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Distributed Kalman filtering using consensus strategies

机译:分布式卡尔曼过滤使用共识策略

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In this paper, we consider the problem of estimating the state of a dynamical system from distributed noisy measurements. Each agent constructs a local estimate based on its own measurements and estimates from its neighbors. Estimation is performed via a two stage strategy, the first being a Kalman-like measurement update which does not require communication, and the second being an estimate fusion using a consensus matrix. In particular we study the interaction between the consensus matrix, the number of messages exchanged per sampling time, and the Kalman gain. We prove that optimizing the consensus matrix for fastest convergence and using the centralized optimal gain is not necessarily the optimal strategy if the number of message exchange per sampling time is small. Moreover, we prove that under certain conditions the optimal consensus matrix should be doubly stochastic. We also provide some numerical examples to clarify some of the analytical results.
机译:在本文中,我们考虑从分布式噪声测量估计动态系统状态的问题。每个代理基于其邻居的自身测量和估计构建本地估计。估计是通过两个阶段策略执行的,第一是不需要通信的类似卡尔曼的测量更新,并且第二个是使用共识矩阵的估计融合。特别地,我们研究了共识矩阵之间的互动,每个采样时间交换的消息数量以及卡尔曼增益。我们证明了优化最快收敛的共识矩阵,并且使用集中式最佳增益,如果每个采样时间的消息交换的数量很小,则不一定是最佳策略。此外,我们证明,在某些条件下,最佳共识基质应该是双随机的。我们还提供了一些数字示例,以澄清一些分析结果。

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