DocumentCode
3020975
Title
An information theoretic approach to dynamical systems modeling and identification
Author
Baram, Y. ; Sandell, N.R.
Author_Institution
The Analytic Sciences Corporation, Reading, Massachusetts
fYear
1977
fDate
7-9 Dec. 1977
Firstpage
1113
Lastpage
1118
Abstract
The identification and modeling of dynamical systems in a practical situation, where the model set under consideration does not necessarily include the observed system, are treated. A measure of the relevant information in a sequence of observations is shown to possess useful properties, such as the metric property on the parameter set. It is then shown that maximum likelihood and related Bayesian identification procedures converge to a model in the model set, which is closest to the actual system generating the observations in the information distance measure. The convergence analysis is restricted for simplicity to finite sets of models. The analysis naturally suggests methods for approximating a high-order system by a low-order model and for selecting a representative model from a given model set, applicable to infinite and even noncompact model sets.
Keywords
Bayesian methods; Jacobian matrices; Laboratories; Least squares approximation; Linear systems; Maximum likelihood estimation; Modeling;
fLanguage
English
Publisher
ieee
Conference_Titel
Decision and Control including the 16th Symposium on Adaptive Processes and A Special Symposium on Fuzzy Set Theory and Applications, 1977 IEEE Conference on
Conference_Location
New Orleans, LA, USA
Type
conf
DOI
10.1109/CDC.1977.271737
Filename
4046007
Link To Document