Title :
Particle filters for state estimation of jump Markov linear systems
Author :
Doucet, Arnaud ; Gordon, Neil J. ; Krishnamurthy, Vikram
Author_Institution :
Dept. of Eng., Cambridge Univ., UK
fDate :
3/1/2001 12:00:00 AM
Abstract :
Jump Markov linear systems (JMLS) are linear systems whose parameters evolve with time according to a finite state Markov chain. In this paper, our aim is to recursively compute optimal state estimates for this class of systems. We present efficient simulation-based algorithms called particle filters to solve the optimal filtering problem as well as the optimal fixed-lag smoothing problem. Our algorithms combine sequential importance sampling, a selection scheme, and Markov chain Monte Carlo methods. They use several variance reduction methods to make the most of the statistical structure of JMLS. Computer simulations are carried out to evaluate the performance of the proposed algorithms. The problems of on-line deconvolution of impulsive processes and of tracking a maneuvering target are considered. It is shown that our algorithms outperform the current methods
Keywords :
Markov processes; deconvolution; digital simulation; filtering theory; importance sampling; linear systems; optimisation; state estimation; tracking; Markov chain Monte Carlo methods; computer simulations; finite state Markov chain; impulsive processes; jump Markov linear systems; maneuvering target tracking; on-line deconvolution; optimal filtering; optimal fixed-lag smoothing; optimal state estimates; particle filters; performance evaluation; sequential importance sampling; simulation-based algorithms; statistical structure; variance reduction methods; Computational modeling; Computer simulation; Deconvolution; Filtering algorithms; Linear systems; Monte Carlo methods; Particle filters; Recursive estimation; Smoothing methods; State estimation;
Journal_Title :
Signal Processing, IEEE Transactions on