# Calculating transfer function coefficients

I have derived the transfer function of a combination of spring mass system in `s` domain and it is of the form

``````G = (as*s + bs +c) / (ps + q)
``````

I have the measured data which relates with displacement as input and force as output and i know the frequency and sampling rate.

How can I compute the values of the constants `a,b,c,p and q` using MATLAB?

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Are you sure that is your system model? The model you have derived is non-causal, which means it can't physically exist. Assuming you derive a causal model (e.g. 1/G), you can use MATLAB System Identification UI. The easiest method is to estimate a process model, you can start from there. –  HebeleHododo Nov 19 '12 at 21:20
By the way non-causal system means; the output of the system is dependent on the future inputs. Thus making it impossible to exist in practice. –  HebeleHododo Nov 19 '12 at 21:22
Thanks a lot for the reply. Think i need to dig into the System Identification toolbox. One last question regarding causality. Do you say it is non-causal because the number of zeros are more than poles? Is it never be possible to study such system.By the way I derived it from a spring damper combination. Thank you again –  sat0408 Nov 19 '12 at 22:20
Yes, if the system's number of zeros is greater than its number of poles the system would be non-causal. I couldn't say it would never be possible, I have no idea what the academia is doing about that. But I can easily say that if you are modelling a system that actually exists or can exist, it should be causal. –  HebeleHododo Nov 19 '12 at 22:35

You haven't provided enough information to give a complete answer (*), but it sounds like you are going to do some kind of least-squares curve fitting. `fminsearch` will work for that, but there are better choices. I tend to use `nlinfit` from the statistics toolbox, but there is also `lsqcurvefit` from the optimization toolbox and `fit` from the curve fitting toolbox.
I know nothing about `tfestimate`, so I'd recommend opening a new question if you have a specific question about that. But it sounds like your real question is about how to approach the problem of data analysis for this particular experiment. That really isn't on-topic for stackoverflow, so I'd recommend asking for help elsewhere (professor/ta is this is for a class, colleague if this is for work, etc.). Good luck! –  Dan Becker Nov 19 '12 at 18:41
Yes this can be done using `fminsearch`. For more information read the function documentation