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Networked Sensing and Distributed Kalman-Bucy Filtering Based on Dynamic Average Consensus

机译:基于动态平均共识的网络感知和分布式卡尔曼忙度滤波

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This paper presents the formulation of distributed Kalman-Bucy filter algorithm for a network of autonomous sensors, which is modeled as a connected undirected graph. Development of the distributed Kalman-Bucy filter is formulated as two average consensus problems in terms of weighted inverse of measurement noise covariance matrices and weighted measurements. The proposed algorithm utilizes the static average consensus protocol to solve the first consensus problem and the proportional-integral based dynamic average consensus protocol to solve the latter. The distributed Kalman-Bucy filter algorithm is optimal in the sense that the performance of the proposed algorithm asymptotically approaches that of a centralized filter. Numerical simulations are presented to demonstrate the performance of the proposed scheme.
机译:本文提出了一种针对自主传感器网络的分布式卡尔曼-布西滤波器算法的公式化,该算法被建模为一个连通的无向图。就测量噪声协方差矩阵的加权逆和加权测量而言,分布式卡尔曼-Bucy滤波器的发展被表述为两个平均共识问题。所提出的算法利用静态平均共识协议来解决第一个共识问题,并利用基于比例积分的动态平均共识协议来解决第一个共识问题。在所提出算法的性能渐近接近集中滤波器的性能的意义上,分布式卡尔曼-布西滤波器算法是最佳的。数值仿真表明了所提出的方案的性能。

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