# scipy filter vs matlab filter

well, hello again. As i stated a few days ago i'm new at python and trying to shift from Matlab to it. I'm having some troubles with the filters when applied to time series. The problem is the polynomials for the transfer function are the same, but the filtering diverges between the programs...

So in summary lets suppose i have a time series vector (with float numbers in it) called: data

and i also have the polynomials: a , b corresponding to the numerator and denominator of the transfer function

the problem is when i apply @Matlab SOLM = filter(b,a,data)

and

@python SOLP = scipy.signal.lfilter(b,a,data)

SOLM is not equal to SOLP!!!

Is there a way to fix this? i want to use a and b as they are already defined because i want to reproduce the results i used to get from Matlab. (a short clue(?) is that they tend to filter the signals quite similar for the first values of the time series, but the intermediate and last values tend to be different on SOLP and SOLM)

Any ideas?

Thank you

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Just to be clear: are you saying that with exactly the same coefficients a and b, you get very different results in matlab and scipy? The results will be different due to normal floating point errors, but if the filter is stable, the results should look about the same if, say, you were to plot the filtered data. – Warren Weckesser Mar 1 '13 at 18:38
well, i checked and the filter was not stable, sorry this question should be deleted... for stable filters it was the same (as expected)... thanks for pointing the possible cause – user2100687 Mar 1 '13 at 19:29
the problem is when you copy the polynomials from matlab to python, they're not actually the real polynomials, so because the roots are not smaller than 1 (in absolute value), they are in fact unstable and of course the filter does not work as it should. You should use the polynomials created by python itself. Well, thank you again Warren Weckesser – user2100687 Mar 1 '13 at 20:47