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Distributed Fusion Estimation With Missing Measurements, Random Transmission Delays and Packet Dropouts

机译:缺少测量,随机传输延迟和丢包的分布式融合估计

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摘要

This technical note is concerned with the distributed Kalman filtering problem for a class of networked multi-sensor fusion systems (NMFSs) with missing sensor measurements, random transmission delays and packet dropouts. A novel stochastic model is proposed to describe the transmission delays and packet dropouts, and an optimal distributed fusion Kalman filter (DFKF) is designed based on the optimal fusion criterion weighted by matrices. Some sufficient conditions are derived such that the MSE of the designed DFKF is bounded or convergent. Moreover, steady-state DFKF is also presented for the NMFSs. An illustrative example is given to demonstrate the effectiveness of the proposed results.
机译:本技术说明涉及一类网络多传感器融合系统(NMFS)的分布式卡尔曼滤波问题,该系统缺少传感器测量值,随机传输延迟和数据包丢失。提出了一种新颖的随机模型来描述传输时延和分组丢失,并基于矩阵加权的最优融合准则,设计了最优分布式融合卡尔曼滤波器(DFKF)。得出一些足够的条件,以使设计的DFKF的MSE有界或收敛。此外,还为NMFS提供了稳态DFKF。给出了一个说明性的例子来证明所提出的结果的有效性。

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