using the Raspberry Pi Zero W board.[/box] Introduction to Raspberry Pi Zero W Wireless Build your first Raspberry Pi project
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Aarthi Kumaraswamy
11 Apr 2018
10 min read
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Drones: Everything you ever wanted to know!

Aarthi Kumaraswamy
11 Apr 2018
10 min read
When you were a kid, did you have fun with paper planes? They were so much fun. So, what is a gliding drone? Well, before answering this, let me be clear that there are other types of drones, too. We will know all common types of drones soon, but before doing that, let's find out what a drone first. Drones are commonly known as Unmanned Aerial Vehicles (UAV). A UAV is a flying thing without a human pilot on it. Here, by thing we mean the aircraft. For drones, there is the Unmanned Aircraft System (UAS), which allows you to communicate with the physical drone and the controller on the ground. Drones are usually controlled by a human pilot, but they can also be autonomously controlled by the system integrated on the drone itself. So what the UAS does, is it communicates between the UAS and UAV. Simply, the system that communicates between the drone and the controller, which is done by the commands of a person from the ground control station, is known as the UAS. Drones are basically used for doing something where humans cannot go or carrying out a mission that is impossible for humans. Drones have applications across a wide spectrum of industries from military, scientific research, agriculture, surveillance, product delivery, aerial photography, recreations, to traffic control. And of course, like any technology or tool it can do great harm when used for malicious purposes like for terrorist attacks and smuggling drugs. Types of drones Classifying drones based on their application Drones can be categorized into the following six types based on their mission: Combat: Combat drones are used for attacking in the high-risk missions. They are also known as Unmanned Combat Aerial Vehicles (UCAV). They carry missiles for the missions. Combat drones are much like planes. The following is a picture of a combat drone: Logistics: Logistics drones are used for delivering goods or cargo. There are a number of famous companies, such as Amazon and Domino's, which deliver goods and pizzas via drones. It is easier to ship cargo with drones when there is a lot of traffic on the streets, or the route is not easy to drive. The following diagram shows a logistic drone: Civil: Civil drones are for general usage, such as monitoring the agriculture fields, data collection, and aerial photography. The following picture is of an aerial photography drone: Reconnaissance: These kinds of drones are also known as mission-control drones. A drone is assigned to do a task and it does it automatically, and usually returns to the base by itself, so they are used to get information from the enemy on the battlefield. These kinds of drones are supposed to be small and easy to hide. The following diagram is a reconnaissance drone for your reference, they may vary depending on the usage: Target and decoy: These kinds of drones are like combat drones, but the difference is, the combat drone provides the attack capabilities for the high-risk mission and the target and decoy drones provide the ground and aerial gunnery with a target that simulates the missile or enemy aircrafts. You can look at the following figure to get an idea what a target and decoy drone looks like: Research and development: These types of drones are used for collecting data from the air. For example, some drones are used for collecting weather data or for providing internet. [box type="note" align="" class="" width=""]Also read this interesting news piece on Microsoft committing $5 billion to IoT projects.[/box] Classifying drones based on wing types We can also classify drones by their wing types. There are three types of drones depending on their wings or flying mechanism: Fixed wing: A fixed wing drone has a rigid wing. They look like airplanes. These types of drones have a very good battery life, as they use only one motor (or less than the multiwing). They can fly at a high altitude. They can carry more weight because they can float on air for the wings. There are also some disadvantages of fixed wing drones. They are expensive and require a good knowledge of aerodynamics. They break a lot and training is required to fly them. The launching of the drone is hard and the landing of these types of drones is difficult. The most important thing you should know about the fixed wing drones is they can only move forward. To change the directions to left or right, we need to create air pressure from the wing. We will build one fixed wing drone in this book. I hope you would like to fly one. Single rotor: Single rotor drones are simply like helicopter. They are strong and the propeller is designed in a way that it helps to both hover and change directions. Remember, the single rotor drones can only hover vertically in the air. They are good with battery power as they consume less power than a multirotor. The payload capacity of a single rotor is good. However, they are difficult to fly. Their wing or the propeller can be dangerous if it loosens. Multirotor: Multirotor drones are the most common among the drones. They are classified depending on the number of wings they have, such as tricopter (three propellers or rotors), quadcopter (four rotors), hexacopter (six rotors), and octocopter (eight rotors). The most common multirotor is the quadcopter. The multirotors are easy to control. They are good with payload delivery. They can take off and land vertically, almost anywhere. The flight is more stable than the single rotor and the fixed wing. One of the disadvantages of the multirotor is power consumption. As they have a number of motors, they consume a lot of power. Classifying drones based on body structure We can also classify multirotor drones by their body structure. They can be known by the number of propellers used on them. Some drones have three propellers. They are called tricopters. If there are four propellers or rotors, they are called quadcopters. There are hexacopters and octacopters with six and eight propellers, respectively. The gliding drones or fixed wings do not have a structure like copters. They look like the airplane. The shapes and sizes of the drones vary from purpose to purpose. If you need a spy drone, you will not make a big octacopter right? If you need to deliver a cargo to your friend's house, you can use a multirotor or a single rotor: The Ready to Fly (RTF) drones do not require any assembly of the parts after buying. You can fly them just after buying them. RTF drones are great for the beginners. They require no complex setup or programming knowledge. The Bind N Fly (BNF) drones do not come with a transmitter. This means, if you have bought a transmitter for yourother drone, you can bind it with this type of drone and fly. The problem is that an old model of transmitter might not work with them and the BNF drones are for experienced flyers who have already flown drones with safety, and had the transmitter to test with other drones. The Almost Ready to Fly (ARF) drones come with everything needed to fly, but a few parts might be missing that might keep it from flying properly. Just kidding! They come with all the parts, but you have to assemble them together before flying. You might lose one or two things while assembling. So be careful if you buy ARF drones. I always lose screws or spare small parts of the drones while I assemble. From the name of these types of drones, you can imagine why they are called by this name. The ARF drones require a lot of patience to assemble and bind to fly. Just be calm while assembling. Don't throw away the user manuals like me. You might end up with either pocket screws or lack of screws or parts. Key components for building a drone To build a drone, you will need a drone frame, motors, radio transmitter and reciever, battery, battery adapters/chargers, connectors and modules to make the drone smarter. Drone frames Basically, the drone frame is the most important component to build a drone. It helps to mount the motors, battery, and other parts on it. If you want to build a copter or a glide, you first need to decide what frame you will buy or build. For example, if you choose a tricopter, your drone will be smaller, the number of motors will be three, the number of propellers will be three, the number of ESC will be three, and so on. If you choose a quadcopter it will require four of each of the earlier specifications. For the gliding drone, the number of parts will vary. So, choosing a frame is important as the target of making the drone depends on the body of the drone. And a drone's body skeleton is the frame. In this book, we will build a quadcopter, as it is a medium size drone and we can implement all the things we want on it. If you want to buy the drone frame, there are lots of online shops who sell ready-made drone frames. Make sure you read the specification before buying the frames. While buying frames, always double check the motor mount and the other screw mountings. If you cannot mount your motors firmly, you will lose the stability of the drone in the air. About the aerodynamics of the drone flying, we will discuss them soon. The following figure shows a number of drone frames. All of them are pre-made and do not need any calculation to assemble. You will be given a manual which is really easy to follow: You should also choose a material which light but strong. My personal choice is carbon fiber. But if you want to save some money, you can buy strong plastic frames. You can also buy acrylic frames. When you buy the frame, you will get all the parts of the frame unassembled, as mentioned earlier. The following picture shows how the frame will be shipped to you, if you buy from the online shop: If you want to build your own frame, you will require a lot of calculations and knowledge about the materials. You need to focus on how the assembling will be done, if you build a frame by yourself. The thrust of the motor after mounting on the frame is really important. It will tell you whether your drone will float in the air or fall down or become imbalanced. To calculate the thrust of the motor, you can follow the equation that we will speak about next. If P is the payload capacity of your drone (how much your drone can lift. I'll explain how you can find it), M is the number of motors, W is the weight of the drone itself, and H is the hover throttle % (will be explained later). Then, our thrust of the motors T will be as follows: The drone's payload capacity can be found with the following equation: [box type="note" align="" class="" width=""]Remember to keep the frame balanced and the center of gravity remains in the hands of the drone.[/box] Check out the book, Building Smart Drones with ESP8266 and Arduino by Syed Omar Faruk Towaha to read about the other components that go into making a drone and then build some fun drone projects from follow me drones, to drone that take selfies to those that race and glide. Check out other posts on IoT: How IoT is going to change tech teams AWS Sydney Summit 2018 is all about IoT 25 Datasets for Deep Learning in IoT  
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Packt
03 Mar 2018
14 min read
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Introduction to Raspberry Pi Zero W Wireless

Packt
03 Mar 2018
14 min read
In this article by Vasilis Tzivaras, the author of the book Raspberry Pi Zero W Wireless Projects, we will be covering the following topics:  An overview of the Raspberry Pi family  An introduction to the new Raspberry Pi Zero W Distributions  Common issues Raspberry Pi Zero W is the new product of the Raspberry Pi Zero family. In early 2017, Raspberry Pi community has announced a new board with wireless extension. It offers wireless functionality and now everyone can develop his own projects without cables and other components. Comparing the new board with Raspberry Pi 3 Model B we can easily see that it is quite smaller with many possibilities over the Internet of Things. But what is a Raspberry Pi Zero W and why do you need it? Let' s go though the rest of the family and introduce the new board. In the following article we will cover the following topics: (For more resources related to this topic, see here.) Raspberry Pi family As said earlier Raspberry Pi Zero W is the new member of Raspberry Pi family boards. All these years Raspberry Pi are evolving and become more user friendly with endless possibilities. Let's have a short look at the rest of the family so we can understand the difference of the Pi Zero board. Right now, the heavy board is named Raspberry Pi 3 Model B. It is the best solution for projects such as face recognition, video tracking, gaming or anything else that is demanding:                                      RASPBERRY PI 3 MODEL B It is the 3rd generation of Raspberry Pi boards after Raspberry Pi 2 and has the following specs:  A 1.2GHz 64-bit quad-core ARMv8 CPU 802.11n Wireless LAN Bluetooth 4.1 Bluetooth Low Energy (BLE)  Like the Pi 2, it also has 1GB RAM 4 USB ports 40 GPIO pins Full HDMI port Ethernet port Combined 3.5mm audio jack and composite video  Camera interface (CSI)  Display interface (DSI)  Micro SD card slot (now push-pull rather than push-push)  VideoCore IV 3D graphics core The next board is Raspberry Pi Zero, in which the Zero W was based. A small low cost and power board able to do many things:                                     Raspberry Pi Zero The specs of this board can be found as follows:  1GHz, Single-core CPU  512MB RAM  Mini-HDMI port Micro-USB OTG port  Micro-USB power  HAT-compatible 40-pin header  Composite video and reset headers  CSI camera connector (v1.3 only) At this point we should not forget to mention that apart from the boards mentioned earlier there are several other modules and components such as the Sense Hat or Raspberry Pi Touch Display available which will work great for advance projects. The 7″ Touchscreen Monitor for Raspberry Pi gives users the ability to create all-in-one, integrated projects such as tablets, infotainment systems and embedded projects:                                                        RASPBERRY PI Touch Display Where Sense HAT is an add-on board for Raspberry Pi, made especially for the Astro Pi mission. The Sense HAT has an 8×8 RGB LED matrix, a five-button joystick and includes the following sensors: Gyroscope Accelerometer  Magnetometer Temperature  Barometric pressure Humidity                                                                         sense HAT Stay tuned with more new boards and modules at the official website: https://www.raspberrypi.org/ Raspberry Pi Zero W Raspberry Pi Zero W is a small device that has the possibilities to be connected either on an external monitor or TV and of course it is connected to the internet. The operating system varies as there are many distros in the official page and almost everyone is baled on Linux systems.                                                        Raspberry Pi Zero W   With Raspberry Pi Zero W you have the ability to do almost everything, from automation to gaming! It is a small computer that allows you easily program with the help of the GPIO pins and some other components such as a camera. Its possibilities are endless! Specifications If you have bought Raspberry PI 3 Model B you would be familiar with Cypress CYW43438 wireless chip. It provides 802.11n wireless LAN and Bluetooth 4.0 connectivity. The new Raspberry Pi Zero W is equipped with that wireless chip as well. Following you can find the specifications of the new board: Dimensions: 65mm × 30mm × 5mm SoC:Broadcom BCM 2835 chip ARM11 at 1GHz, single core CPU 512ΜΒ RAM Storage: MicroSD card  Video and Audio:1080P HD video and stereo audio via mini-HDMI connector Power:5V, supplied via micro USB connector  Wireless:2.4GHz 802.11 n wireless LAN Bluetooth: Bluetooth classic 4.1 and Bluetooth Low Energy (BLE) Output: Micro USB  GPIO: 40-pin GPIO, unpopulated                                Raspberry Pi Zero W Notice that all the components are on the top side of the board so you can easily choose your case without any problems and keep it safe. As far as the antenna concern, it is formed by etching away copper on each layer of the PCB. It may not be visible as it is in other similar boards but it is working great and offers quite a lot functionalities:                  Raspberry Pi Zero W Capacitors Also, the product is limited to only one piece per buyer and costs 10$. You can buy a full kit with microsd card, a case and some more extra components for about 45$ or choose the camera full kit which contains a small camera component for 55$. Camera support Image processing projects such as video tracking or face recognition require a camera. Following you can see the official camera support of Raspberry Pi Zero W. The camera can easily be mounted at the side of the board using a cable like the Raspberry Pi 3 Model B board:The official Camera support of Raspberry Pi Zero W Depending on your distribution you many need to enable the camera though command line. More information about the usage of this module will be mentioned at the project. Accessories Well building projects with the new board there are some other gadgets that you might find useful working with. Following there is list of some crucial components. Notice that if you buy Raspberry Pi Zero W kit, it includes some of them. So, be careful and don't double buy them:  OTG cable  powerHUB GPIO header  microSD card and card adapter  HDMI to miniHDMI cable  HDMI to VGA cable Distributions The official site https://www.raspberrypi.org/downloads/ contains several distributions for downloading. The two basic operating systems that we will analyze after are RASPBIAN and NOOBS. Following you can see how the desktop environment looks like. Both RASPBIAN and NOOBS allows you to choose from two versions. There is the full version of the operating system and the lite one. Obviously the lite version does not contain everything that you might use so if you tend to use your Raspberry with a desktop environment choose and download the full version. On the other side if you tend to just ssh and do some basic stuff pick the lite one. It' s really up to you and of course you can easily download again anything you like and re-write your microSD card. NOOBS distribution Download NOOBS: https://www.raspberrypi.org/downloads/noobs/. NOOBS distribution is for the new users with not so much knowledge in linux systems and Raspberry PI boards. As the official page says it is really "New Out Of the Box Software". There is also pre-installed NOOBS SD cards that you can purchase from many retailers, such as Pimoroni, Adafruit, and The Pi Hut, and of course you can download NOOBS and write your own microSD card. If you are having trouble with the specific distribution take a look at the following links: Full guide at https://www.raspberrypi.org/learning/software-guide/. View the video at https://www.raspberrypi.org/help/videos/#noobs-setup. NOOBS operating system contains Raspbian and it provides various of other operating systems available to download. RASPBIAN distribution Download RASPBIAN: https://www.raspberrypi.org/downloads/raspbian/. Raspbian is the official supported operating system. It can be installed though NOOBS or be downloading the image file at the following link and going through the guide of the official website. Image file: https://www.raspberrypi.org/documentation/installation/installing-images/README.md. It has pre-installed plenty of software such as Python, Scratch, Sonic Pi, Java, Mathematica, and more! Furthermore, more distributions like Ubuntu MATE, Windows 10 IOT Core or Weather Station are meant to be installed for more specific projects like Internet of Things (IoT) or weather stations. To conclude with, the right distribution to install actually depends on your project and your expertise in Linux systems administration. Raspberry Pi Zero W needs an microSD card for hosting any operating system. You are able to write Raspbian, Noobs, Ubuntu MATE, or any other operating system you like. So, all that you need to do is simple write your operating system to that microSD card. First of all you have to download the image file from https://www.raspberrypi.org/downloads/ which, usually comes as a .zip file. Once downloaded, unzip the zip file, the full image is about 4.5 Gigabytes. Depending on your operating system you have to use different programs:  7-Zip for Windows  The Unarchiver for Mac  Unzip for Linux Now we are ready to write the image in the MicroSD card. You can easily write the .img file in the microSD card by following one of the next guides according to your system. For Linux users dd tool is recommended. Before connecting your microSD card with your adaptor in your computer run the following command:  df -h Now connect your card and run the same command again. You must see some new records. For example if the new device is called /dev/sdd1 keep in your mind that the card is at /dev/sdd (without the 1). The next step is to use the dd command and copy the image to the microSD card. We can do this by the following command:  dd if= of= Where if is the input file (image file or the distribution) and of is the output file (microSD card). Again be careful here and use only /dev/sdd or whatever is yours without any numbers. If you are having trouble with that please use the full manual at the following link https://www.raspberrypi.org/documentation/installation/installing-images/linux.md. A good tool that could help you out for that job is GParted. If it is not installed on your system you can easily install it with the following command:  sudo apt-get install gparted Then run sudogparted to start the tool. Its handles partitions very easily and you can format, delete or find information about all your mounted partitions. More information about ddcan be found here: https://www.raspberrypi.org/documentation/installation/installing-images/linux.md For Mac OS users dd tool is always recommended: https://www.raspberrypi.org/documentation/installation/installing-images/mac.md For Windows users Win32DiskImager utility is recommended: https://www.raspberrypi.org/documentation/installation/installing-images/windows.md There are several other ways to write an image file in a microSD card. So, if you are against any kind of problems when following the guides above feel free to use any other guide available on the Internet. Now, assuming that everything is ok and the image is ready. You can now gently plugin the microcard to your Raspberry PI Zero W board. Remember that you can always confirm that your download was successful with the sha1 code. In Linux systems you can use sha1sum followed by the file name (the image) and print the sha1 code that should and must be the same as it is at the end of the official page where you downloaded the image. Common issues Sometimes, working with Raspberry Pi boards can lead to issues. We all have faced some of them and hope to never face them again. The Pi Zero is so minimal and it can be tough to tell if it is working or not. Since, there is no LED on the board, sometimes a quick check if it is working properly or something went wrong is handy. Debugging steps With the following steps you will probably find its status: Take your board, with nothing in any slot or socket. Remove even the microSD card!  Take a normal micro-USB to USB-ADATA SYNC cable and connect the one side to your computer and the other side to the Pi's USB, (not the PWR_IN).  If the Zero is alive: • On Windows the PC will go ding for the presence of new hardware and you should see BCM2708 Boot in Device Manager. On Linux, with a ID 0a5c:2763 Broadcom Corp message from dmesg. Try to run dmesg in a Terminal before your plugin the USB and after that. You will find a new record there. Output example: [226314.048026] usb 4-2: new full-speed USB device number 82 using uhci_hcd [226314.213273] usb 4-2: New USB device found, idVendor=0a5c, idProduct=2763 [226314.213280] usb 4-2: New USB device strings: Mfr=1, Product=2, SerialNumber=0 [226314.213284] usb 4-2: Product: BCM2708 Boot [226314.213] usb 4-2: Manufacturer: Broadcom If you see any of the preceding, so far so good, you know the Zero's not dead. microSD card issue Remember that if you boot your Raspberry and there is nothing working, you may have burned your microSD card wrong. This means that your card many not contain any boot partition as it should and it is not able to boot the first files. That problem occurs when the distribution is burned to /dev/sdd1 and not to /dev/sdd as we should. This is a quite common mistake and there will be no errors in your monitor. It will just not work! Case protection Raspberry Pi boards are electronics and we never place electronics in metallic surfaces or near magnetic objects. It will affect the booting operation of the Raspberry and it will probably not work. So a tip of advice, spend some extra money for the Raspberry PI Case and protect your board from anything like that. There are many problems and issues when hanging your raspberry pi using tacks. It may be silly, but there are many that do that. Summary Raspberry Pi Zero W is a new promising board allowing everyone to connect their devices to the Internet and use their skills to develop projects including software and hardware. This board is the new toy of any engineer interested in Internet of Things, security, automation and more! We have gone through an introduction in the new Raspberry Pi Zero board and the rest of its family and a brief analysis on some extra components that you should buy as well. Resources for Article:   Further resources on this subject: Raspberry Pi Zero W Wireless Projects Full Stack Web Development with Raspberry Pi 3
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Packt
17 Jul 2017
11 min read
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Introduction to IOT

Packt
17 Jul 2017
11 min read
In this article by Kallol Bosu Roy Choudhuri, the author of the book Learn Arduino Prototyping in 10 days, we will learn about IoT. (For more resources related to this topic, see here.) As per Gartner, the number of connected devices around the world is going to reach 50 billion by the year 2020. Just imagine the magnitude and scale of the hyper-connectedness that is being forged every moment, as we read through this exciting article. Figure 1: A typical IoT scenario (automobile example) As we can see in the preceding figure, a typical IoT-based scenario is composed of the following fundamental building blocks: IoT edge device IoT cloud platform An IoT device is used to serve as a bridge between existing machines on the ground and an IoT cloud platform. The IoT cloud platform provides a cloud-based infrastructure backbone for data acquisition, data storage, and computing power for data analytics and reporting. The Arduino platform can be effectively used for prototyping IoT devices for almost any IoT solution very rapidly. Building the edge device In this section, we will learn how to use the ESP8266 Wi-Fi chip with the Arduino Uno for connecting to the Internet and posting data to an IoT cloud. There are numerous IoT cloud players in the market today, including Microsoft Azure and Amazon IoT. In this article, we will use the ThingSpeak IoT platform that is very simple to use with the Arduino platform. The following parts will be required for this prototype: 1 Arduino Uno R3 1 USB Cable 1 ESP8266-01 Wi-Fi Transceiver module 1 Breadboard 1 pc. 1K Ohms resistor 1 pc. 2k ohms resistor Some jumper wires Once all the parts have been assembled, follow the breadboard circuit shown in the following figure and build the edge device: Figure 2: ESP8266 with Arduino Uno Wiring The important facts to remember in the preceding setup are: The RXD pin of the ESP8266 chip should receive a 3.3V input signal. We have ensured this by employing the voltage division method. For test purposes, the preceding setup should work fine. However, the ESP8266 chip is demanding when it comes to power (read current) consumption, especially during transmission cycles. Just in case the ESP8266 chip does not respond to the Arduino sketch or AT commands properly, then the power supply may not be enough. Try using a separate battery for the setup. When using a separate battery, remember to use a voltage regulator that steps down the voltage to 3.3 volts before supplying the ESP8266 chip. For prolonged usage, a separate battery based power supply is recommended. Smart retail project inspiration In the previous sections, we looked at the basics of achieving IoT prototyping with the Arduino platform and an IoT cloud platform. With this basic knowledge, you are encouraged to start exploring more advanced IoT scenarios. As a future inspiration, the following smart retail project idea is being provided for you to try by applying the basic principles that you have learned in this article. After all, the goal of this article has been to show you the light and make you self-reliant with the Arduino platform. Imagine a large retail store where products are displayed in hundreds of aisles and thousands of racks. Such large warehouse-type retail layouts are common in some countries, usually with furniture sellers. One of the time-consuming tasks that these retail shops face is to keep the price of their displayed inventory matched with the ever changing competitive market rates. For example, the price of a sofa set could be marked at 350 dollars on aisle number 47 rack number 1. Now let's think from a customer’s perspective. Imagine being a potential customer, standing in front of the sofa set we would naturally search for the prices of that sofa set on the Internet. It would not be very surprising to find a similar sofa set that is priced a little lower, maybe at 325 dollars at another store. That is exactly how and when a potential customer would change her mind. The story after this is simple. The customer leaves store A, goes to store B and purchases the sofa set at 325 dollars. In order to address these types of lost sale opportunities, the furniture company management decides to lower the prices of the sofa set to 325 dollars, in order to match the competition. Thereafter, all that needs to be done is for someone to change the price label for the sofa set in aisle number 47 rack number 1, which is a 5–10 minute walk (considering the size of the shop floor) from the shop back office. In a localized store, it is still achievable without further loss of customers. Now, let's appreciate the problem by thinking hyperscale. The furniture seller’s management is located centrally, say in Sweden and they want to dynamically change the product prices for specific price-sensitive products that are displayed across more than 350 stores, in more than 40 countries. The price change should be automatic, near real time, and simultaneous across all company stores. Given the preceding problem statement, it seems a daunting task that could leave hundreds for shop floor staff scampering all day long, just to keep changing price tags for hundreds of products. An elegant solution to this problem lies in the Internet-of-Things. Figure 3: Smart retail with IoT Referring to the preceding figure, it depicts a basic IoT solution for addressing the furniture seller’s problem to matching product prices dynamically on the fly. Remember, since this is an Arduino prototyping article, the stress is on edge device prototyping. However, IoT as a whole; encompasses many areas that include edge devices and cloud platform capabilities. Our focus in this section is to be able to comprehend and build the edge device prototype that supports this smart retail IoT solution. In the preceding solution, the cloud platform takes care of running intelligent program batches to continuously analyze market rates for price-sensitive products. Once a new price has been determined by the cloud job/program, the new product prices are updated in the cloud-hosted database. Immediately after a new price change, all the IoT edge devices attached to the price tag of specific products in the company stores are notified of the new price. We can build a smart LCD panel for displaying product prices. For Internet connectivity, we can reuse the ESP8266 Wi-Fi chip that we learned in this article. Standalone Devices We are already familiar with the basic parts required for building a prototype. The two new aspects to consider when building a standalone project are an independent power source and a project container. Figure 4 - Typical parts of a Standalone Prototype As shown above, typically a standalone device prototype will contain the following parts: The device prototype (Arduino board + Peripherals + all the required Connections) An independent power source A project container/box After the basic prototype has been built the next consideration is to make it operable on its own, like an island. This is because in real world situations, you will often have to make a device that is not directly be connected to and powered from a computer. Therefore we will need to understand the various options that are available for powering our device prototypes and also understand when to choose which option. The second aspect to consider is an appropriate physical container to house the various parts of a project. A container is a physical device container will ensure that all parts of a project are nicely packaged in a safe and aesthetic manner. A distance measurement device Let's build an exciting project by combining an Ultrasonic Sensor with a 16x2 LCD character display to build an electronic distance measurement device. We will use one of the most easily available 9-volt batteries for powering this standalone device prototype. For building the distance measurement device, the following parts will be required. Arduino Uno R3 USB connector 1 pc. 9 volt battery 1 full sized bread board 1 HC-SR04 ultrasonic sensor 1 pc. 16x2 LCD character display 1 pc. 10K potentiometer 2 pcs. 220 ohms resistor 1 pc. 150 ohms resistor Some jumper wires Before we start building the device, let's understand what the device will do and the various parts involved in the device. The purpose of the device will be to be able to measure the distance of an object from the device. The following diagram depicts the overview of the device: Figure 5 - A standalone distance measurement device overview First, let's quickly understand each of the components involved in the preceding setup. Then, we will jump into hands-on prototyping and coding. The ultrasonic sensor model used in this example is known as HC-SR04. HC-SR04 is a standard commercially available ultrasonic transceiver. A transceiver is a device that is capable of transmitting as well as receiving signals. The HC-SR04 transceiver transmits ultrasonic signals. Once the signals hit an object/obstacle, the signals echo back to the HC-SR04 transceiver. The HC-SR04 ultrasonic module is shown below for reference. Figure 6 - The HC-SR04 Ultrasonic module The HC-SR-04 has four pins. The usage of the pins is explained below for easy understanding: Vcc: This pin is connected to a 5 volt power supply. Trig: This pin receives digital signals from the attached microcontroller unit in order to send out an ultrasonic burst. Echo: This pin sends the measured time duration proportional to the distance travelled by the ultrasonic burst. Gnd: This pin is connected to the ground terminal. The total time taken for the ultrasonic signals to echo back from an obstacle can be divided by 2 and then based on the speed of sound in air, the distance between the object and the HC-SR04 can be calculated. We will see how to calculate the distance in the sketch for this device prototype. As per the HC-SR04 data sheet, it is a 5-volt tolerant device, operating at 15 mA, and has a measurement range starting from 2 centimeters to a maximum of 4 meters. The HC-SR04 can be directly connected to the Arduino board pins. The 16x2 LCD character display is also a standard commercially available device, it has 16 columns and 2 rows. The LCD is controlled by its 4 data pins/lines. We will also see how to send string outputs to the LCD from the Arduino sketch. The power supply being used in today's example is a standard 9-volt battery plugged in Arduino's DC IN Jack. Alternatively, another option is to use 6 pieces of either AA-sized or AAA-sized batteries in series and plug them into the VIN pin of the Arduino board. Distance measurement device circuit Follow the bread board diagram shown next to build the distance measurement device. The diagram shown on the next page is quite complex. Take your time as you unravel through it. All the components (including the Arduino board) in this prototype are powered from the 9 volt battery. Sometimes the LCD procured online might not ship with soldered header pins. In such a case, you will have to solder 16 header pins. It is very important to note that unless the header pins are soldered properly into the LCD board, the LCD screen will not work correctly. This is a very challenging prototype to get it working at one go. Make sure there are no loose jumper wires. Notice how the positive and negative terminals of the power source are plugged into the VIN and GND pins of the Arduino board respectively. The 10K potentiometer has three legs. If you look straight at the breadboard diagram, the left hand side leg of the potentiometer is connected to the 5V power supply rail of the breadboard. Figure 7 - Typical potentiometersr The right hand-side leg is connected to the common ground rail of the breadboard. The leg in the middle is the regulated (via the potentiometer's 10K resistance dial) output that controls the LCD's V0/VEE pin. Basically, this pin controls the contrast of the display. You will also have to adjust (a simple screw driver may be used) the 10K potentiometer dial (to around halfway at 5K) to make the characters visible on the LCD screen. Initially, you may not see anything on the LCD, until the potentiometer is adjusted properly. Figure 8 - Distance measurement device prototype When the 'Trig' pin receives a signal (via pin D8 in this example) and results in sending out ultrasonic waves to the surroundings. As soon as the ultrasonic waves collide with an obstacle, they get reflected. The reflected ultrasonic waves are received by the HC-SR04 sensor. The Echo pin is used to read the output of the ultrasonic sensor (via pin D7 in this example). The output read from the 'Echo' pin is processed by the Arduino sketch to calculate the distance. Summary Thus an IoT device is used to serve as a bridge between existing machines on the ground and an IoT cloud platform. Resources for Article: Further resources on this subject: Introducing IoT with Particle's Photon and Electron [article] IoT and Decision Science [article] IoT Analytics for the Cloud [article]
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Packt
23 Jun 2017
19 min read
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Setting up your Raspberry Pi

Packt
23 Jun 2017
19 min read
In this article by Pradeeka Seneviratne and John Sirach, the authors of the book Raspberry Pi 3 Projects for Java Programmers we will cover following topics: Getting started with the Raspberry Pi Installing Raspbian (For more resources related to this topic, see here.) Getting started with the Raspberry Pi With the release of the Raspberry Pi 3 the Raspberry Pi foundation has made a very big step in the history of the Raspberry Pi. The current hardware architecture is now based on a 1.2 Ghz 64 bit ARMv7. This latest release of the Raspberry Pi also includes support for wireless networking and has an onboard Bluetooth 4.1 chip available. To get started with the Raspberry Pi you will be needing the following components: Keyboard and mouse Having both a keyboard and mouse present will greatly help with the installation of the Raspbian distribution. Almost any keyboard or mouse will work. Display You can attach any compatible HDMI display which can be a computer display or a television. The Raspberry Pi also has composite output shared with the audio connector. You will be needing an A/V cable if you want to use this output. Power adapter Because of all the enhancements done the Raspberry Pi foundation recommends a 5V adapter capable to deliver 2.5 A. You would be able to use a lower rated one, but I strongly advice against this if you are planning to use all the available USB ports. The connector for powering the device is done with a Micro USB cable. MicroSD card The Raspberry Pi 3 uses a microSD card. I would advice to use at least a 8 GB class 10 version. This will allow to use the additional space to install applications and as our projects will log data you won’t be running out of space soon. The Raspberry Pi 3 Last but not least a Raspberry Pi 3. Some of our projects will be using the on-board Bluetooth chip and this version is also being focussed on in this article. Our first step will be preparing a SD card for usage with the Raspberry Pi. You will be needing a MicroSD card as the Raspberry Pi 3 only supports this format. The preparation of the SD card is being done on a normal PC so it is wise to purchase one with an adapter fitting a full size SD card slot. There are webshops selling pre-formatted SD cards with the NOOBS installer already present on the card. If you have bought one of these pre-formatted cards you can skip to the Installing Raspbian section. Get a compatible SD card There are a large numbers of SD cards available. The Raspberry Pi foundation advices an 8 GB card leaving space to install different kind of applications and supplies enough space for us to write any log data. When you buy a SD card it is wise to keep your eyes open for the quality of these cards. Buying them from well known and established manufactures often supplies better quality then the counterfeit ones. SD cards are being sold with different class definitions. These classes explain the minimal combined read and write speeds. Class 6 should provide at least 6 MB (Mega Byte) per second and class 10 cards should provide at least 10 MB/s. There is a good online resource available which provides tested results of used SD cards with the Raspberry Pi. If you would need any resource to check for compatible SD cards I would advice you to go to the embedded Linux page at http://elinux.org/RPi_SD_cards. Preparing and formatting the SD card To be able to use the SD card it first needs to be formatted. Most cards are already formatted with the FAT32 file system, which the Raspberry Pi NOOBS installer requires, unless you have bought a large SD card it is possible it is formatted with the exFAT file system. These then should also be formatted as FAT32. To format the SD card we will be using the SD association’s SDformatter utility which you can download from http://elinux.org/RPi_SD_cards as default Operating System supplied formatters are not always providing optimal results. In the below screenshot, the SDformatter for the Mac is shown. This utility is also available for Windows and has the same options. If you are using Linux you can use GParted. Make sure when using GParted you use FAT32 as the formatting option. As in the screenshot select the Overwrite format option and give the SD card a label. The example shows RPI3JAVA but this can be a personal label of your choice to quickly recognize the card when inserted: Press the Format button to start formatting the SD card. Depending on the size of the SD card this can take some time enabling you to get a cup of coffee. The utility will show a done message in the form of Card Format complete when the formatting is done. You will now have an usable SD card. To be able to use the NOOBS installer you will be needing to follow the following steps: Download the NOOBS installer from https://www.raspberrypi.org/downloads/. Unzip the file with your favorite unzip utility. Most Operating Systems already have one installed. Copy the contents of the unzipped file into the SD card’s root directory so the copy result is shown. When selecting the NOOBS for download do only select the lite version if you do not mind to install Raspbian using the Raspberry Pi’s network connection. Now after we have copied the required files into the SD card we can start installing the Raspbian Operating System. Installing Raspbian To install Raspbian we need to get the Raspberry Pi ready for use. As the Raspberry Pi has no power on and off button the powering of the Raspberry Pi will be done as the last step: At the bottom of the Raspberry Pi on the side you will see a slot to put your MicroSD card. Insert the SD card with the connectors pointing to the board. Next connect the HDMI or the Composite connector and your keyboard and mouse. You won’t be needing a network cable as we will be using the wireless functionality build into the Raspberry Pi. We will now connect the Raspberry Pi with the micro USB cabled power supply. When the Raspberry Pi boots up you will be presented with the installation options of Operating Systems available to be installed. Depending on the download of NOOBS you have done you will be able to see if the Raspbian Operating System is already available on the SD card or it will be installed by downloading it. This is being visualized by showing an SD card image or a network image behind the Operating system name. In the below screenshot you see the NOOBS installer with the Raspbian Image available on the SD card. At the bottom of the installation screen you will find the Language and Keyboard drop down menu’s. Make sure you select the appropriate language and keyboard selection otherwise it will become quite difficult to enter correct characters on  the command line and other tools requiring text input. Select the Raspbian [RECOMMENDED] option and click the Install (i) button to start installing the Operating System: You will be prompted with a popup confirming the installation as it will overwrite any existing installed Operating Systems. As we are using a clean SD card we will not be overwriting any. It is safe to press Yes to start the installation. This installation will take up a couple of minutes, so it is a good time to go for a second cup of coffee. When the installation is done you can press Ok in the popup which appears and the Raspberry Pi will reboot. Because Raspbian is a Linux OS you will see text scrolling by of services which are being started by the OS. hen all services are started the Raspberry Pi will start the default graphical environment called LXDE which is one of the Linux window managers. Configuring Raspbian Now that we have installed Raspbian and have it booting into the graphical environment we can start configuring the Raspberry Pi for our purposes. To be able to configure the Raspberry Pi the graphical has got an utility tool installed which eases up the configuration called Raspberry Pi Configuration. To open this tool use the mouse and click on the Menu button on the top left, navigate to Preferences and press the Raspberry Pi Configuration menu option like shown in the screenshot: When clicked on the Raspberry Pi Configuration tool menu option a popup will appear with the graphical version of the known raspi-config command line tool. In thegraphicalpopup we see 4 tabs explaining different parts of possible configuration options. We first focus on the System tab which allows us to:       Change the Password      Change the Hostname which helps to identify the Raspberry Pi in the network      Change the Boot method to, as we are looking at, To Desktop or the CLI which is the command line interface      And set the Network at Boot option With the system newly installed the default username is pi and the password is set to raspberry. Because these are the default settings it is recommended that we change the password into a new one. Press the Change Password button and enter a newly chosen password twice. One time for setting the password and the second time to make sure we have entered the new password correctly. Press Ok when the password has been entered twice. Try to come up with a password which contains capital letters, numbers and some strange characters as this will make it more difficult to guess. Now after we have set a new password we are going to change the hostname of the Raspberry Pi. With the hostname we are able to identify the device on the network. I have changed the hostname into RASPI3JAVA which helps me to identify this Raspberry Pi to be used for the article. The hostname is used on the Command Line Interface so you will immediately identify this Raspberry Pi when you login. By default the Raspberry Pi boots into the graphical user interface which you are looking at right now. Because a future project will require us to make use of a display with our application we will be choosing to boot into the CLI mode. Click on the radio button which says To CLI. The next time we are rebooting we will be shown the command line interface. Because we will be going to use the integrated WI-FI  connection on this Raspberry Pi we are going to change the Network at Boot option to set it to have it waiting for the network. Tick the box which says Wait for network. We are done with setting some default settings which sets some primary options to help us identify the Raspberry Pi and changed the boot mode. We will now be changing some advanced settings which enables us to make use of the hardware provided by the Raspberry Pi. Click on the Interface tab which will give us a list of the available hardware provided. This list consists of:      Camera: The Official Raspberry Pi Camera interface      SSH: To be able to login in from remote locations      SPI: Serial Peripheral Interface Bus for communicating with hardware      I2C: serial communication bus mostly used between chips      Serial: The serial communication interface      1-Wire: Low data, power supplying bus interface conceptual based on I2C      Remote GPIO A future project we will be working on will require some kind of Camera interface. This project will be able to use both the local attached official Raspberry Pi Camera module as well as a USB connected webcam. If you got the camera module tick Enabled radio box behind Camera. We will be deploying our applications immediately from the editor. This means we need to enable the SSH option. By default this already is so we leave the setting as is. If the SSH option is not enabled tick the radio button Enabled behind the SSH option. For now you can leave the other interfaces disabled as we will only enable them when we need them. As we now have enabled default interfaces we will be going to need, we are going to do some performance tweaking. Click on the Performance tab to open the performance options. We will not be needing to overclock the Raspberry Pi so you can leave this options as it is. Later on in the article we will be interfacing with the Raspberry Pi’s display and do some neat tricks with it. For this we need some amount of memory for the Graphical Processor Unit, the GPU. By default this is set to 64 MB. We will ask for the most amount of memory possible to be assigned to the GPU which is 512 MB. Put 512 behind the GPU Memory option, there is no need to enter the text “MB”. The memory on the Raspberry Pi is shared between the system and the GPU. By having this option set to 512 MB results in only 512 MB available for the system. I can assure you this is more then sufficient. Now that we are done with the system configuration we are making sure we can work with the Raspberry Pi. Click on the Localisation tab to show the options applicable to the location the Raspberry Pi resides. We have the options:      Set Locale Where you set your locale settings      Timezone The time zone you currently at      Keyboard The layout of the keyboard      Wi-Fi  Country The country you will be making the Wi-Fi  connection This article is focused on US-English language with a broad character set. Unless you prefer to continue with your own personal preferences change the following by pressing the Set Locale button:      Language to en (English)      Country to US (USA)      Character Set to UTF-8 Press the OK button to continue. As this needs to build up the Locale settings this can take up about 20 seconds to setup, you will be notified with a small window until this process is finished. The next step is to set the Timezone. This is needed as we want to have time and dates be shown correctly. Click on the Set Timezone button and select your appropriate Area and Location from the drop down menu’s. When done press the OK button. To make sure that the text we enter in any input field is the correct one we  are going to set the layout of our keyboard. There are a lot of layouts available so you need to check yours. The Raspberry Pi is quite helpful in providing any keyboard options. Press the Set Keyboard button to open up a popup showing the keyboard options. Here you are able to select your country and the keyboard layout available for this country. In my case I have to select United States as the Country and the Variant as English (US, with euro on 5). After you have made the selection you can test your keyboard setup in the input field below the Country and Variant selection lists. Press the OK button when you are satisfied with your selection. Unless you are connecting your Raspberry Pi with a wired network connection we are going to setup the country we are going to make the Wi-Fi  connection so we are able to connect remotely to the Raspberry Pi. Press the Set Wi-Fi  Country button to have a the Wi-Fi  Country Code shown which provides us the list of available countries for t. he Wi-Fi  connection. Press the OK button after you have made the selection. We are now done with the minimal Raspberry Pi system configuration. Press OK in the settings window to have all our settings stored and press No in the popup following which says a reboot is needed to have the settings applied as we are not completely done yet. Our final step is to set up the local Wi-Fi chip on the Raspberry Pi. We will now set up the Wi-Fi on the Raspberry Pi. Unless you want your Raspberry Pi connected with a Network cable you can skip this section and head over to the Set fixed IP section: To set up the Wi-Fi  click on the Network icon which is shown on top of the screen between the Bluetooth and Speaker Volume icon. When you click this button The Raspberry Pi will start to scan for available wireless networks. Give it a couple of seconds if your Network does not appear immediately. When you see you network appearing click on itandifyou network is secured you will be asked to supply the credentials to be able to connect to your wireless network. If there are any troubles with connecting to your wireless network without any message log in to your router and change the Wi-Fi channel to a channel lower then channel 11. When you have entered your credentials and pressed the OK button you will see the icon changing from the two network computers to the wireless icon trying to connect to the wireless network. Now that the Raspberry Pi has rebooted we have configured the wireless network to make sure the wireless network will keep it’s connection. As the Raspberry Pi is an embedded device targeting low power consumption the Wi-Fi  connection is possible set to sleep mode after a specific time there is no network usage. To make sure the Wi-Fi  is not going into power sleep mode we will be changing a setting through the command line which will make sure this won’t happen. To open a command line interface we need to open a Terminal. A terminal is a window which will show the command prompt where we are able to provide commands. When you look at the graphical interface you will notice a small computer screen icon on the top in the menu bar. When we hover this icon it shows the text Terminal. Press this icon to open up a terminal. A popup will open with a large blackscreenandshowing the command prompt like shown in the screenshot: Do you notice the hostname we have set earlier? This is the same prompt as we will see when we log in remotely. Now that we have a command line open we need to enter a command to make sure the wireless network will not go to sleep after a period of no network activity. Enter the following in the terminal: sudo iw dev wlan0 set power_save off Press Enter. This command sets the power save mode to off so the wlan0 (wireless device) won’t enter power save mode and stays connected to the network. We are almost done with setting up the Raspberry Pi. To be able to connect to the Raspberry Pi from a remote location we need to know the IP address of the Raspberry Pi. This final configuration step involves setting a fixed IP address into the Raspberry Pi settings. To open the settings for a fixed IP configuration we are going to open up the settings by pressing the wireless network icon with the right mouse button and press the option Wi-Fi  Networks (dhcpcdui) Settings. A popup will appear providing settings we can change. As we will will only change the settings of the Wi-Fi  connection we select interface next to the Configure option. When interface is selected we are able to select the wlan0 option in the drop down menu next to the interface selection. If you have chosen to use a wired instead of the wireless connection you can select the eth0 option next to the interface option. We now have a couple of options available to enter IP address related information. Please refer to the documentation of your router to find out which IP address is available to you which you can use. My advice is to only enter the IP address in the available fields whichleaves the other options automatically configured like in the screenshot below. Notice that the entered IP address is the correct one; this only applies to my configuration which could differ from yours: After you have entered the IP address you can click Apply and Close. It is now time to restart our Raspberry Pi and have it boot to the CLI. While rebooting you will see a lot of text scrolling which shows the services starting and at the end instead of starting the graphical interface we are now shown the text based command line interface as shown in the screenshot: If you want to return to the graphical interface just type in: startx Press Enter and wait a couple of seconds for the graphical user interface appear again. We are now ready to install the Oracle JDK which we will be using to run our Java applications. Summary In this article we have learned how to start with with the Raspberry Pi and how to install Raspbian. Resources for Article: Further resources on this subject: The Raspberry Pi and Raspbian The Raspberry Pi and Raspbian Raspberry Pi Gaming Operating Systems Raspberry Pi Gaming Operating Systems Sending Notifications using Raspberry Pi Zero Sending Notifications using Raspberry Pi Zero
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Packt
14 Jun 2017
19 min read
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IoT Analytics for the Cloud

Packt
14 Jun 2017
19 min read
In this article by Andrew Minteer, author of the book Analytics for the Internet of Things (IoT), that you understand how your data is transmitted back to the corporate servers, you feel you have more of a handle on it. You also have a reference frame in your head on how it is operating out in the real world. (For more resources related to this topic, see here.) Your boss stops by again. "Is that rolling average job done running yet?", he asks impatiently. It used to run fine and finished in an hour three months ago. It has steadily taken longer and longer and now sometimes does not even finish. Today, it has been going on six hours and you are crossing your fingers. Yesterday it crashed twice with what looked like out of memory errors. You have talked to your IT group and finance group about getting a faster server with more memory. The cost would be significant and likely will take months to complete the process of going through purchasing, putting it on order, and having it installed. Your friend in finance is hesitant to approve it. The money was not budgeted for this fiscal year. You feel bad especially since this is the only analytic job causing you problems. It just runs once a month but produces key data. Not knowing what else to say, you give your boss a hopeful, strained smile and show him your crossed fingers. “It’s still running...that’s good, right?” This article is about the advantages to cloud based infrastructure for handling and analyzing IoT data. We will discuss cloud services including Amazon Web Services (AWS), Microsoft Azure, and Thingworx. You will learn how to implement analytics elastically to enable a wide variety of capabilities. This article will cover: Building elastic analytics Designing for scale Cloud security and analytics Key Cloud Providers Amazon AWS Microsoft Azure PTC ThingWorx Building elastic analytics IoT data volumes increase quickly. Analytics for IoT is particularly compute intensive at times that are difficult to predict. Business value is uncertain and requires a lot of experimentation to find the right implementation. Combine all that together and you need something that scales quickly, is dynamic and responsive to resource needs, and virtually unlimited capacity at just the right time. And all of that needs to be implemented quickly with a low cost and low maintenance needs. Enter the cloud. IoT Analytics and cloud infrastructure fit together like a hand in a glove. What is the cloud infrastructure? The National Institute of Standards and Technology defines five essential characteristics: On-demand self-service: You can provision things like servers and storage as needed and without interacting with someone. Broad network access: Your cloud resources are accessible over the internet (if enabled) by various methods such as web browser or mobile phone. Resource pooling: Cloud providers pool their servers and storage capacity across many customers using a multi-tenant model. Resources, both physical and virtual, are dynamically assigned and reassigned as needed. Specific location of resources is unknown and generally unimportant. Rapid elasticity: Your resources can be elastically created and destroyed. This can happen automatically as needed to meet demand. You can scale outward rapidly. You can also contract rapidly. Supply of resources is effectively unlimited from your viewpoint. Measured service: Resource usage is monitored, controlled, and reported by the cloud provider. You have access to the same information, providing transparency to your utilization. Cloud systems continuously optimize resources automatically. There is a notion of private clouds that exist on premises or custom built by a third party for a specific organization. For our concerns, we will be discussing public clouds only. By and large, most analytics will be done on public clouds so we will concentrate our efforts there. The capacity available at your fingertips on public clouds is staggering. AWS, as of June 2016, has an estimated 1.3 million servers online. These servers are thought to be three times more efficient than enterprise systems. Cloud providers own the hardware and maintain the network and systems required for the available services. You just have to provision what you need to use, typically through a web application. Providers offer different levels of abstractions. They offer lower level servers and storage where you have fine grained control. They also offer managed services that handle the provisioning of servers, networking, and storage for you. These are used in conjunction with each other without much distinction between the two. Hardware failures are handled automatically. Resources are transferred to new hardware and brought back online. The physical components become unimportant when you design for the cloud, it is abstracted away and you can focus on resource needs. The advantages to using the cloud: Speed: You can bring cloud resources online in minutes. Agility: The ability to quickly create and destroy resources leads to ease of experimentation. This increases the agility of analytics organizations. Variety of services: Cloud providers have many services available to support analytics workflows that can be deployed in minutes. These services manage hardware and storage needs for you. Global reach: You can extend the reach of analytics to the other side of the world with a few clicks. Cost control: You only pay for the resources you need at the time you need them. You can do more for less. To get an idea of the power that is at your fingertips, here is an architectural diagram of something NASA built on AWS as part of an outreach program to school children. Source: Amazon Web Services; https://aws.amazon.com/lex/ By speaking voice commands, it will communicate with a Mars Rover replica to retrieve IoT data such as temperature readings. The process includes voice recognition, natural speech generation from text, data storage and processing, interaction with IoT device, networking, security, and ability to send text messages. This was not a years worth of development effort, it was built by tying together cloud based services already in place. And it is not just for big, funded government agencies like NASA. All of these services and many more are available to you today if your analytics runs in the cloud. Elastic analytics concepts What do we mean by Elastic Analytics? Let’s define it as designing your analytics processes so scale is not a concern. You want your focus to be on the analytics and not on the underlying technology. You want to avoid constraining your analytics capability so it will fit within some set hardware limitations. Focus instead on potential value versus costs. Trade hardware constraints for cost constraints. You also want your analytics to be able to scale. It should go from supporting 100 IoT devices to 1 Million IoT devices without requiring any fundamental changes. All that should happen if the costs increase. This reduces complexity and increases maintainability. That translates into lower costs which enables you to do more analytics. More analytics increases the probability of finding value. Finding more value enables even more analytics. Virtuous circle! Some core Elastic Analytics concepts: Separate compute from storage: We are used to thinking about resources like laptop specifications. You buy one device that has 16GB memory and 500GB hard drive because you think that will meet 90% of your needs and it is the top of your budget. Cloud infrastructure abstracts that away. Doing analytics in the cloud is like renting a magic laptop where you can change 4GB memory into 16GB by snapping your fingers. Your rental bill increases for only the time you have it at 16GB. You snap your fingers again and drop it back down to 4GB to save some money. Your hard drive can grow and shrink independently of the memory specification. You are not stuck having to choose a good balance between them. You can match compute needs with requirements. Build for scale from the start: Use software, services, and programming code that can scale from 1 to 1 million without changes. Each analytic process you put in production has continuing maintenance efforts to it that will build up over time as you add more and more. Make it easy on yourself later on. You do not want to have to stop what you are doing to re-architect a process you built a year ago because it hit limits of scale. Make your bottleneck wetware not hardware: By wetware, we mean brain power. “My laptop doesn’t have enough memory to run the job” should never be the problem. It should always be “I haven’t figured it out yet, but I have several possibilities in test as we speak.” Manage to a spend budget not to available hardware: Use as many cloud resources as you need as long as it fits within your spend budget. There is no need to limit analytics to fit within a set number of servers when you run analytics in the cloud. Traditional enterprise architecture purchases hardware ahead of time which incurs a capital expense. Your finance guy does not (usually) like capital expense. You should not like it either, as it means a ceiling has just been set on what you can do (at least in the near term). Managing to spend means keeping an eye on costs, not on resource limitations. Expand when needed and make sure to contract quickly to keep costs down. Experiment, experiment, experiment: Create resources, try things out, kill them off if it does not work. Then try something else. Iterate to the right answer. Scale out resources to run experiments. Stretch when you need to. Bring it back down when you are done. If Elastic Analytics is done correctly, you will find your biggest limitations are Time and Wetware. Not hardware and capital. Design with the endgame in mind Consider how the analytics you develop in the cloud would end up if successful. Would it turn into a regularly updated dashboard? Would it be something deployed to run under certain conditions to predict customer behavior? Would it periodically run against a new set of data and send an alert if an anomaly is detected? When you list out the likely outcomes, think about how easy it would be to transition from the analytics in development to the production version that will be embedded in your standard processes. Choose tools and analytics that make that transition quick and easy. Designing for scale Following some key concepts will help keep changes to your analytics processes to a minimum, as your needs scale. Decouple key components Decoupling means separating functional groups into components so they are not dependent upon each other to operate. This allows functionality to change or new functionality to be added with minimal impact on other components. Encapsulate analytics Encapsulate means grouping together similar functions and activity into distinct units. It is a core principle of object oriented programming and you should employ it in analytics as well. The goal is to reduce complexity and simplify future changes. As your analytics develop, you will have a list of actions that is either transforming the data, running it through a model or algorithm, or reacting to the result. It can get complicated quickly. By encapsulating the analytics, it is easier to know where to make changes when needed down the road. You will also be able reconfigure parts of the process without affecting the other components. Encapsulation process is carried out in the following steps: Make a list of the steps. Organize them into groups. Think which groups are likely to change together. Separate the groups that are independent into their own process It is a good idea to have the data transformation steps separate from the analytical steps if possible. Sometimes the analysis is tightly tied to the data transformation and it does not make sense to separate, but in most cases it can be separated. The action steps based on the analysis results almost always should be separate. Each group of steps will also have its own resource needs. By encapsulating them and separating the processes, you can assign resources independently and scale more efficiently where you need it. You can do more with less. Decouple with message queues Decoupling encapsulated analytics processes with message queues has several advantages. It allows for change in any process without requiring the other ones to adjust. This is because there is no direct link between them. It also builds in some robustness in case one process has a failure. The queue can continue to expand without losing data while the down process restarts and nothing will be lost after things get going again. What is a message queue? Simple diagram of a message queue New data comes into a queue as a message, it goes into line for delivery, and then is delivered to the end server when it gets its turn. The process adding a message is called the publisher and the process receiving the message is called the subscriber. The message queue exists regardless of if the publisher or subscriber is connected and online. This makes it robust against intermittent connections (intentional or unintentional). The subscriber does not have to wait until the publisher is willing to chat and vice versa. The size of the queue can also grow and shrink as needed. If the subscriber gets behind, the queue just grows to compensate until it can catch up. This can be useful if there is a sudden burst in messages by the publisher. The queue will act as a buffer and expand to capture the messages while the subscriber is working through the sudden influx. There is a limit, of course. If the queue reaches some set threshold, it will reject (and you will most likely lose) any incoming messages until the queue gets back under control. A contrived but real world example of how this can happen: Joe Cut-rate (the developer): Hey, when do you want this doo-hickey device to wake up and report? Jim Unawares (the engineer): Every 4 hours Joe Cut-rate: No sweat. I’ll program it to start at 12am UTC, then every 4 hours after. How many of these you gonna sell again? Jim Unawares: About 20 million Joe Cut-rate: Um….friggin awesome! I better hardcode that 12am UTC then, huh? 4 months later Jim Unawares: We’re only getting data from 10% of the devices. And it is never the same 10%. What the heck? Angela the analyst: Every device in the world reports at exactly the same time, first thing I checked. The message queues are filling up since our subscribers can’t process that fast, new messages are dropped. If you hard coded the report time, we’re going to have to get the checkbook out to buy a ton of bandwidth for the queues. And we need to do it NOW since we are losing 90% of the data every 4 hours. You guys didn’t do that, did you? Although queues in practice typically operate with little lag, make sure the origination time of the data is tracked and not just the time the data was pulled off the queue. It can be tempting to just capture the time the message was processed to save space but that can cause problems for your analytics. Why is this important for analytics? If you only have the date and time the message was received by the subscribing server, it may not be as close as you think to the time the message was generated at the originating device. If there are recurring problems with message queues, the spread in time difference would ebb and flow without you being aware of it. You will be using time values extensively in predictive modeling. If the time values are sometimes accurate and sometimes off, the models will have a harder time finding predictive value in your data. Your potential revenue from repurposing the data can also be affected. Customers are unlikely to pay for a service tracking event times for them if it is not always accurate. There is a simple solution. Make sure the time the device sends the data is tracked along with the time the data is received. You can monitor delivery times to diagnose issues and keep a close eye on information lag times. For example, if you notice the delivery time steadily increases just before you get a data loss, it is probably the message queue filling up. If there is no change in delivery time before a loss, it is unlikely to be the queue. Another benefit to using the cloud is (virtually) unlimited queue sizes when use a managed queue service. This makes the situation described much less likely to occur. Distributed computing Also called cluster computing, distributed computing refers to spreading processes across multiple servers using frameworks that abstract the coordination of each individual server. The frameworks make it appear as if you are using one unified system. Under the covers, it could be a few servers (called nodes) to thousands. The framework handles that orchestration for you. Avoid containing analytics to one server The advantage to this for IoT analytics is in scale. You can add resources by adding nodes to the cluster, no change to the analytics code is required. Try and avoid containing analytics to one server (with a few exceptions). This puts a ceiling on scale. When to use distributed and when to use one server There is a complexity cost to distributed computing though. It is not as simple as single server analytics. Even though the frameworks handle a lot of the complexity for you, you still have to think and design your analytics to work across multiple nodes. Some guidelines on when to keep it simple on one server: There is not much need for scale: Your analytics needs little change even if the number of IoT devices and data explodes. For example, the analytics runs a forecast on data already summarized by month. The volume of devices makes little difference in that case. Small data instead of big data: The analytics runs on a small subset of data without much impact from data size. Analytics on random samples is an example. Resource needs are minimal: Even at orders of magnitude more data, you are unlikely to need more than what is available with a standard server. In that case, keep it simple. Assuming change is constant The world of IoT analytics moves quickly. The analytics you create today will change many times over as you get feedback on results and adapt to changing business conditions. Your analytics processes will need to change. Assume this will happen continuously and design for change. That brings us to the concept of continuous delivery. Continuous delivery is a concept from software development. It automates the release of code into production. The idea is to make change a regular process. Bring this concept into your analytics by keeping a set of simultaneous copies that you use to progress through three stages: Development: Keep a copy of your analytics for improving and trying out new things. Test: When ready, merge your improvements into this copy where the functionality stays the same but it is repeatedly tested. The testing ensures it is working as intended. Keeping a separate copy for test allows development to continue on other functionality. Master: This is the copy that goes into production. When you merge things from test to the Master copy, it is the same as putting it into live use. Cloud providers often have a continuous delivery service that can make this process simpler. For any software developer readers out there, this is a simplification of the Git Flow method, which is a little outside the scope of this article. If the author can drop a suggestion, it is worth some additional research to learn Git Flow and apply it to your analytics development in the cloud. Leverage managed services Cloud infrastructure providers, like AWS and Microsoft Azure, offer services for things like message queues, big data storage, and machine learning processing. The services handle the underlying resource needs like server and storage provisioning and also network requirements. You do not have to worry about how this happens under the hood and it scales as big as you need it. They also manage global distribution of services to ensure low latency. The following image shows the AWS regional data center locations combined with the underwater internet cabling. AWS Regional Data Center Locations and Underwater Internet Cables. Source: http://turnkeylinux.github.io/aws-datacenters/ This reduces the amount of things you have to worry about for analytics. It allows you to focus more on the business application and less on the technology. That is a good thing and you should take advantage of it. An example of a managed service is Amazon Simple Queue Service (SQS). SQS is a message queue where the underlying server, storage, and compute needs is managed automatically by AWS systems. You only need to setup and configure it which takes just a few minutes. Summary In this article, we reviewed what is meant by elastic analytics and the advantages to using cloud infrastructure for IoT analytics. Designing for scale was discussed along with distributed computing. The two main cloud providers were introduced, Amazon Web Services and Microsoft Azure. We also reviewed a purpose built software platform, ThingWorx, made for IoT devices, communications, and analysis. Resources for Article:  Further resources on this subject: Building Voice Technology on IoT Projects [article] IoT and Decision Science [article] Introducing IoT with Particle's Photon and Electron [article]
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Packt
05 Apr 2017
14 min read
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Conditional Statements, Functions, and Lists

Packt
05 Apr 2017
14 min read
In this article, by Sai Yamanoor and Srihari Yamanoor, author of the book Python Programming with Raspberry Pi Zero, you will learn about conditional statements and how to make use of logical operators to check conditions using conditional statements. Next, youwill learn to write simple functions in Python and discuss interfacing inputs to the Raspberry Pi's GPIO header using a tactile switch (momentary push button). We will also discuss motor control (this is a run-up to the final project) using the Raspberry Pi Zero and control the motors using the switch inputs. Let's get to it! In this article, we will discuss the following topics: Conditional statements in Python Using conditional inputs to take actions based on GPIO pin states Breaking out of loops using conditional statement Functions in Python GPIO callback functions Motor control in Python (For more resources related to this topic, see here.) Conditional statements In Python, conditional statements are used to determine if a specific condition is met by testing whether a condition is True or False. Conditional statements are used to determine how a program is executed. For example,conditional statements could be used to determine whether it is time to turn on the lights. The syntax is as follows: if condition_is_true: do_something() The condition is usually tested using a logical operator, and the set of tasks under the indented block is executed. Let's consider the example,check_address_if_statement.py where the user input to a program needs to be verified using a yesor no question: check_address = input("Is your address correct(yes/no)? ") if check_address == "yes": print("Thanks. Your address has been saved") if check_address == "no": del(address) print("Your address has been deleted. Try again")check_address = input("Is your address correct(yes/no)? ") In this example, the program expects a yes or no input. If the user provides the input yes, the condition if check_address == "yes"is true, the message Your address has been savedis printed on the screen. Likewise, if the user input is no, the program executes the indented code block under the logical test condition if check_address == "no" and deletes the variable address. An if-else statement In the precedingexample, we used an ifstatement to test each condition. In Python, there is an alternative option named the if-else statement. The if-else statement enables testing an alternative condition if the main condition is not true: check_address = input("Is your address correct(yes/no)? ") if check_address == "yes": print("Thanks. Your address has been saved") else: del(address) print("Your address has been deleted. Try again") In this example, if the user input is yes, the indented code block under if is executed. Otherwise, the code block under else is executed. An if-elif-else statement In the precedingexample, the program executes any piece of code under the else block for any user input other than yesthat is if the user pressed the return key without providing any input or provided random characters instead of no, the if-elif-else statement works as follows: check_address = input("Is your address correct(yes/no)? ") if check_address == "yes": print("Thanks. Your address has been saved") elifcheck_address == "no": del(address) print("Your address has been deleted. Try again") else: print("Invalid input. Try again") If the user input is yes, the indented code block under the ifstatement is executed. If the user input is no, the indented code block under elif (else-if) is executed. If the user input is something else, the program prints the message: Invalid input. Try again. It is important to note that the code block indentation determines the block of code that needs to be executed when a specific condition is met. We recommend modifying the indentation of the conditional statement block and find out what happens to the program execution. This will help understand the importance of indentation in python. In the three examples that we discussed so far, it could be noted that an if-statement does not need to be complemented by an else statement. The else and elif statements need to have a preceding if statement or the program execution would result in an error. Breaking out of loops Conditional statements can be used to break out of a loop execution (for loop and while loop). When a specific condition is met, an if statement can be used to break out of a loop: i = 0 while True: print("The value of i is ", i) i += 1 if i > 100: break In the precedingexample, the while loop is executed in an infinite loop. The value of i is incremented and printed onthe screen. The program breaks out of the while loop when the value of i is greater than 100 and the value of i is printed from 1 to 100. The applications of conditional statements: executing tasks using GPIO Let's discuss an example where a simple push button is pressed. A button press is detected by reading the GPIO pin state. We are going to make use of conditional statements to execute a task based on the GPIO pin state. Let us connect a button to the Raspberry Pi's GPIO. All you need to get started are a button, pull-up resistor, and a few jumper wires. The figure given latershows an illustration on connecting the push button to the Raspberry Pi Zero. One of the push button's terminals is connected to the ground pin of the Raspberry Pi Zero's GPIO pin. The schematic of the button's interface is shown here: Raspberry Pi GPIO schematic The other terminal of the push button is pulled up to 3.3V using a 10K resistor.The junction of the push button terminal and the 10K resistor is connected to the GPIO pin 2. Interfacing the push button to the Raspberry Pi Zero's GPIO—an image generated using Fritzing Let's review the code required to review the button state. We make use of loops and conditional statements to read the button inputs using the Raspberry Pi Zero. We will be making use of the gpiozero. For now, let’s briefly discuss the concept of classes for this example. A class in Python is a blueprint that contains all the attributes that define an object. For example, the Button class of the gpiozero library contains all attributes required to interface a button to the Raspberry Pi Zero’s GPIO interface.These attributes include button states and functions required to check the button states and so on. In order to interface a button and read its states, we need to make use of this blueprint. The process of creating a copy of this blueprint is called instantiation. Let's get started with importing the gpiozero library and instantiate the Button class of the gpiozero. The button is interfaced to GPIO pin 2. We need to pass the pin number as an argument during instantiation: from gpiozero import Button #button is interfaced to GPIO 2 button = Button(2) The gpiozero library's documentation is available athttp://gpiozero.readthedocs.io/en/v1.2.0/api_input.html.According to the documentation, there is a variable named is_pressed in the Button class that could be tested using a conditional statement to determine if the button is pressed: if button.is_pressed: print("Button pressed") Whenever the button is pressed, the message Button pressed is printed on the screen. Let's stick this code snippet inside an infinite loop: from gpiozero import Button #button is interfaced to GPIO 2 button = Button(2) while True: if button.is_pressed: print("Button pressed") In an infinite while loop, the program constantly checks for a button press and prints the message as long as the button is being pressed. Once the button is released, it goes back to checking whether the button is pressed. Breaking out a loop by counting button presses Let's review another example where we would like to count the number of button presses and break out of the infinite loop when the button has received a predetermined number of presses: i = 0 while True: if button.is_pressed: button.wait_for_release() i += 1 print("Button pressed") if i >= 10: break In this example, the program checks for the state of the is_pressed variable. On receiving a button press, the program can be paused until the button is released using the method wait_for_release.When the button is released, the variable used to store the number of presses is incremented by 1. The program breaks out of the infinite loop, when the button has received 10 presses. A red momentary push button interfaced to Raspberry Pi Zero GPIO pin 2 Functions in Python We briefly discussed functions in Python. Functions execute a predefined set of task. print is one example of a function in Python. It enables printing something to the screen. Let's discuss writing our own functions in Python. A function can be declared in Python using the def keyword. A function could be defined as follows: defmy_func(): print("This is a simple function") In this function my_func, the print statement is written under an indented code block. Any block of code that is indented under the function definition is executed when the function is called during the code execution. The function could be executed as my_func(). Passing arguments to a function: A function is always defined with parentheses. The parentheses are used to pass any requisite arguments to a function. Arguments are parameters required to execute a function. In the earlierexample, there are no arguments passed to the function. Let's review an example where we pass an argument to a function: defadd_function(a, b): c = a + b print("The sum of a and b is ", c) In this example, a and b are arguments to the function. The function adds a and b and prints the sum onthe screen. When the function add_function is called by passing the arguments 3 and 2 as add_function(3,2) where a=3 and b=2, respectively. Hence, the arguments a and b are required to execute function, or calling the function without the arguments would result in an error. Errors related to missing arguments could be avoided by setting default values to the arguments: defadd_function(a=0, b=0): c = a + b print("The sum of a and b is ", c) The preceding function expects two arguments. If we pass only one argument to thisfunction, the other defaults to zero. For example,add_function(a=3), b defaults to 0, or add_function(b=2), a defaults to 0. When an argument is not furnished while calling a function, it defaults to zero (declared in the function). Similarly,the print function prints any variable passed as an argument. If the print function is called without any arguments, a blank line is printed. Returning values from a function Functions can perform a set of defined operations and finally return a value at the end. Let's consider the following example: def square(a): return a**2 In this example, the function returns a square of the argument. In Python, the return keyword is used to return a value requested upon completion of execution. The scope of variables in a function There are two types of variables in a Python program:local and global variables. Local variables are local to a function,that is, it is a variable declared within a function is accessible within that function.Theexample is as follows: defadd_function(): a = 3 b = 2 c = a + b print("The sum of a and b is ", c) In this example, the variables a and b are local to the function add_function. Let's consider an example of a global variable: a = 3 b = 2 defadd_function(): c = a + b print("The sum of a and b is ", c) add_function() In this case, the variables a and b are declared in the main body of the Python script. They are accessible across the entire program. Now, let's consider this example: a = 3 defmy_function(): a = 5 print("The value of a is ", a) my_function() print("The value of a is ", a) In this case, when my_function is called, the value of a is5 and the value of a is 3 in the print statement of the main body of the script. In Python, it is not possible to explicitly modify the value of global variables inside functions. In order to modify the value of a global variable, we need to make use of the global keyword: a = 3 defmy_function(): global a a = 5 print("The value of a is ", a) my_function() print("The value of a is ", a) In general, it is not recommended to modify variables inside functions as it is not a very safe practice of modifying variables. The best practice would be passing variables as arguments and returning the modified value. Consider the following example: a = 3 defmy_function(a): a = 5 print("The value of a is ", a) return a a = my_function(a) print("The value of a is ", a) In the preceding program, the value of a is 3. It is passed as an argument to my_function. The function returns 5, which is saved to a. We were able to safely modify the value of a. GPIO callback functions Let's review some uses of functions with the GPIO example. Functions can be used in order tohandle specific events related to the GPIO pins of the Raspberry Pi. For example,the gpiozero library provides the capability of calling a function either when a button is pressed or released: from gpiozero import Button defbutton_pressed(): print("button pressed") defbutton_released(): print("button released") #button is interfaced to GPIO 2 button = Button(2) button.when_pressed = button_pressed button.when_released = button_released while True: pass In this example, we make use of the attributeswhen_pressed and when_releasedof the library's GPIO class. When the button is pressed, the function button_pressed is executed. Likewise, when the button is released, the function button_released is executed. We make use of the while loop to avoid exiting the program and keep listening for button events. The pass keyword is used to avoid an error and nothing happens when a pass keyword is executed. This capability of being able to execute different functions for different events is useful in applications like Home Automation. For example, it could be used to turn on lights when it is dark and vice versa. DC motor control in Python In this section, we will discuss motor control using the Raspberry Pi Zero. Why discuss motor control? In order to control a motor, we need an H Bridge motor driver (Discussing H bridge is beyond our scope. There are several resources for H bridge motor drivers: http://www.mcmanis.com/chuck/robotics/tutorial/h-bridge/). There are several motor driver kits designed for the Raspberry Pi. In this section, we will make use of the following kit: https://www.pololu.com/product/2753. The Pololu product page also provides instructions on how to connect the motor. Let's get to writing some Python code tooperate the motor: from gpiozero import Motor from gpiozero import OutputDevice import time motor_1_direction = OutputDevice(13) motor_2_direction = OutputDevice(12) motor = Motor(5, 6) motor_1_direction.on() motor_2_direction.on() motor.forward() time.sleep(10) motor.stop() motor_1_direction.off() motor_2_direction.off() Raspberry Pi based motor control In order to control the motor, let's declare the pins, the motor's speed pins and direction pins. As per the motor driver's documentation, the motors are controlled by GPIO pins 12,13 and 5,6, respectively. from gpiozero import Motor from gpiozero import OutputDevice import time motor_1_direction = OutputDevice(13) motor_2_direction = OutputDevice(12) motor = Motor(5, 6) Controlling the motor is as simple as turning on the motor using the on() method and moving the motor in the forward direction using the forward() method: motor.forward() Similarly, reversing the motor direction could be done by calling the method reverse(). Stopping the motor could be done by: motor.stop() Some mini-project challenges for the reader: In this article, we discussed interfacing inputs for the Raspberry Pi and controlling motors. Think about a project where we could drive a mobile robot that reads inputs from whisker switches and operate a mobile robot. Is it possible to build a wall following robot in combination with the limit switches and motors? We discussed controlling a DC motor in this article. How do we control a stepper motor using a Raspberry Pi? How can we interface a motion sensor to control the lights at home using a Raspberry Pi Zero. Summary In this article, we discussed conditional statements and the applications of conditional statements in Python. We also discussed functions in Python, passing arguments to a function, returning values from a function and scope of variables in a Python program. We discussed callback functions and motor control in Python. Resources for Article: Further resources on this subject: Sending Notifications using Raspberry Pi Zero [article] Raspberry Pi Gaming Operating Systems [article] Raspberry Pi LED Blueprints [article]
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