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自校正对角阵加权信息融合Kalman预报器
引用本文:邓自立,李春波.自校正对角阵加权信息融合Kalman预报器[J].自动化学报,2007,33(2).
作者姓名:邓自立  李春波
摘    要:


Self-tuning Information Fusion Kalman Predictor Weighted by Diagonal Matrices and Its Convergence Analysis
DENG Zi-Li,LI Chun-Bo.Self-tuning Information Fusion Kalman Predictor Weighted by Diagonal Matrices and Its Convergence Analysis[J].Acta Automatica Sinica,2007,33(2).
Authors:DENG Zi-Li  LI Chun-Bo
Abstract:For the multisensor systems with unknown noise statistics, using the modern time series analysis method, based on on-line identification of the moving average (MA) innovation models, and based on the solution of the matrix equations for correlation function, estimators of the noise variances are obtained, and under the linear minimum variance optimal information fusion criterion weighted by diagonal matrices, a self-tuning information fusion Kalman predictor is presented, which realizes the self-tuning decoupled fusion Kalman predictors for the state components. Based on the dynamic error system, a new convergence analysis method is presented for self-tuning fuser. A new concept of convergence in a realization is presented, which is weaker than the convergence with probability one. It is strictly proved that if the parameter estimation of the MA innovation models is consistent, then the self-tuning fusion Kalman predictor will converge to the optimal fusion Kalman predictor in a realization, or with probability one, so that it has asymptotic optimality. It can reduce the computational burden, and is suitable for real time applications. A simulation example for a target tracking system shows its effectiveness.
Keywords:Multisensor information fusion  decoupled fusion  identification  self-tuning Kalman predictor  convergence analysis
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