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Application of clustering algorithms for spatio-temporal analysis of urban traffic data

机译:聚类算法在城市交通数据时空分析中的应用

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The large vehicle movement traffic datasets offer a lot of great opportunities for the evolution of new methodologies for the analysis of the transportation system. However, deriving relevant traffic patterns from such a vast amount of historical dataset is challenging. In this paper, several data mining techniques have been applied to obtain more understanding about urban traffic patterns by analyzing hourly and daily variation in urban traffic flow dataset. A model has been developed for the analysis of spatial and temporal patterns in urban traffic data. Model development involves the formulation of algorithms to be applied to the data and choice of various metrics to evaluate the clustering algorithm. Furthermore, these techniques have been applied to the traffic dataset of Aarhus, the second-largest city of Denmark. Finally, results are analyzed to determine the various factors that affect the traffic flow patterns in an urban area.
机译:大型车辆运动交通数据集为交通系统分析的新方法的演变提供了很大的机会。但是,从如此大量的历史数据集中获取相关的交通模式是具有挑战性的。在本文中,已经应用了几种数据挖掘技术,通过分析了城市交通流量数据集的每日和日常变异来获得更多关于城市交通模式的理解。已经开发了一种模型,用于分析城市交通数据中的空间和时间模式。模型开发涉及将算法的配方应用于数据和选择各种度量来评估聚类算法。此外,这些技术已经应用于丹麦第二大城市的Aarhus交通数据集。最后,分析了结果以确定影响城市地区交通流量模式的各种因素。

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