IEEE Trans Cybern. 2019 Mar;49(3):870-882. doi: 10.1109/TCYB.2017.2789212. Epub 2018 Jan 12.
This paper is concerned with the distributed H state estimation for a discrete-time target linear system over a filtering network with time-varying and switching topology and partial information exchange. Both filtering network topology switching and partial information exchange between filters are simultaneously considered in the filter design. The topology under consideration evolves not only over time but also by an event switch which is assumed to be subject to a nonhomogeneous Markov chain. The probability transition matrix of the nonhomogeneous Markov chain is time-varying. In the filter information exchange, partial state estimation information and channel noise are simultaneously considered. In order to design such a switching filtering network with partial information exchange, stochastic Markov stability theory is developed. The switching topology-dependent filters are derived to guarantee an optimal H disturbance rejection attenuation level for the estimation disagreement of the filtering network. It is shown that the addressed H state estimation problem is turned into a switching topology-dependent optimal problem. The distributed filtering problem with complete information exchanges from its neighbors is also investigated. An illustrative example is given to show the applicability of the obtained results.
本文研究了在具有时变和切换拓扑以及部分信息交换的滤波网络上,对离散时间目标线性系统进行分布式 H 状态估计的问题。在滤波器设计中同时考虑了滤波网络拓扑切换和滤波器之间的部分信息交换。所考虑的拓扑不仅随时间演变,而且还由事件开关演变,该事件开关假定受非齐次马尔可夫链支配。非齐次马尔可夫链的概率转移矩阵是时变的。在滤波器信息交换中,同时考虑了部分状态估计信息和信道噪声。为了设计这种具有部分信息交换的切换滤波网络,发展了随机 Markov 稳定性理论。推导了依赖于切换拓扑的滤波器,以保证滤波网络的估计不一致的最优 H 干扰抑制衰减水平。结果表明,所提出的 H 状态估计问题转化为依赖于切换拓扑的最优问题。还研究了来自邻居的完全信息交换的分布式滤波问题。给出了一个实例来说明所得到的结果的适用性。