Title :
Self-tuning multisensor measurement fusion Kalman filter
Author :
Hao Gang ; Jia Wenjing ; Deng Zili
Author_Institution :
Dept. of Automatica, Heilongjiang Univ., Harbin, China
Abstract :
For the multisensor system with unknown noise statistics, and with the measurement matrices having the same factor, based on the weighted least squares (WLS) method, a weighted fusion measurement equation is obtained, and it together with the state equation to constitute a equivalent weighted measurement fusion system. Based on the on-line identification of the moving average (MA) innovation model parameters for weighted measurement fusion system, using the modern time series analysis method, a self-tuning weighted measurement fusion Kalman filter is presented. It is proved that it converges to globally optimal measurement fusion Kalman filter with known noise statistics, so that it has asymptotic global optimality. A simulation example for a tracking system with 4 sensors shows its effectiveness.
Keywords :
Kalman filters; least squares approximations; matrix algebra; moving average processes; sensor fusion; time series; Kalman filter; asymptotic global optimality; convergence; measurement matrix; moving average innovation model; multisensor measurement fusion; multisensor system; noise statistics; noise variance estimation; online identification; self-tuning; state equation; time series analysis; tracking system; weighted fusion measurement equation; weighted least squares method; Equations; Least squares methods; Multisensor systems; Noise measurement; Sensor systems; Statistics; Technological innovation; Time measurement; Time series analysis; Weight measurement; asymptotic global optimality; convergence; identification; modern time series analysis method; multisensor; noise variance estimation; self-tuning Kalman filter; weighted measurement fusion;
Conference_Titel :
Control Conference, 2006. CCC 2006. Chinese
Conference_Location :
Harbin
Print_ISBN :
7-81077-802-1
DOI :
10.1109/CHICC.2006.280580