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Networked distributed fusion estimation under uncertain outputs with random transmission delays, packet losses and multi-packet processing

机译:不确定输出下的网络分布式融合估计,具有随机传输延迟,丢包和多包处理

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This paper investigates the distributed fusion estimation problem for networked systems whose multisensor measured outputs involve uncertainties modelled by random parameter matrices. Each sensor transmits its measured outputs to a local processor over different communication channels and random failures -one-step delays and packet dropouts- are assumed to occur during the transmission. White sequences of Bernoulli random variables with different probabilities are introduced to describe the observations that are used to update the estimators at each sampling time. Due to the transmission failures, each local processor may receive either one or two data packets, or even nothing and, when the current measurement does not arrive on time, its predictor is used in the design of the estimators to compensate the lack of updated information. By using an innovation approach, local least-squares linear estimators (filter and fixed-point smoother) are obtained at the individual local processors, without requiring the signal evolution model. From these local estimators, distributed fusion filtering and smoothing estimators weighted by matrices are obtained in a unified way, by applying the least-squares criterion. A simulation study is presented to examine the performance of the estimators and the influence that both sensor uncertainties and transmission failures have on the estimation accuracy. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文研究了网络系统的分布式融合估计问题,该网络系统的多传感器测量输出涉及由随机参数矩阵建模的不确定性。每个传感器通过不同的通信通道将其测量的输出发送到本地处理器,并假定在传输过程中会发生随机故障(单步延迟和数据包丢失)。引入具有不同概率的伯努利随机变量的白色序列来描述用于在每个采样时间更新估计量的观测值。由于传输故障,每个本地处理器可能会接收一个或两个数据包,甚至什么也没有,并且,当当前测量未按时到达时,其预测器将用于估计器的设计中,以补偿缺少更新的信息。通过使用创新方法,可以在各个局部处理器上获得局部最小二乘线性估计器(滤波器和定点平滑器),而无需信号演化模型。从这些局部估计器中,通过应用最小二乘准则,以统一的方式获得由矩阵加权的分布式融合滤波和平滑估计器。进行了仿真研究,以检验估计器的性能以及传感器不确定性和传输故障对估计精度的影响。 (C)2018 Elsevier B.V.保留所有权利。

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