Title :
Self-Tuning Multisensor Weighted Measurement Fusion Kalman Filter
Author :
Gao, Yuan ; Jia, Wen-Jing ; Sun, Xiao-Jun ; Deng, Zi-li
Author_Institution :
Dept. of Autom., Heilongjiang Univ., Harbin
Abstract :
For the multisensor systems with unknown noise variances, based on the solution of the matrix equations for the correlation function, the on-line estimators of the noise variance matrices are obtained, whose consistency is proved using the ergodicity of sampled correlation function. Further, two self-tuning weighted measurement fusion Kalman filters are presented for the multisensor systems with identical and different measurement matrices, respectively. Based on the stability of the dynamic error system, a new convergence analysis tool is presented for a self-tuning fuser, which is called the dynamic error system analysis (DESA) method. A new concept of convergence in a realization is presented, which is weaker than the convergence with probability one. It is rigorously proved that the proposed self-tuning Kalman fusers converge to the steady-state optimal Kalman fusers in a realization or with probability one, so that they have asymptotic global optimality. A simulation example for a target tracking system with 3 sensors shows their effectiveness.
Keywords :
Correlation; Kalman filters; asymptotic stability; matrix algebra; self-adjusting systems; sensor fusion; asymptotic global optimality; convergence analysis; correlation function; dynamic error system analysis method; matrix equations; multisensor systems; self-tuning weighted measurement fusion Kalman filters; steady-state optimal Kalman fusers; target tracking system; unknown noise variances; Convergence; Equations; Error analysis; Kalman filters; Multisensor systems; Sensor systems; Stability analysis; Steady-state; Target tracking; Weight measurement;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2009.4805272