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NumPy Beginner's Guide

You're reading from   NumPy Beginner's Guide An action packed guide using real world examples of the easy to use, high performance, free open source NumPy mathematical library.

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Product type Paperback
Published in Apr 2013
Publisher Packt
ISBN-13 9781782166085
Length 310 pages
Edition 2nd Edition
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Author (1):
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Ivan Idris Ivan Idris
Author Profile Icon Ivan Idris
Ivan Idris
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Table of Contents (19) Chapters Close

Numpy Beginner's Guide Second Edition
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
1. NumPy Quick Start FREE CHAPTER 2. Beginning with NumPy Fundamentals 3. Get in Terms with Commonly Used Functions 4. Convenience Functions for Your Convenience 5. Working with Matrices and ufuncs 6. Move Further with NumPy Modules 7. Peeking into Special Routines 8. Assure Quality with Testing 9. Plotting with Matplotlib 10. When NumPy is Not Enough – SciPy and Beyond 11. Playing with Pygame Pop Quiz Answers Index

Time for action – fitting to a sine


In the Time for action – filtering a detrended signal section we created a simple filter for detrended data. Now let’s use a more restrictive filter that will leave us only with the main frequency component. We will fit a sinusoidal pattern to it and plot our results. This model has four parameters—amplitude, frequency, phase, and vertical offset. Perform the following steps to fit to a sine:

  1. Define a residuals function based on a sine wave model.

    def residuals(p, y, x):
        A,k,theta,b = p
        err = y-A * np.sin(2* np.pi* k * x + theta) + b
    
        return err
  2. Transform the filtered signal back to the original domain.

    filtered = -fftpack.irfft(fftpack.ifftshift(amps))
    
  3. Guess the values of the parameters for which we are trying to estimate a transformation from the time domain into the frequency domain.

    N = len(qqq)
    f = np.linspace(-N/2, N/2, N)
    p0 = [filtered.max(), f[amps.argmax()]/(2*N), 0, 0]
    print “P0”, p0

    The initial values would be shown as follows:

    P0 [2...
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