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Dynamic analysis of traffic time series at different temporal scales: A complex networks approach

机译:不同时间尺度上交通时间序列的动态分析:一种复杂的网络方法

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The analysis of dynamics in traffic flow is an important step to achieve advanced traffic management and control in Intelligent Transportation System (ITS). Complexity and periodicity are definitely two fundamental properties in traffic dynamics. In this study, we first measure the complexity of traffic flow data by Lempel-Ziv algorithm at different temporal scales, and the data are collected from loop detectors on freeway. Second, to obtain more insight into the complexity and periodicity in traffic time series, we then construct complex networks from traffic time series by considering each day as a cycle and each cycle as a single node. The optimal threshold value of complex networks is estimated by the distribution of density and its derivative. In addition, the complex networks are subsequently analyzed in terms of some statistical properties, such as average path length, clustering coefficient, density, average degree and betweenness. Finally, take 2 min aggregation data as example, we use the correlation coefficient matrix, adjacent matrix and closeness to exploit the periodicity of weekdays and weekends in traffic flow data. The findings in this paper indicate that complex network is a practical tool for exploring dynamics in traffic time series.
机译:交通流动态分析是在智能交通系统(ITS)中实现高级交通管理和控制的重要步骤。复杂性和周期性无疑是交通动态中的两个基本属性。在这项研究中,我们首先通过Lempel-Ziv算法在不同的时间尺度上测量交通流数据的复杂性,然后从高速公路上的环路检测器收集数据。其次,为了获得对交通时间序列的复杂性和周期性的更多了解,然后我们将交通时间序列中的每一天都视为一个周期,并将每个周期都视为一个节点,从而构建出复杂的网络。通过密度及其导数的分布来估计复杂网络的最佳阈值。另外,随后根据一些统计属性对复杂网络进行分析,例如平均路径长度,聚类系数,密度,平均程度和中间性。最后,以2分钟的聚合数据为例,我们使用相关系数矩阵,相邻矩阵和接近度来研究交通流数据中工作日和周末的周期性。本文的发现表明,复杂网络是探索交通时间序列动态的实用工具。

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