Title :
Adaptive estimation and identification for discrete systems with Markov jump parameters
Author :
Tugnait, Jitendra K.
Author_Institution :
Exxon Production Research Company, Houston, TX, USA
fDate :
10/1/1982 12:00:00 AM
Abstract :
Linear discrete-time stochastic dynamical systems with parameters which may switch among a finite set of values are considered. The switchings are modeled by a finite state ergodic Markov chain whose transition probability matrix is unknown and is assumed to belong to a compact set. A novel scheme, called truncated maximum likelihood estimation, is proposed for consistent estimation of the transition probabilities given noisy observations of the system output variables. Conditions for strong consistency are investigated assuming that the measurements are taken after the system has achieved a statistical steady state. The case when the true transition matrix does not belong to the unknown transition matrix set is also considered. The truncated maximum likelihood procedure is computationally feasible, whereas the standard maximum likelihood procedure is not, given large observation records. Finally, using the truncated ML algorithm, a suboptimal adaptive state estimator is proposed and its asymptotic behavior is analyzed.
Keywords :
Adaptive estimation, linear systems; Jump parameter systems, linear; Markov processes; Parameter estimation, linear systems; State estimation, linear systems; maximum-likelihood (ML) estimation; Adaptive estimation; Application software; Maximum likelihood estimation; Probability; Software performance; State estimation; Steady-state; Stochastic systems; Switches; Time varying systems;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.1982.1103061