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Distributed Fusion Filtering in Networked Systems with Random Measurement Matrices and Correlated Noises

机译:具有随机测量矩阵和相关噪声的网络系统中的分布式融合滤波

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摘要

The distributed fusion state estimation problem is addressed for sensor network systems with random state transition matrix and random measurement matrices, which provide a unified framework to consider some network-induced random phenomena. The process noise and all the sensor measurement noises are assumed to be one-step autocorrelated and different sensor noises are one-step cross-correlated; also, the process noise and each sensor measurement noise are two-step cross-correlated. These correlation assumptions cover many practical situations, where the classical independence hypothesis is not realistic. Using an innovation methodology, local least-squares linear filtering estimators are recursively obtained at each sensor. The distributed fusion method is then used to form the optimal matrix-weighted sum of these local filters according to the mean squared error criterion. A numerical simulation example shows the accuracy of the proposed distributed fusion filtering algorithm and illustrates some of the network-induced stochastic uncertainties that can be dealt with in the current system model, such as sensor gain degradation, missing measurements, and multiplicative noise.
机译:针对具有随机状态转移矩阵和随机测量矩阵的传感器网络系统,解决了分布式融合状态估计问题,该系统提供了一个统一的框架来考虑网络引起的随机现象。假定过程噪声和所有传感器测量噪声为一阶自相关,而不同的传感器噪声为一阶互相关。而且,过程噪声和每个传感器测量噪声是两步互相关的。这些相关假设涵盖了许多实际情况,其中经典独立性假设不现实。使用创新方法,可以在每个传感器上递归获得局部最小二乘线性滤波估计器。然后,根据均方误差标准,使用分布式融合方法来形成这些局部滤波器的最优矩阵加权总和。数值仿真示例说明了所提出的分布式融合滤波算法的准确性,并说明了在当前系统模型中可以处理的一些由网络引起的随机不确定性,例如传感器增益下降,测量值丢失和乘法噪声。

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