DocumentCode :
1752634
Title :
Self-Tuning Information Fusion Reduced-Order Kalman Predictors for Stochastic Singular Systems
Author :
Ma, Jing ; Sun, Shuli
Author_Institution :
Dept. of Autom., Heilongjiang Univ., Harbin
Volume :
1
fYear :
0
fDate :
0-0 0
Firstpage :
1524
Lastpage :
1528
Abstract :
Using correlation functions, a distributed identification approach for noise statistic information is given for stochastic singular systems measured by multiple sensors with unknown noise statistics information. Compared with the centralized identification method, the computation burden can be reduced. Further, a self-tuning information fusion reduced-order Kalman predictor with a two-stage fusion structure is presented based on the fusion algorithm weighted by scalars in the linear minimum variance sense. The first stage fusion is to determine the correlated variances of measurement noises between any two sensors. The second stage fusion is to obtain the distributed self-turning information fusion reduced-order predictors by scalar weighting fusion based on local predictors from each sensor subsystem. Simulation example shows the effectiveness of the proposed algorithm
Keywords :
Kalman filters; correlation methods; identification; self-adjusting systems; sensor fusion; stochastic systems; correlation functions; distributed identification; linear minimum variance; noise statistics; scalar weighting fusion; self-tuning information fusion reduced-order Kalman predictors; stochastic singular systems; two-stage fusion structure; Automation; Kalman filters; Noise measurement; Sensor fusion; Sensor systems; Statistical distributions; Stochastic resonance; Stochastic systems; Sun; TV; information fusion Kalman predictor; noise statistics; self-tuning; stochastic singular system;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Control and Automation, 2006. WCICA 2006. The Sixth World Congress on
Conference_Location :
Dalian
Print_ISBN :
1-4244-0332-4
Type :
conf
DOI :
10.1109/WCICA.2006.1712605
Filename :
1712605
Link To Document :
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