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Bounds in scipy curve_fit

I am trying to fit a two-component Gaussian fit:

mu0 = sum(velo_peak * spec_peak) / sum(spec_peak)
    sigma = np.sqrt(sum(spec_peak * (velo_peak - mu0)**2) / sum(spec_peak))
    
    def Gauss(velo_peak, a, mu0, sigma):
         res = a * np.exp(-(velo_peak - mu0)**2 / (2 * sigma**2))
         return res
    
    p0 = [max(spec_peak) - RMS, mu0, sigma]   # a = max(spec_peak)
    popt,pcov = curve_fit(Gauss, velo_peak, spec_peak, p0,maxfev=10000, bounds=((0, 0, +np.inf, +np.inf), (0, 0, +np.inf, +np.inf)))
    
    
    #____________________two component gaussian fit_______________________#
    
    def double_gaussian(velo_peak,a1, mu1, sigma1, a2, mu2, sigma2):
      
        res_two = a1 * np.exp(-(velo_peak - mu1)**2/(2 * sigma1**2))  \
                  + a2 * np.exp(-(velo_peak - mu2)**2/(2 * sigma2**2))
        return res_two
    
    ##_____________________Initial guess values__________________________##
    sigma1 = 0.7 * sigma
    sigma2 = 0.7 * sigma
    mu1 = mu0 + sigma  
    mu2 = mu0 - sigma
    a1 = 3        
    a2 = 1               
    guess = [a1, mu1, sigma1, a2, mu2, sigma2]
    popt_2,pcov_2 = curve_fit(double_gaussian, velo_peak, spec_peak, guess,maxfev=10000, bounds=((0, 0, +np.inf, +np.inf), (0, 0, +np.inf, +np.inf)))

But I am getting a negative part which I want to avoid but I don't know how to implement the bounds correctly as I didn't understand well the documentation. 在此处输入图像描述 I am getting an error of: ValueError: Inconsistent shapes between bounds and `x0`.

Can anyone guide me on how to use the bounds correctly?

It's expecting "2-tuple of array_like, optional" so that looks like:

((lower_bound0, lower_bound1, ..., lower_boundn), (upper_bound0, upper_bound1, ..., upper_boundn))

Seems to me if you want to avoid negative values then in the double gaussian you'd want to constrain a1 and a2 to be positive.

Following your guess :

[a1, mu1, sigma1, a2, mu2, sigma2]

That would be:

... bounds=[(0, -np.inf, -np.inf, 0, -np.inf, -np.inf), (np.inf, np.inf, np.inf, np.inf, np.inf, np.inf)], ...

Demo:

import matplotlib.pyplot as plt

def double_gaussian(velo_peak,a1, mu1, sigma1, a2, mu2, sigma2):

    res_two = a1 * np.exp(-(velo_peak - mu1)**2/(2 * sigma1**2))  \
              + a2 * np.exp(-(velo_peak - mu2)**2/(2 * sigma2**2))
    return res_two
x = np.linspace(0, 10, 1000)
y = double_gaussian(x, 1, 3, 1, 1, 7, 0.5) + 0.4*(np.random.random(x.shape) - 0.5)
popt, _ = curve_fit(double_gaussian, x, y, bounds=[(0, -np.inf, -np.inf, 0, -np.inf, -np.inf), (np.inf, np.inf, np.inf, np.inf, np.inf, np.inf)])
plt.plot(x, y)
plt.plot(x, double_gaussian(x, *popt))

在此处输入图像描述

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