Authors:
R. Caballero-Águila
1
;
A. Hermoso-Carazo
2
and
J. Linares-Pérez
2
Affiliations:
1
Departamento de Estadística e I.O., Universidad de Jaén, Campus Las Lagunillas s/n, 23071 Jaén and Spain
;
2
Departamento de Estadística e I.O., Universidad de Granada, Campus Fuentenueva s/n, 18071 Granada and Spain
Keyword(s):
Sequential Fusion Filtering, Random Parameter Matrices, Cross-correlated Noises, Covariance-based Estimation, Sensor Networks.
Related
Ontology
Subjects/Areas/Topics:
Informatics in Control, Automation and Robotics
;
Signal Processing, Sensors, Systems Modeling and Control
;
System Modeling
Abstract:
The least-squares linear filtering problem is addressed for discrete-time stochastic signals, whose evolution model is unknown and only the mean and covariance functions of the processes involved in the sensor measurement equations are available instead. The sensor measured outputs are perturbed by additive noise and different uncertainties, which are modelled in a unified way by random parameter matrices. Assuming that, at each sampling time, the noises from the different sensors are cross-correlated with each other, the sequential fusion architecture is adopted and the innovation technique is used to derive an easily implementable recursive filtering algorithm. A simulation example is included to verify the effectiveness of the proposed sequential fusion filter and analyze the influence of the sensor disturbances on the filter performance.