State estimation of stochastic systems with switching measurements: a polynomial approach
Academic Article
Publication Date:
2009
abstract:
The state estimation problem is here investigated for a class of stochastic linear switching-output systems,
in which the output matrix switches in a finite set of possible values according to a not directly measured
discrete Markov sequence. This note presents a real-time algorithm, based on the optimal polynomial
filtering approach, which achieves the simultaneous estimation of both the continuous system state and
the switching parameter. The state and observation noises do not need to be Gaussian. It is shown that
the optimal filter of degree one (best affine filter) does not solve the parameter estimation problem, due
to a structural first-order unobservability property, and therefore the use of higher-order filters becomes
necessary. As an application of the proposed filter, the problem of the online simultaneous estimation of the
transmitted signal and of the impulse response samples of a multipath fast-fading digital communication
channel is considered in this paper. Differently from other approaches, the polynomial filter solves the
problem without the use of training sequences (preambles) in the transmitted data, so that the information
flow through the channel is not interrupted.
Iris type:
01.01 Articolo in rivista
Keywords:
hybrid systems; switching systems; Kalman filter; polynomial filters
List of contributors:
Manes, Costanzo; Palumbo, Pasquale
Published in: