Title :
Self-tuning measurement fusion Kalman filter for multisensor systems with companion form and common disturbance noise
Author :
Ran Chenjian ; Deng Zili
Author_Institution :
Dept. of Autom., Heilongjiang Univ., Harbin, China
Abstract :
For the multisensor systems with companion form and common disturbance noise, when the model parameters and noise variances are all unknown, using recursive extended least squares(RELS) algorithm, the local and fused estimators of part model parameters are obtained. And then, the information fusion noise variance estimators and other parameters estimators are presented by using correlation method and the Gevers-Wouters algorithm with a dead band. They have strong consistence. Further, a self-tuning weighted measurement fusion Kalman filter based on a self-tuning Riccati equation is presented. By the the dynamic error system analysis (DESA) method, it is rigorously proved that the self-tuning weighted measurement fusion Kalman filter converges to the optimal weighted measurement fusion Kalman filter in a realization, so that it has asymptotic global optimality. This self-tuning filter can be applied to the signal processing to obtain the self-tuning measurement fusion signal filters. A simulation example of a self-tuning fused filter for ARMA signal with 3-sensor signal shows its effectiveness.
Keywords :
Kalman filters; Riccati equations; adaptive control; autoregressive moving average processes; correlation methods; error analysis; least squares approximations; parameter estimation; self-adjusting systems; sensor fusion; signal processing; ARMA signal; Gevers-Wouters algorithm; asymptotic optimality; common disturbance noise; companion form; correlation method; dead band; dynamic error system analysis method; fused estimator; information fusion noise variance estimator; local estimator; model parameter; multisensor system; parameter estimator; recursive extended least squares algorithm; self tuning Riccati equation; self tuning measurement fusion Kalman filter; signal filter; signal processing; Convergence; Kalman filters; Mathematical model; Multisensor systems; Noise; Noise measurement; Weight measurement; Common Noises; Measurement Fusion; Multisensor Information Fusion Filter; Parameter Identification; Self-tuning Fusion Filter;
Conference_Titel :
Control Conference (CCC), 2010 29th Chinese
Conference_Location :
Beijing
Print_ISBN :
978-1-4244-6263-6