Title :
Optimal adaptive estimation: Structure and parameter adaption
Author :
Lainiotis, Demetrios G.
Author_Institution :
University of Texas, Austin, TX, USA
fDate :
4/1/1971 12:00:00 AM
Abstract :
Optimal structure and parameter adaptive estimators have been obtained for continuous as well as discrete data Gaussian process models with linear dynamics. Specifically, the essentially nonlinear adaptive estimators are shown to be decomposable (partition theorem) into two parts, a linear nonadaptive part consisting of a bank of Kalman-Bucy filters and a nonlinear part that incorporates the adaptive nature of the estimator. The conditional-error-covariance matrix of the estimator is also obtained in a form suitable for on-line performance evaluation. The adaptive estimators are applied to the problem of state estimation with non-Gaussian initial state, to estimation under measurement uncertainty (joint detection-estimation) as well as to system identification. Examples are given of the application of the adaptive estimators to structure and parameter adaptation indicating their applicability to engineering problems.
Keywords :
Adaptive estimation; Bayes procedures; Gaussian processes; Nonlinear estimation; System identification; Adaptive estimation; Adaptive filters; Filter bank; Gaussian processes; Matrix decomposition; Measurement uncertainty; Nonlinear filters; Parameter estimation; State estimation; System identification;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.1971.1099684