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分簇传感网络系统两级鲁棒观测融合Kalman滤波器
引用本文:张鹏,齐文娟,邓自立.分簇传感网络系统两级鲁棒观测融合Kalman滤波器[J].自动化学报,2014,40(11):2585-2594.
作者姓名:张鹏  齐文娟  邓自立
作者单位:1.黑龙江大学电子工程学院自动化系 哈尔滨 150080;;;2.齐齐哈尔大学通信与电子工程学院 齐齐哈尔 161000
基金项目:Supported by National Natural Science Foundation of China (60874063), and Innovation and Scientific Research Foundation of Graduate Student of Heilongjiang Province (YJSCX2012-263HLJ)
摘    要:研究了分簇传感网络分布式融合Kalman滤波器.根据最邻近原则将传感网络分成簇,每簇由传感节点和簇首组成.应用极大极小鲁棒估计原理,基于带噪声方差最大保守上界的最坏保守系统,对带不确定性噪声方差的分簇传感网络系统提出了两级鲁棒观测融合Kalman滤波器.当传感器数量非常多的时候它可以明显减小通信负担.在鲁棒性分析中利用Lyapunov方程方法证明了局部和融合Kalman滤波器的鲁棒性.提出了鲁棒精度的概念,并证明了局部和融合鲁棒Kalman滤波器之间的鲁棒精度关系.证明了两级加权观测融合器的鲁棒精度等价于相应的全局集中式鲁棒融合器的鲁棒精度,并且高于每个局部观测融合器的鲁棒精度.一个仿真例子说明上述结果的准确性.

关 键 词:分簇传感网络    噪声方差不确定性    加权观测融合    鲁棒Kalman滤波器    鲁棒精度
收稿时间:2013-06-14
修稿时间:2014-01-20

Two-level Robust Measurement Fusion Kalman Filter for Clustering Sensor Networks
ZHANG Peng,QI Wen-Juan,DENG Zi-Li.Two-level Robust Measurement Fusion Kalman Filter for Clustering Sensor Networks[J].Acta Automatica Sinica,2014,40(11):2585-2594.
Authors:ZHANG Peng  QI Wen-Juan  DENG Zi-Li
Affiliation:1. Department of Automation, Heilongjiang University, Harbin 150080, China;;;2. Department of Communication and Electronic Engineering, Qiqihar University, Qiqihar 161000, China
Abstract:This paper investigates the distributed fusion Kalman filtering over clustering sensor networks. The sensor network is partitioned as clusters by the nearest neighbor rule and each cluster consists of sensing nodes and cluster-head. Using the minimax robust estimation principle, based on the worst-case conservative system with the conservative upper bounds of noise variances, twolevel robust measurement fusion Kalman filter is presented for the clustering sensor network systems with uncertain noise variances. It can significantly reduce the communication load and save energy when the number of sensors is very large. A Lyapunov equation approach for the robustness analysis is presented, by which the robustness of the local and fused Kalman filters is proved. The concept of the robust accuracy is presented, and the robust accuracy relations among the local and fused robust Kalman filters are proved. It is proved that the robust accuracy of the two-level weighted measurement fuser is equal to that of the global centralized robust fuser and is higher than those of each local robust filter and each local weighted measurement fuser. A simulation example shows the correctness and effectiveness of the proposed results.
Keywords:Clustering sensor network  noise variance uncertainty  weighted measurement fusion  robust Kalman filter  robust accuracy
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