Distributed estimation in general directed sensor networks based on batch covariance intersection

Tao Sun, M. Xin, Bin Jia
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引用次数: 8

Abstract

The paper presents a distributed estimation scheme based on a new batch covariance intersection (BCI) strategy and an average consensus algorithm to address the problem of data fusion in sensor networks. Due to sharing common prior knowledge, process noise and/or existence of correlated measurement noise, the error of the local estimates from each sensor node in a sensor network is correlated with each other to some extent with unknown cross-correlation. The BCI scheme can handle the correlation in the data fusion in a distributed way by means of an average consensus algorithm so that no fusion center is needed. Moreover, the proposed average consensus algorithm can be applied in a general digraph including the non-balanced topology. A cooperative target tracking problem using multiple UAVs as the mobile sensor network is used to demonstrate the performance of this new distributed estimation algorithm.
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基于批协方差交集的有向传感器网络分布估计
针对传感器网络中的数据融合问题,提出了一种基于批协方差交叉(BCI)策略和平均一致性算法的分布式估计方案。由于共享共同的先验知识、过程噪声和/或相关测量噪声的存在,传感器网络中各传感器节点的局部估计误差在一定程度上存在未知的相互关联。BCI方案通过平均一致性算法以分布式方式处理数据融合中的相关性,从而不需要建立融合中心。此外,所提出的平均一致性算法可以应用于包括非平衡拓扑在内的一般有向图。以多无人机作为移动传感器网络的协同目标跟踪问题为例,验证了分布式估计算法的性能。
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