Using System Identification Toolbox More Effectively
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Hello,
Let's say I have a system that its output is noisy enough to ident in system identification toolbox.
In this case is it okey to log data after using low pass filter? Because when we use low pass there will be a little phase shift and it can effect the transfer function of the system. This situation concerns me.
Are there any ways to use this noisy or filtered data in system identification toolbox get best estimated transfer function?
Any help will be appreciated.
Thanks.
Accepted Answer
More Answers (1)
Rajiv Singh
on 9 Aug 2022
1 vote
If you have input and output signals separately, you will need to filter both identically, so that in the resulting transfer function, the filter dynamics "cancel out". The net effect of prefiltering the data is to impose a frequency-weighting of the fitting errors. The frequencies where the filter frequency response has lower magnitude are given less importance (smaller weighhting).
1 Comment
Eymen Kosar
on 11 Aug 2022
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