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Convergence analysis of leader-follower consensus Kalman filtering in sensor networks

机译:传感器网络中领导者跟随者共识卡尔曼滤波的收敛性分析

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This paper studies the consensus based Kalman filtering problem for discrete-time linear systems in sensor networks. Considering the fact that just part of sensors in the network can measure the target, the filtering algorithms of the sensors are assigned differently according to the availability to get the direct measurements. For the sensors that can directly get the measurement outputs, we call them leaders and apply Kalman filters directly; for other sensors which are called followers, weighted average strategy of neighbors' estimations is applied. The communication weights are designed on the basis of the sensors' path distances to the monitored target and one parameter. By analyzing the multiple linearly coupled discrete-time Riccati equations, sufficient parameter conditions of the convergence of the mean square estimation errors are explicitly proposed for both spanning tree and arbitrary topology, respectively. Numerical examples are given to illustrate our results.
机译:本文研究了传感器网络中离散线性系统基于共识的卡尔曼滤波问题。考虑到网络中只有一部分传感器可以测量目标这一事实,传感器的滤波算法会根据可用性进行不同分配,以获取直接测量结果。对于可以直接获得测量输出的传感器,我们称它们为先导并直接应用卡尔曼滤波器。对于其他称为跟随器的传感器,将应用邻居估计的加权平均策略。通信权重是根据传感器到被监视目标的路径距离和一个参数来设计的。通过分析多个线性耦合的离散时间Riccati方程,分别针对生成树和任意拓扑分别提出了均方估计误差收敛的充分参数条件。数值例子说明了我们的结果。

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