大型网络交通状态的时空分析

C. Furtlehner, Yufei Han, Jean-Marc Lasgouttes, Victorin Martin, F. Marchal, F. Moutarde
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引用次数: 24

摘要

我们提出了一套基于固定传感器或浮动车辆数据计算的局部交通指标的方法,旨在提取大规模的道路交通空间和时间特征。该方法依赖于传统的数据挖掘技术,如聚类或统计分析,并在mesoscopic交通模拟器Metropolis人工生成的数据上进行了演示。结果与我们提出的另一种方法的输出进行了比较,该方法基于信念传播(BP)算法和近似马尔可夫随机场(MRF)编码的数据。特别是,在聚类分析中识别的流量模式在某种意义上对应于BP方法中得到的不动点。本文还得到了潜在宏观变量及其动态行为的识别,并讨论了将这些变量纳入MRF的方法,以及基于浮动车辆数据的交通重建和预测的一般方法的设置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial and temporal analysis of traffic states on large scale networks
We propose a set of methods aiming at extracting large scale features of road traffic, both spatial and temporal, based on local traffic indexes computed either from fixed sensors or floating car data. The approach relies on traditional data mining techniques like clustering or statistical analysis and is demonstrated on data artificially generated by the mesoscopic traffic simulator Metropolis. Results are compared to the output of another approach that we propose, based on the belief-propagation (BP) algorithm and an approximate Markov random field (MRF) encoding on the data. In particular, traffic patterns identified in the clustering analysis correspond in some sense to the fixed points obtained in the BP approach. The identification of latent macroscopic variables and their dynamical behavior is also obtained and the way to incorporate these in the MRF is discussed as well as the setting of a general approach for traffic reconstruction and prediction based on floating car data.
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