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带相关观测噪声系统的自校正观测融合Kalman滤波器
引用本文:高媛,邓自立.带相关观测噪声系统的自校正观测融合Kalman滤波器[J].科学技术与工程,2009,9(7).
作者姓名:高媛  邓自立
作者单位:黑龙江大学自动化系,哈尔滨,150080
基金项目:国家自然科学基金,黑龙江省教育厅科学技术项目,黑龙江省电子工程重点实验室项目 
摘    要:对于带有相关观测噪声、未知噪声统计、不同观测阵带有相同右因子的多传感器线性离散定常随机系统,利用相关方法,提出了噪声统计信息的在线辨识器.基于ARMA新息模型,提出了自校正加权观测融合Kalman滤波器,避免了求解Lyapunov和Riccati方程,减少了计算负担,适于实时应用.利用动态误差系统分析(DESA)方法,严格证明了提出的自校正融合滤波器以概率1或按实现收敛于相应的最优融合滤波器,即具有渐近全局最优性.一个3传感器跟踪系统的仿真例子说明其有效性.

关 键 词:加权观测融合  自校正Kalman滤波器  收敛性  动态误差系统分析(DESA)方法  现代时间序列分析方法

Self-tuning Measurement Fusion Kalman Filter for System with Correlated Measurement Noises
GAO Yuan,DENG Zi-li.Self-tuning Measurement Fusion Kalman Filter for System with Correlated Measurement Noises[J].Science Technology and Engineering,2009,9(7).
Authors:GAO Yuan  DENG Zi-li
Institution:Department of Automation;Heilongjiang University;Harbin 150080;P.R.China
Abstract:For the multisensor system with correlated measurement noises,unknown noise statistics and different measurement matrices with identical right factor,by correlated method,the online identifiers of the noise statistics are obtained.Based on ARMA innovation model,a self-tuning weighted measurement fusion Kalman filter is presented,which avoids Lyapunov and Riccati equations,reduces the computational burden and is suitable for real time application.By dynamic error system analysis(DESA) method,it is strictly p...
Keywords:weighted measurement fusion self-tuning Kalman filter convergence dynamic error system analysis method modern time series analysis method  
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