I am a bit confused about convolutions in python. I tried to define this function:
from scipy import signal
import numpy as np
import matplotlib.pyplot as plt
def f(x,A,t,mu,sigma):
y1 = A*np.exp(-x/t)
y2 = A*np.exp(-0.5*(x-mu)**2/sigma**2)
return signal.convolve(y1,y2)/ sum(y2)
x = np.arange(-10,10,0.01)
x has dimension 2000, but f(x) seems to have size 3999 and I am not sure to what values of x this corresponds. In principle I want to fit this function (a convolution of a gaussian and exponential) like this:
from scipy.optimize import curve_fit
popt, pcov = curve_fit(f, x_data, y_data)
but I am kinda stuck, as I am not even sure on how to call the fitted values (assuming this would work), given that f(x_data) will be bigger than x_data. Can someone help me a bit here? Thank you!