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Distributed Filtering for a Class of Time-Varying Systems Over Sensor Networks With Quantization Errors and Successive Packet Dropouts

机译:具有量化误差和连续丢包的传感器网络上一类时变系统的分布式过滤

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摘要

This paper is concerned with the distributed finite-horizon filtering problem for a class of time-varying systems over lossy sensor networks. The time-varying system (target plant) is subject to randomly varying nonlinearities (RVNs) caused by environmental circumstances. The lossy sensor network suffers from quantization errors and successive packet dropouts that are described in a unified framework. Two mutually independent sets of Bernoulli distributed white sequences are introduced to govern the random occurrences of the RVNs and successive packet dropouts. Through available output measurements from not only the individual sensor but also its neighboring sensors according to the given topology, a sufficient condition is established for the desired distributed finite-horizon filter to ensure that the prescribed average filtering performance constraint is satisfied. The solution of the distributed filter gains is characterized by solving a set of recursive linear matrix inequalities. A simulation example is provided to show the effectiveness of the proposed filtering scheme.
机译:本文涉及有损传感器网络上一类时变系统的分布式有限水平滤波问题。时变系统(目标工厂)会受到环境条件引起的随机变化的非线性(RVN)的影响。有损传感器网络存在量化误差和在统一框架中描述的连续数据包丢失的问题。引入两组相互独立的伯努利分布的白色序列,以控制RVN的随机出现和连续的数据包丢失。通过不仅根据给定拓扑从各个传感器而且从其相邻传感器的可用输出测量结果,为所需的分布式有限水平滤波器建立了充分条件,以确保满足规定的平均滤波性能约束。分布式滤波器增益的解决方案的特征是解决一组递归线性矩阵不等式。提供了一个仿真示例,以显示所提出的过滤方案的有效性。

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