Distributed fusion estimation from measurements with correlated random parameter matrices and noise correlation
Identificadores
URI: http://hdl.handle.net/10481/67662Metadata
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Taylor&Francis
Materia
Distributed fusion filter Random parameter matrices Noise correlation Random delays Missing measurements
Date
2020-01Referencia bibliográfica
Raquel Caballero-Águila, Irene García-Garrido & Josefa Linares-Pérez (2020). Distributed fusion estimation from measurements with correlated random parameter matrices and noise correlation, International Journal of Computer Mathematics, 97 (1-2), 95-108.
Sponsorship
This work is supported by Ministerio de Economía y Competitividad and Fondo Europeo de Desarrollo Regional FEDER [grant nos. MTM2014-52291-P and MTM2017-84199-P].Abstract
This paper addresses the distributed fusion estimation problem for
discrete-time multi-sensor stochastic systems with random parameter
matrices. It is assumed that the random parameter matrices in the observation
equations are one-step autocorrelated and cross-correlated between
the different sensors and the additive noises are also correlated. Under
these assumptions, a recursive algorithm is proposed to obtain local least
squares linear filters based on the measurements of each sensor, and the
distributed fusion filter is designed as the matrix-weighted linear combination
of these estimators which minimizes the mean squared estimation
error. This research is illustrated by two numerical simulation examples
where multi-sensor systems with randomly delayed measurements and
missing measurements are considered, respectively, and the performance
of the proposed estimators is analysed by comparing the estimation error
variances of the distributed and centralized fusion filters.