Bayesian approach for robust parameter tracking
Abstract
In this paper we study the problem of tracking of time-varying parameters of a dynamical system. The problems also facing at the finite number of expected parameter changes and finite number of possible measurement model. We consider a stochastic model of parameter development with some form of obsolete information forgetting. It will be shown that it is possible to track rapidly time-varying plant parameters using extension of Bayesian viewpoint (continuous and discrete parameters) with requiring the prior information that can improve tracking for abrupt changes.
		DOI Code:
		 10.1285/i20705948v1n1p24
		
		Keywords:
					time-varying parameters; dynamical system; Bayes theorem; ARX model; tree pruning
		 
		
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