A distributed local Kalman consensus filter for traffic estimation

Ye Sun, D. Work
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引用次数: 27

Abstract

This work proposes a distributed local Kalman consensus filter (DLKCF) for large-scale multi-agent traffic density estimation. The switching mode model (SMM) is used to describe the traffic dynamics on a stretch of roadway, and the model dynamics are linear within each mode. The error dynamics of the proposed DLKCF is shown to be globally asymptotically stable (GAS) when all freeway sections switch between observable modes. For an unobservable section, we prove that the estimates given by the DLKCF are ultimately bounded. Numerical experiments are provided to show the asymptotic stability of the DLKCF for observable modes, and illustrate the effect of the DLKCF on promoting consensus among various local agents. Supplementary source code is available at https://github.com/yesun/DLKCFcdc2014.
一种用于流量估计的分布式局部卡尔曼一致性滤波器
本文提出了一种用于大规模多智能体流量密度估计的分布式局部卡尔曼共识滤波器(DLKCF)。采用切换模式模型(SMM)来描述一段道路上的交通动态,该模型在每种模式下都是线性的。当所有高速公路路段在可观测模式之间切换时,所提出的DLKCF误差动力学是全局渐近稳定的(GAS)。对于不可观测部分,我们证明了DLKCF给出的估计最终是有界的。数值实验证明了DLKCF在可观测模式下的渐近稳定性,并说明了DLKCF对促进各局部智能体之间共识的作用。补充源代码可从https://github.com/yesun/DLKCFcdc2014获得。
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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