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Dynamic identification of urban traffic congestion warning communities in heterogeneous networks

机译:异构网络中城市交通拥堵警报社区的动态识别

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摘要

Network-wide traffic control strategies (e.g. perimeter control and route guidance) in urban networks have recently been mainly studied to relieve or postpone congestion based on the theory of macroscopic fundamental diagram (MFD). Nevertheless, these studies are mostly applied to the statically partitioned networks or the dynamic networks that fail to fully consider traffic state prediction, conflicting with strongly spatiotemporal variability of traffic congestion or objective of active traffic management (ATM). This paper proposes a methodology to dynamically identify critical congestion warning areas from heterogeneous urban road networks, which aids to design efficient perimeter control approaches. In the methodology, a dynamic directed weighted network is built on the base of the link connectivity and the real-time traffic loads, and a link travel time prediction method based on Kalman filter is developed to calibrate directed weight values and undirected input values for links. With the undirected link input information, a dynamic congestion warning community detection method which consists of three consecutive steps is developed. Firstly, it could capture emergence of new congestion areas based on the definition of congestion seed intersection. Secondly, expansion and regression of each congested area could be achieved with the objectives of spatial compactness and traffic condition homogeneity. Thirdly, a two-level merging algorithm of adjacent different congestion areas is designed utilizing modularity model in community detection of complex networks. The proposed methodology is validated using ground truth data from downtown network of Jinan City in China. The results show that the proposed algorithms can efficiently track congestion evolutionary processes and effectively detect congestion warning areas from the test real network. (C) 2019 Elsevier B.V. All rights reserved.
机译:全网的流量控制策略(例如外围控制和路线指引)在城市网络最近主要研究减轻或基于宏观的基本图(MFD)的理论推迟拥堵。然而,这些研究大多应用于静态划分的网络或动态网络未能充分考虑交通状况预测,随着交通拥堵的强烈时空变异或客观积极的交通管理(ATM)的冲突。本文提出了一种方法来动态地识别来自异类城市道路网络,这有助于设计有效控制周边接近临界拥堵预警区域。在该方法中,动态向加权网络上建立链路的连通性和实时流量负载,并基于卡尔曼滤波的链路行程时间预测方法的基础上被开发以校准的链接指向的权重值和无向的输入值。随着无向链路输入信息,其中包括三个连续的步骤展开的动态拥堵报警社区检测方法。首先,它可以捕捉的基础上拥堵路口种子的定义新的拥堵地区出现。其次,每个混杂区域的膨胀和回归可以与空间的紧凑性和交通状况的均匀性的目标来实现。第三,相邻的不同拥堵区的两级合并算法旨在利用社会检测复杂网络的模块化模型。该建议的方法是使用从济南市在中国的网络中心城区地面实测数据进行了验证。结果表明,该算法可以有效地跟踪拥挤的进化过程,有效地从测试真实网络检测拥塞预警区域。 (c)2019 Elsevier B.v.保留所有权利。

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