Unifying consensus and covariance intersection for decentralized state estimation

A. Tamjidi, S. Chakravorty, Dylan A. Shell
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引用次数: 6

Abstract

This paper presents a new recursive information consensus filter for decentralized dynamic-state estimation. Local estimators are assumed to have access only to local information and no structure is assumed about the topology of the communication network, which need not be connected at all times. Iterative Covariance Intersection (ICI) is used to reach consensus over priors which might become correlated, while consensus over new information is handled using weights based on a Metropolis Hastings Markov Chain (MHMC). We establish bounds for estimation performance and show that our method produces unbiased conservative estimates that are better than CI. The performance of the proposed method is evaluated and compared with competing algorithms on an atmospheric dispersion problem.
统一一致性和协方差交集的分散状态估计
提出了一种新的用于分散动态估计的递归信息一致性滤波器。假设局部估计器只能访问本地信息,并且不假设通信网络拓扑结构,不需要随时连接。迭代协方差交集(ICI)用于对可能变得相关的先验信息达成共识,而对新信息的共识则使用基于Metropolis Hastings Markov链(MHMC)的权重来处理。我们建立了估计性能的界限,并表明我们的方法产生了比CI更好的无偏保守估计。对该方法的性能进行了评价,并与竞争算法在大气色散问题上进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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