A New ℓ-step Neighbourhood Distributed Moving Horizon Estimator

Antonello Venturino, S. Bertrand, C. Stoica, T. Alamo, E. Camacho
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引用次数: 2

Abstract

This paper focuses on Distributed State Estimation over a peer-to-peer sensor network composed by possible low-computational sensors. We propose a new ℓ-step Neighbourhood Distributed Moving Horizon Estimation technique with fused arrival cost and pre-estimation, improving the accuracy of the estimation, while reducing the computation time compared to other approaches from the literature. Simultaneously, convergence of the estimation error is improved by means of spreading the information amongst neighbourhoods, which comes natural in the sliding window data present in the Moving Horizon Estimation paradigm.
一种新的l阶邻域分布移动视界估计
本文主要研究由可能的低计算量传感器组成的点对点传感器网络的分布式状态估计。本文提出了一种融合到达代价和预估计的新方法,提高了估计的精度,同时与文献中其他方法相比减少了计算时间。同时,通过在邻域间传播信息,提高了估计误差的收敛性,这在移动地平线估计范式中滑动窗口数据中是很自然的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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