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Calibration of traffic flow fundamental diagrams for network simulation applications: A two-stage clustering approach

机译:用于网络仿真应用的流量基本图的校准:两阶段聚类方法

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This paper aims to propose a two-stage clustering approach for calibration of traffic flow fundamental diagrams for dynamic traffic assignment (DTA) simulations. Unlike previous research efforts focusing on supervised grouping strategies that are largely dependent on roadway physical attributes, a data-driven perspective is explored using big traffic data. The two-regime modified Greenshields traffic flow model is used to fit the historical observations on a daily basis using the non-linear least squares method. A two-stage clustering approach is proposed based on the calibrated models where the first stage aims to capture day-to-day variations in traffic flow fundamental diagrams while the second stage aims to aggregate links with similar traffic flow characteristics. The standard k-means algorithm is applied in the first stage and a modified hierarchical clustering based on the Fréchet distance is proposed in the second stage. The calibrated and clustered results highlight the feasibility and the effectiveness of the proposed approach.
机译:本文旨在为动态交通分配(DTA)模拟的交通流基本图的校准提出一种两阶段聚类方法。与以往的研究主要集中在主要依赖巷道物理属性的监督分组策略上不同,使用大流量数据来探索数据驱动的观点。两种修正的Greenshields交通流模型用于使用非线性最小二乘法每天拟合历史观测值。提出了一种基于校准模型的两阶段聚类方法,其中第一阶段旨在捕获交通流基本图中的每日变化,而第二阶段旨在聚集具有相似交通流特征的链接。在第一阶段应用标准k均值算法,在第二阶段提出基于Fréchet距离的改进层次聚类。校准和聚类的结果突出了该方法的可行性和有效性。

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