DocumentCode
801042
Title
Control of unknown plants in reduced state space
Author
Nikiforuk, Peter N. ; Gupta, Madan M. ; Choe, Ho H.
Author_Institution
University of Saskatchewan, Saskatoon, Canada
Volume
14
Issue
5
fYear
1969
fDate
10/1/1969 12:00:00 AM
Firstpage
489
Lastpage
496
Abstract
A method is proposed in this paper for the synthesis of an adaptive controller for a class of model reference systems in which the plant is not known exactly, but which is of the following type: single variable, time varying, either linear or nonlinear, of
th order, and capable of
th order input differentiation. The model is linear, stable, and of
\´th order, where
. The only knowledge of the plant that is required in this synthesis procedure is the form of the plant equation and the bounds of
, the coefficient of the
th order plant input derivative. The synthesis procedure makes use of an unique function, called the characteristic variable, and Lyapunov type synthesis. The introduction of the characteristic variable reduces the synthesis problem to one that involves a known, linear time-invariant lower order plant. The control signal is generated by measuring the plant and model outputs, and their first
derivative signals. This ensures that the norm of the
dimensional error vector is ultimately bounded by ε, an arbitrarily small positive number provided
, the characteristic variable, is bounded. Two nontrivial simulation examples are included.
th order, and capable of
th order input differentiation. The model is linear, stable, and of
\´th order, where
. The only knowledge of the plant that is required in this synthesis procedure is the form of the plant equation and the bounds of
, the coefficient of the
th order plant input derivative. The synthesis procedure makes use of an unique function, called the characteristic variable, and Lyapunov type synthesis. The introduction of the characteristic variable reduces the synthesis problem to one that involves a known, linear time-invariant lower order plant. The control signal is generated by measuring the plant and model outputs, and their first
derivative signals. This ensures that the norm of the
dimensional error vector is ultimately bounded by ε, an arbitrarily small positive number provided
, the characteristic variable, is bounded. Two nontrivial simulation examples are included.Keywords
Adaptive control; Lyapunov methods; Adaptive control; Control system synthesis; Equations; Nonlinear control systems; Programmable control; Signal generators; Signal synthesis; State-space methods; Time varying systems; Vectors;
fLanguage
English
Journal_Title
Automatic Control, IEEE Transactions on
Publisher
ieee
ISSN
0018-9286
Type
jour
DOI
10.1109/TAC.1969.1099247
Filename
1099247
Link To Document