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Mining the Temporal-Spatial Patterns of Urban Traffic Demands Based on Taxi Mobility Data

机译:基于出租车流动性数据的城市交通需求时空格局挖掘

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Urban traffic is a complex temporal-spatial process. Understanding the dynamical behavior of the whole urban traffic system will allow traffic organizers to identify the source of traffic congestion. In this study, we conducted an in-depth analysis of a taxi trajectory dataset in Beijing based on a dynamical graph and adopted a traffic-modified PageRank algorithm to evaluate urban traffic demands. By generating feature vectors, we have analyzed the temporal-spatial patterns of the distribution of traffic demands in Beijing. We obtained a general picture of the distribution of traffic demands in Beijing and also successfully extracted different zones with significant traffic demands. We discovered that most of Beijing's traffic demands lie on internal ring roads at daytime and on peripheral highways at nighttime, which suggests that the structure of road network and drivers' proneness for choosing quicker paths are still the most influential factors of urban traffic.
机译:城市交通是一个复杂的时空过程。了解整个城市交通系统的动态行为将使交通组织者能够确定交通拥堵的根源。在这项研究中,我们基于动态图对北京的出租车轨迹数据集进行了深入分析,并采用了经过流量修正的PageRank算法来评估城市交通需求。通过生成特征向量,我们分析了北京交通需求分布的时空格局。我们获得了北京交通需求分布的概况,并成功提取了交通需求大的不同区域。我们发现,北京的大部分交通需求都在白天位于内部环路上,而在夜间则位于外围高速公路上,这表明路网的结构以及驾驶员选择较快路径的倾向仍然是影响城市交通的最主要因素。

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