Decentralized Data Fusion of Dimension-Reduced Estimates Using Local Information Only

Robin Forsling, F. Gustafsson, Zoran Sjanic, Gustaf Hendeby
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引用次数: 1

Abstract

This paper considers fusion of dimension-reduced estimates in a decentralized sensor network. The benefits of a decentralized sensor network include modularity, robustness and flexibility. Moreover, since preprocessed data is exchanged between the agents it allows for reduced communication. Nevertheless, in certain applications the communication load is required to be reduced even further. One way to decrease the communication load is to exchange dimension-reduced estimates instead of full estimates. Previous work on this topic assumes global availability of covariance matrices, an assumption which is not realistic in decentralized applications. Hence, in this paper we consider the problem of deriving dimension-reduced estimates using only local information. The proposed solution is based on an estimate of the information common to the network. This common information estimate is computed locally at each agent by fusion of all information that is either received or transmitted by that agent. It is shown how the common information estimate is utilized for fusion of dimension-reduced estimates using two well-known fusion methods: the Kalman fuser which is optimal under the assumption of uncorrelated estimates, and covariance intersection. One main theoretical result is that the common information estimate allows for a decorrelation procedure such that uncorrelated estimates can be maintained. This property is crucial to be able to use the Kalman fuser without double counting of information. A numerical comparison suggests that the performance degradation of using the common information estimate, compared to having local access to the actual covariance matrices computed by other agents, is relatively small.
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仅使用局部信息的降维估计的分散数据融合
研究了分散传感器网络中降维估计的融合问题。分散式传感器网络的优点包括模块化、鲁棒性和灵活性。此外,由于预处理数据在代理之间交换,因此可以减少通信。然而,在某些应用程序中,需要进一步减少通信负载。减少通信负载的一种方法是交换降维估计而不是完整估计。先前关于该主题的工作假设协方差矩阵的全局可用性,这一假设在分散应用中是不现实的。因此,在本文中,我们考虑仅使用局部信息导出降维估计的问题。所提出的解决方案是基于对网络共有信息的估计。该公共信息估计是通过融合该代理接收或传输的所有信息在每个代理处进行本地计算的。利用两种著名的融合方法:在不相关估计假设下最优的卡尔曼融合器和协方差相交,展示了如何利用公共信息估计进行降维估计的融合。一个主要的理论结果是,公共信息估计允许一个去相关过程,使不相关的估计可以保持。这一特性对于卡尔曼融合器的使用是至关重要的,可以避免重复计算信息。数值比较表明,与本地访问其他代理计算的实际协方差矩阵相比,使用公共信息估计的性能下降相对较小。
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