DocumentCode :
3026282
Title :
Asymptotic normality of prediction error estimators for approximate system models
Author :
Ljung, L. ; Caines, P.E.
Author_Institution :
Linkoping University, Linkoping, Sweden
fYear :
1979
fDate :
10-12 Jan. 1979
Firstpage :
927
Lastpage :
932
Abstract :
A general class of parameter estimation methods for stochastic dynamical systems is studied. The class contains the least squares method, output-error methods, the maximum likelihood method and several other techniques. It is shown that the class of estimates so obtained are asymptotically normal and expressions for the resulting asymptotic covariance matrices are given. The regularity conditions that are imposed to obtain these results are fairly weak. It is, for example, not assumed that the true system can be described within the chosen model set, and, as a consequence, the results in this paper form a part of the so-called approximate modeling approach to system identification. It is also noteworthy that arbitrary feedback from observed system outputs to observed system inputs is allowed and that stationarity is not required.
Keywords :
Convergence; Output feedback; Predictive models;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Decision and Control including the 17th Symposium on Adaptive Processes, 1978 IEEE Conference on
Conference_Location :
San Diego, CA, USA
Type :
conf
DOI :
10.1109/CDC.1978.268066
Filename :
4046253
Link To Document :
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