Title :
State estimation for jump Markov linear systems by variational Bayesian approximation
Author :
Li, Wenyuan ; Jia, Yunde
Author_Institution :
Dept. of Syst. & Control, Beihang Univ. (BUAA), Beijing, China
Abstract :
This article studies the problem of state estimation for jump Markov linear systems with unknown measurement noise variance parameters. By using the concept of conjugate prior distributions for noise statistics, a novel estimator is developed by applying the basic interacting multiple model (IMM) approach and the Kalman filtering theory. The main difficulties encountered are the exponentially growing terms in the interacting stage of the IMM and the coupled state and noise variance in the likelihood functions. They are overcome by employing the merging scheme via matching the first two moments and the variational Bayesian approximation technique, respectively. Simulation results are presented to verify the effectiveness of the proposed filter via a manoeuvring target tracking example.
Keywords :
Bayes methods; Kalman filters; linear systems; state estimation; stochastic systems; target tracking; variational techniques; Kalman filtering theory; conjugate prior distribution concept; coupled state; interacting multiple model approach; jump Markov linear systems; manoeuvring target tracking; merging scheme; noise statistics; state estimation; unknown measurement noise variance parameters; variational Bayesian approximation technique;
Journal_Title :
Control Theory & Applications, IET
DOI :
10.1049/iet-cta.2011.0167