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− | :<math> H(s) = \sum_{i=1}^{n}\frac{r_i}{s-p_i} = \sum_{i=1}^{n}\frac{r_i}{s-(\varepsilon a_i+jb_i)} |
+ | :<math> H(s,\varepsilon) = \sum_{i=1}^{n}\frac{r_i}{s-p_i} = \sum_{i=1}^{n}\frac{r_i}{s-(\varepsilon a_i+jb_i)} </math> |
− | we can |
+ | we can write down the state-space realisation <math> H(s,\varepsilon) = \widehat{C}\Big(sI-\varepsilon \widehat{A}_\varepsilon - \widehat{A}_0\Big)^{-1}\widehat{B}+D</math> with |
Revision as of 11:26, 29 November 2011
Introduction
On this page you will find a purely synthetic parametric model. The goal is to have a simple parametric model which one can use to experiment with different system orders, parameter values etc.
System description
The parameter scales the real part of the system poles, that is,
.
For a system in pole-residue form
we can write down the state-space realisation with
Notice that the system matrices have complex entries.
For simplicity, assume that is even,
, and that all system poles are complex and ordered in complex conjugate pairs, i.e.
which, for real systems, also implies that the residues form complex conjugate pairs
Then a realization with matrices having real entries is given by
with
and
.
Numerical values
The numerical values for the different variables are
equally spaced in
, with
and
.
equally spaced in
,
equally spaced in
,
.
In MATLAB this is easily done as follows
test