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I have a signal generated by a simulation program. Because the solver in this program has a variable time step, I have a signal with unevenly spaced data. I have two lists, a list with the signal values, and another list with the times at which each value occurred. The data could be something like this

npts = 500
t=logspace(0,1,npts)
f1 = 0.5 
f2 = 0.6
sig=(1+sin(2*pi*f1*t))+(1+sin(2*pi*f2*t))

I would like to be able to perform a frequency analysis on this signal using python. It seems I cannot use the fft function in numpy, because this requires evenly spaced data. Are there any standard functions which could help me find the frequencies contained in this signal?

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up vote 4 down vote accepted

The most common algorithm to solve such things is called a Least-Squares Spectral analysis of frequencies. It looks like this will be in a future release of the scipy.signals package. Maybe there is a current version, but I can't seem to find it... In addition, there is some code available from Astropython, which I will not copy in it's entirety, but it essentially creates a lomb class which you can use the following code to get some values out.. What you need to do is the following:

import numpy
import lomb
x = numpy.arange(10)
y = numpy.sin(x)
fx,fy, nout, jmax, prob = lomb.fasper(x,y, 6., 6.)
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There do seem to be a couple of indenting problems in the lomb class, but otherwise it works just as I'd hoped! –  Katt Mar 9 '12 at 16:01
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