DocumentCode
834814
Title
Principal component analysis in linear systems: Controllability, observability, and model reduction
Author
Moore, Bruce C.
Author_Institution
University of Toronto, Toronto, Canada
Volume
26
Issue
1
fYear
1981
fDate
2/1/1981 12:00:00 AM
Firstpage
17
Lastpage
32
Abstract
Kalman\´s minimal realization theory involves geometric objects (controllable, unobservable subspaces) which are subject to structural instability. Specifically, arbitrarily small perturbations in a model may cause a change in the dimensions of the associated subspaces. This situation is manifested in computational difficulties which arise in attempts to apply textbook algorithms for computing a minimal realization. Structural instability associated with geometric theories is not unique to control; it arises in the theory of linear equations as well. In this setting, the computational problems have been studied for decades and excellent tools have been developed for coping with the situation. One of the main goals of this paper is to call attention to principal component analysis (Hotelling, 1933), and an algorithm (Golub and Reinsch, 1970) for computing the singular value decompositon of a matrix. Together they form a powerful tool for coping with structural instability in dynamic systems. As developed in this paper, principal component analysis is a technique for analyzing signals. (Singular value decomposition provides the computational machinery.) For this reason, Kalman\´s minimal realization theory is recast in terms of responses to injected signals. Application of the signal analysis to controllability and observability leads to a coordinate system in which the "internally balanced" model has special properties. For asymptotically stable systems, this yields working approximations of
, the controllable and unobservable subspaces. It is proposed that a natural first step in model reduction is to apply the mechanics of minimal realization using these working subspaces.
, the controllable and unobservable subspaces. It is proposed that a natural first step in model reduction is to apply the mechanics of minimal realization using these working subspaces.Keywords
Controllability, linear systems; Multivariable systems; Observability, linear systems; Reduced-order systems, linear; Controllability; Equations; Kalman filters; Linear systems; Matrix decomposition; Observability; Principal component analysis; Reduced order systems; Signal analysis; Singular value decomposition;
fLanguage
English
Journal_Title
Automatic Control, IEEE Transactions on
Publisher
ieee
ISSN
0018-9286
Type
jour
DOI
10.1109/TAC.1981.1102568
Filename
1102568
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