# Import curve_fit is returning no errors but wrong values

I have to fit a curve with some data. Here is my code :

``````#!/usr/bin/python

import numpy
import sys
import scipy
import pylab

from scipy.optimize import curve_fit

from lib_co2 import make_sigco2 # lib_co2 is a function created by us,
# it works fine

mesure = float(sys.argv[1]) # User must tell us which mesure he wants (66 max)

sav = readsav('Orb0017A01_trans_v1.bin') # The data is saved in sav
Trans = sav.transmis[mesure, :, 2] # Transmitance, our y value
Lambda = sav.Lambda #Wavelength, our x value

def func(Lambda, logN) : # Our user defined function,
# LogN is the number we can modify to fit the curve.
return numpy.exp(-numpy.exp(logN) * make_sigco2(Lambda))
# our function, we are looking for the logarytme
# because the value of N is very big.

coeff, cov = curve_fit(func, Lambda, Trans) # We save the value of logN in
# coeff and it's error in cov
Trans_aj = func(Lambda,coeff[0]) # Fited curve
print(coeff)
print(cov)

pylab.plot(Lambda,Trans)
pylab.plot(Lambda,Trans_aj)
pylab.axis([100, 350, 0, 1.1])
pylab.ylabel("Transmitance")
pylab.xlabel("Wavelength")
pylab.show()
``````

This is what i get in the terminal :

``````user@computer:~/Python_\$ ./Opti.py 15
[ 1.]
inf
``````

The values are wrong, the curve does not fit at all.

I dont know where lies my problem, if anyone has any ideas they would be welcome.

Anthony

-
could you a) fix the indentation, and b) provide a self-contained example? –  Zhenya Nov 4 '12 at 17:35
Optimizing (finding a good solution) a general function is impossible. The function must have certain properties in order for the optimization to work properly, such as being convex. Is func() convex? –  Bitwise Nov 6 '12 at 23:26