plotting a parabola within part of a repeating signal using numpy

爷,独闯天下 提交于 2019-12-06 10:49:23

So, as I understand it, you have 3 points that you want to fit a parabola to.

Normally, it's simplest to just use numpy.polyfit, but if you're really worried about speed, and you're fitting exactly three points, there's no point in using a least-squares fit.

Instead, we have an even-determined system (fitting a parabola to 3 x,y points), and we can get an exact solution with simple linear algebra.

So, all in all, you might do something like this (most of this is plotting the data):

import numpy as np                                                                              
import matplotlib.pyplot as plt                                                                 

def main():
    # Generate some random data
    x = np.linspace(0, 10, 100)
    y = np.cumsum(np.random.random(100) - 0.5)

    # Just selecting these arbitrarly 
    left_idx, right_idx = 20, 50      
    # Using the mininum y-value within the arbitrary range
    min_idx = np.argmin(y[left_idx:right_idx]) + left_idx 

    # Replace the data within the range with a fitted parabola
    new_y = replace_data(x, y, left_idx, right_idx, min_idx)  

    # Plot the data
    fig = plt.figure()
    indicies = [left_idx, min_idx, right_idx]

    ax1 = fig.add_subplot(2, 1, 1)
    ax1.axvspan(x[left_idx], x[right_idx], facecolor='red', alpha=0.5)
    ax1.plot(x, y)                                                    
    ax1.plot(x[indicies], y[indicies], 'ro')                          

    ax2 = fig.add_subplot(2, 1, 2)
    ax2.axvspan(x[left_idx], x[right_idx], facecolor='red', alpha=0.5)
    ax2.plot(x,new_y)                                                 
    ax2.plot(x[indicies], y[indicies], 'ro')

    plt.show()

def fit_parabola(x, y):
    """Fits the equation "y = ax^2 + bx + c" given exactly 3 points as two
    lists or arrays of x & y coordinates"""
    A = np.zeros((3,3), dtype=np.float)
    A[:,0] = x**2
    A[:,1] = x
    A[:,2] = 1
    a, b, c = np.linalg.solve(A, y)
    return a, b, c

def replace_data(x, y, left_idx, right_idx, min_idx):
    """Replace the section of "y" between the indicies "left_idx" and
    "right_idx" with a parabola fitted to the three x,y points represented
    by "left_idx", "min_idx", and "right_idx"."""
    x_fit = x[[left_idx, min_idx, right_idx]]
    y_fit = y[[left_idx, min_idx, right_idx]]
    a, b, c = fit_parabola(x_fit, y_fit)

    new_x = x[left_idx:right_idx]
    new_y = a * new_x**2 + b * new_x + c

    y = y.copy() # Remove this if you want to modify y in-place
    y[left_idx:right_idx] = new_y
    return y

if __name__ == '__main__':
    main()

Hope that helps a bit...

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