Abstract :
Markovian jump systems (MJSs) evolve in a
jump-wise manner by switching among simpler models, according
to a finite Markov chain, whose parameters are commonly
assumed known. This paper addresses the problem of state
estimation of MJS with unknown transition probability matrix
(TPM) of the embedded Markov chain governing the jumps.
Under the assumption of a time-invariant but random TPM, an
approximate recursion for the TPMs posterior probability density
function (PDF) within the Bayesian framework is obtained.
Based on this recursion, four algorithms for online minimum
mean-square error (MMSE) estimation of the TPM are derived.
The first algorithm (for the case of a two-state Markov chain)
computes the MMSE estimate exactly, if the likelihood of the TPM
is linear in the transition probabilities. Its computational load
is, however, increasing with the data length. To limit the computational
cost, three alternative algorithms are further developed
based on different approximation techniques—truncation of high
order moments, quasi-Bayesian approximation, and numerical
integration, respectively.
The proposed TPM estimation is naturally incorporable into
a typical online Bayesian estimation scheme for MJS [e.g., generalized
pseudo-Bayesian (GPB) or interacting multiple model
(IMM)]. Thus, adaptive versions of MJS state estimators with
unknown TPM are provided. Simulation results of TPM-adaptive
IMM algorithms for a system with failures and maneuvering
target tracking are presented.
Keywords :
IMM , Markovian jumpsystem , multiple model. , Adaptive estimation