DocumentCode
3843610
Title
Identification and the Information Matrix: How to Get Just Sufficiently Rich?
Author
Michel Gevers;Alexandre Sanfelice Bazanella;Xavier Bombois;Ljubi?a Miskovic
Author_Institution
Center for Syst. Eng. & Appl. Mech. (CESAME), Univ. catholique de Louvain, Louvain-la-Neuve, Belgium
Volume
54
Issue
12
fYear
2009
Firstpage
2828
Lastpage
2840
Abstract
In prediction error identification, the information matrix plays a central role. Specifically, when the system is in the model set, the covariance matrix of the parameter estimates converges asymptotically, up to a scaling factor, to the inverse of the information matrix. The existence of a finite covariance matrix thus depends on the positive definiteness of the information matrix, and the rate of convergence of the parameter estimate depends on its ?size?. The information matrix is also the key tool in the solution of optimal experiment design procedures, which have become a focus of recent attention. Introducing a geometric framework, we provide a complete analysis, for arbitrary model structures, of the minimum degree of richness required to guarantee the nonsingularity of the information matrix. We then particularize these results to all commonly used model structures, both in open loop and in closed loop. In a closed-loop setup, our results provide an unexpected and precisely quantifiable trade-off between controller degree and required degree of external excitation.
Keywords
"Covariance matrix","Open loop systems","Parameter estimation","Information analysis","Robust control","Solid modeling","Educational programs","Systems engineering and theory","Control systems"
Journal_Title
IEEE Transactions on Automatic Control
Publisher
ieee
ISSN
0018-9286
Type
jour
DOI
10.1109/TAC.2009.2034199
Filename
5325719
Link To Document