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A general packet dropout compensation framework for optimal prior filter of networked multi-sensor systems

机译:用于网络多传感器系统的最佳滤波器的一般数据包丢失补偿框架

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摘要

This paper proposes a new packet dropout compensation framework for networked multi-sensor systems. It is more general, which includes the existing popular mechanisms such as the zero-input and hold-input mechanisms as the special cases. Based on the proposed compensation framework, the centralized fusion linear optimal full-order prior filters with compensators of different weighting factors are presented. However, it is well known that centralized fusion prior filters (CFPFs) have poor reliability. To improve the reliability, the distributed fusion prior filters (DFPFs) are also given based on the well-known matrix-weighted fusion estimation algorithm in the linear unbiased minimum variance (LUMV) sense. Moreover, the stability and steady-state property of the proposed CFPFs and DFPFs are analyzed. A numerical example is used to make the performance comparisons of the proposed and the existing compensation mechanisms. The simulation results verify the effectiveness of the proposed compensation framework and the corresponding fusion filters.
机译:本文提出了一种用于网络多传感器系统的新数据包丢失补偿框架。它更为通用,包括现有的流行机制,例如零输入和保持输入机制作为特殊情况。基于所提出的补偿框架,提出了具有不同加权因子补偿器的集中式融合线性最佳的全阶滤波器。但是,众所周知,集中式融合先验过滤器(CFPFS)可靠性差。为了提高可靠性,还基于线性无偏见的最小方差(LUMV)意义上的众所周知的矩阵加权融合估计算法给出了分布式融合先验滤波器(DFPF)。此外,分析了所提出的CFPFS和DFPFS的稳定性和稳态性质。使用数值例子来进行所提出的和现有补偿机制的性能比较。仿真结果验证了所提出的补偿框架和相应的融合过滤器的有效性。

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