DocumentCode :
826798
Title :
Stationary linear and nonlinear system identification and predictor set completeness
Author :
Caines, Peter E.
Author_Institution :
Harvard University, Cambridge, MA, USA
Volume :
23
Issue :
4
fYear :
1978
fDate :
8/1/1978 12:00:00 AM
Firstpage :
583
Lastpage :
594
Abstract :
A general consistency theorem for stationary nonlinear prediction error estimators is presented. Since this theorem does not require the existence of a parameterized system generating the observations, it applies to the practical problem of modeling complex systems with simple parameterized models. In order to measure the quality of fit between a set of observed processes and a given candidate set of predictors, the notion of predictor set completeness is introduced. Several examples are given to illustrate this idea; in particular, a negative result concerning the completehess of certain sets of linear predictors is presented. The relationship of Ljung´s definitions of identifiability to various notions of predictor set completeness is examined, and the strong consistency of maximum likelihood estimators for Gaussian autoregressive moving average systems is obtained via an application of our techniques. Finally, problems for future research are described.
Keywords :
Autoregressive moving-average processes; Linear systems, stochastic; Nonlinear systems, stochastic; Parameter identification; Prediction methods; Stochastic systems, linear; Stochastic systems, nonlinear; System identification; maximum-likelihood (ML) estimation; Autoregressive processes; Control systems; Erbium; Least squares approximation; Least squares methods; Nonlinear systems; Paper mills; Predictive models; State-space methods; Stochastic systems;
fLanguage :
English
Journal_Title :
Automatic Control, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9286
Type :
jour
DOI :
10.1109/TAC.1978.1101787
Filename :
1101787
Link To Document :
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