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Spatio-Temporal Autocorrelation-Based Clustering Analysis for Traffic Condition: A Case Study of Road Network in Beijing

机译:交通条件的时空自相关基于自相关的聚类分析 - 以北京道路网络为例

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Traffic congestion is an increasingly serious problem worldwide. In the last decade, many cities have paid great efforts to establish Intelligent Transportation Systems (ITS), and a large amount of spatio-temporal data from traffic monitoring system is also accumulated. However, with the devices and facilities of ITS getting completed, effectiveness of ITS practices is always restricted by traffic information fusion and exaction technique. Traffic condition-determining is a crucial issue for Advanced Traffic Management Systems, on which many researchers have done profound studies. The existing studies are mostly focused on traffic condition recognition at a certain road and time point; while in practice, it's more meaningful how different kinds of traffic condition are correlated and distributed in space-time. Therefore, in this research we present an improved spatio-temporal Moran scatterplot (STMS), by which traffic conditions are pre-classified into four types: homogenous uncongested traffic, heterogeneous uncongested traffic, homogenous congested traffic and heterogeneous congested traffic. Then at the basis of STMS, a novel spatio-temporal clustering method combining pre-classification of traffic condition is proposed. Finally, the feasibility and effectiveness of the clustering methodology are demonstrated by case studies of Beijing. Result shows that the proposed clustering method can not only effectively reveal the relation of traffic demand to road network facilities, but also recognize the road sections where congestion originates or gets alleviated in the network, which provides foundations for traffic managers to alleviate congestion and improve urban transport services.
机译:交通拥堵是全世界越来越严重的问题。在过去的十年中,许多城市都努力建立智能交通系统(其),并且还积累了来自交通监测系统的大量时空数据。然而,通过完成的设备和设施,其实践的有效性始终受到交通信息融合和退出技术的限制。交通条件确定是高级交通管理系统的关键问题,许多研究人员已经完成了深刻的研究。现有研究主要集中在某路和时间点的交通状况识别;在实践中,它更有意义,不同类型的流量条件如何相关,并且在时空中分布。因此,在本研究中,我们提出了一种改进的时空莫兰散点图(STMS),通过将交通状况预先分为四种类型:均匀的不合适交通,异构不受欢迎的交通,同质拥挤的交通和异质拥挤的交通。然后,提出了一种组合交通条件预分类的新型时空聚类方法的新型时空聚类方法。最后,通过对北京的案例研究证明了聚类方法的可行性和有效性。结果表明,所提出的聚类方法不仅可以有效地揭示交通需求与道路网络设施的关系,还可以识别拥塞源或在网络中缓解的道路部分,这为交通管理人员提供了缓解拥堵和改善城市的基础运输服务。

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