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首页> 外文期刊>Control of Network Systems, IEEE Transactions on >Minimum-Variance Recursive Filtering Over Sensor Networks With Stochastic Sensor Gain Degradation: Algorithms and Performance Analysis
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Minimum-Variance Recursive Filtering Over Sensor Networks With Stochastic Sensor Gain Degradation: Algorithms and Performance Analysis

机译:具有随机传感器增益下降的传感器网络最小方差递归滤波:算法和性能分析

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摘要

This paper is concerned with the minimum variance filtering problem for a class of time-varying systems with both additive and multiplicative stochastic noises through a sensor network with a given topology. The measurements collected via the sensor network are subject to stochastic sensor gain degradation, and the gain degradation phenomenon for each individual sensor occurs in a random way governed by a random variable distributed over the interval [0, 1]. The purpose of the addressed problem is to design a distributed filter for each sensor such that the overall estimation error variance is minimized at each time step via a novel recursive algorithm. By solving a set of Riccati-like matrix equations, the parameters of the desired filters are calculated recursively. The performance of the designed filters is analyzed in terms of the boundedness and monotonicity. Specifically, sufficient conditions are obtained under which the estimation error is exponentially bounded in mean square. Moreover, the monotonicity property for the error variance with respect to the sensor gain degradation is thoroughly discussed. Numerical simulations are exploited to illustrate the effectiveness of the proposed filtering algorithm and the performance of the developed filter.
机译:本文涉及一类时变系统的最小方差滤波问题,该系统通过给定拓扑结构的传感器网络同时具有加性和乘性随机噪声。通过传感器网络收集的测量值会受到随机传感器增益下降的影响,每个传感器的增益下降现象均以随机方式发生,该随机方式受分布在区间[0,1]上的随机变量控制。解决的问题的目的是为每个传感器设计一个分布式滤波器,以便通过新颖的递归算法在每个时间步将总估计误差方差最小化。通过求解一组类似Riccati的矩阵方程,可以递归计算所需滤波器的参数。根据有界和单调性分析了设计滤波器的性能。具体地,获得足够的条件,在该条件下,估计误差以均方指数增长。此外,针对传感器增益下降的误差方差的单调性进行了全面讨论。利用数值模拟来说明所提出的滤波算法的有效性和所开发的滤波器的性能。

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