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I am trying to do histogram matching of simulated data to observed precipitation data. The below shows a simple simulated case. I got the CDF of both the simulated and observed data and got stuck theree. I hope a clue would help me to get across..Thanks you in advance

import numpy as np
import matplotlib.pyplot as plt
from scipy.interpolate import interp1d
import scipy.stats as st


sim = st.gamma(1,loc=0,scale=0.8) # Simulated
obs = st.gamma(2,loc=0,scale=0.7) # Observed
x = np.linspace(0,4,1000)
simpdf = sim.pdf(x)
obspdf = obs.pdf(x)
plt.plot(x,simpdf,label='Simulated')
plt.plot(x,obspdf,'r--',label='Observed')
plt.title('PDF of Observed and Simulated Precipitation')
plt.legend(loc='best')
plt.show()

plt.figure(1)
simcdf = sim.cdf(x)
obscdf = obs.cdf(x)
plt.plot(x,simcdf,label='Simulated')
plt.plot(x,obscdf,'r--',label='Observed')
plt.title('CDF of Observed and Simulated Precipitation')
plt.legend(loc='best')
plt.show()

# Inverse CDF
invcdf = interp1d(obscdf,x)
transfer_func = invcdf(simcdf)

plt.figure(2)
plt.plot(transfer_func,x,'g-')
plt.show()
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What is your question? What are you trying to do that you can't? –  Ben Allison Jan 4 '13 at 16:23
    
@Ben, I am trying to the CDF matching/ histogram matching as shown in the image here.. s8.postimage.org/4txybzz8l/test.jpg. I am not able to inverse the CDF of the observed data which is next step. –  user1142937 Jan 4 '13 at 16:28
    
Looks like you need to interpolate the CDF for your required values of y, then plot it with the old values of x. –  tiago Jan 4 '13 at 16:40
    
@tiago, I would really appreciate if you could put the solution. –  user1142937 Jan 4 '13 at 18:41
    
@subash, what have you tried? I'm not going to write code for you. Your example code is mostly plots, and you don't seem to have tried anything to solve this problem. Asking for the code is just not what SO is about. –  tiago Jan 4 '13 at 23:27

1 Answer 1

up vote 1 down vote accepted

I tried to reproduce your code, and got the following error:

ValueError: A value in x_new is above the interpolation range.

If you look at the plot of your two CDFs it is pretty straight forward to figure out what is going on:

enter image description here

When you now define invcdf = interp1d(obscdf, x), notice that obscdf ranges from

>>> obscdf[0]
0.0
>>> obscdf[-1]
0.977852889924409

and so invcdf can only interpolate values between those limits: beyond them we would have to do extrapolation, which is not all that well defined. SciPy's default behavior is to raise an error when asked to extrapolate. Which is exactly what happens when you ask for invcdf(simcdf), because

>>> simcdf[-1]
0.99326205300091452

is beyond the interpolation range.

If you read the interp1d docs you will see that this behavior can be modified doing

invcdf = interp1d(obscdf, x, bounds_error=False)

and now everything works out fine, although you need to reverse the order of your plotting arguments to plt.plot(x, transfer_func,'g-') to get the same as in the figure you posted:

enter image description here

share|improve this answer
    
@Jaime.. Thank you.. I made the changes as suggested and could generate all the 4 plots as shown in the link i posted. I accepted your answer. –  user1142937 Jan 9 '13 at 7:52

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