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A big data approach for clustering and calibration of link fundamental diagrams for large-scale network simulation applications

机译:用于大型网络仿真应用的链路基础图的聚类和校准的大数据方法

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Existing methods for calibrating link fundamental diagrams (FDs) often focus on a limited number of links and use grouping strategies that are largely dependent on roadway physical attributes alone. In this study, we propose a big data-driven two-stage clustering framework to calibrate link FDs for freeway networks. The first stage captures, under normal traffic state, the variations of link FDs over multiple days based on which links are clustered in the second stage. Two methods, i.e. the standard k-means algorithm combined with hierarchical clustering and a modified hierarchical clustering based on the Fréchet distance, are applied in the first stage to obtain the FD parameter matrix for each link. The calibrated matrices are input into the second stage where the modified hierarchical clustering is re-employed asa static approach resulting in multiple clusters of links. To further consider the variations of link FDs, the static approach is extended by modifying the similarity measure through the principle component analysis (PCA). The resulting multivariate time-series clustering models the distributions of the FD parameters asa dynamic approach. The proposed framework is applied on the Melbourne freeway network using one-year worth of loop detector data. Results have shown that (a) similar roadway physical attributes do not necessarily result in similar link FDs, (b) the connectivity-based approach performs better in clustering link FDs as compared with the centroid-based approach, and (c) the proposed framework helps achieving a better understanding of the spatial distribution of links with similar FDs and the associated variations and distributions of the FD parameters.
机译:用于校准路段基本图(FD)的现有方法通常集中在有限数量的路段上,并使用很大程度上仅依赖于道路物理属性的分组策略。在这项研究中,我们提出了一个大数据驱动的两阶段聚类框架来校准高速公路网络的链接FD。在正常流量状态下,第一阶段根据第二阶段中群集的链路,捕获多天链路FD的变化。在第一阶段应用两种方法,即与分层聚类相结合的标准k均值算法和基于Fréchet距离的改进的分层聚类,来获得每个链路的FD参数矩阵。校准后的矩阵被输入到第二阶段,在第二阶段中,将修改后的层次聚类作为静态方法重新使用,从而生成多个链接簇。为了进一步考虑链路FD的变化,通过通过主成分分析(PCA)修改相似性度量来扩展静态方法。所得的多元时间序列聚类将FD参数的分布建模为一种动态方法。拟议的框架通过使用一年的环路检测器数据,被应用于墨尔本高速公路网络。结果表明:(a)相似的巷道物理属性不一定会导致相似的链接FD;(b)与基于质心的方法相比,基于连接的方法在链接FD的聚类中表现更好;以及(c)提出的框架有助于更好地了解具有相似FD的链接的空间分布以及FD参数的相关变化和分布。

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