On the importance of adopting a multi-centrality approach to detecting the vital nodes of urban road networks

Zahra Khoshouei Esfahani , Meisam Akbarzadeh , Francesco Corman
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Abstract

Transportation networks are prone to various types of disturbances, ranging from regular rush hour congestion to occasional closures due to construction zones, accidents, etc. It is impossible to avoid all disruptions, but detecting the critical points of networks (i.e., nodes that noticeably affect the connectedness of the network when closed) would help urban transportation managers prioritize preventive actions. Centrality measures are used to quantify the importance of network nodes. In this study, we calculated various centrality measures for six existing urban road networks and evaluated their importance to the connectivity and functionality of the networks via a percolation method. Along with well-established centrality measures such as betweenness, communicability, and the clustering coefficient, we evaluated the collective influence (CI) and the enhanced collective influence (ECI) indices in a transportation context. We found that nodes with high values of CI or ECI are not the ones with high values of betweenness, communicability and the clustering coefficient. Nevertheless, failures of nodes with high values of CI, ECI or betweenness centrality most significantly affect the connectivity and functionality of urban road networks. We identified three distinct sets of vital nodes in the networks we analyzed. Hence, we conclude that a set of centrality measures should be used to detect vital topological nodes of urban networks rather than just one centrality measure. Moreover, we investigated employing various aspects of CI and ECI to reveal the critical nodes of urban road networks.

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采用多中心方法探测城市路网重要节点的重要性
交通网络很容易受到各种类型的干扰,从上下班高峰时段的常规拥堵到因施工区、事故等原因造成的偶尔关闭。要避免所有干扰是不可能的,但检测网络的关键点(即关闭时明显影响网络连通性的节点)将有助于城市交通管理者优先采取预防措施。中心度量用于量化网络节点的重要性。在本研究中,我们计算了六个现有城市道路网络的各种中心度量,并通过渗滤法评估了它们对网络连通性和功能性的重要性。除了公认的中心性度量,如间距、可沟通性和聚类系数,我们还评估了交通背景下的集体影响力(CI)和增强集体影响力(ECI)指数。我们发现,CI 或 ECI 值高的节点并非是 betweenness、可传播性和聚类系数值高的节点。然而,具有高 CI 值、ECI 值或间度中心性的节点失效对城市道路网络的连通性和功能性影响最大。我们在分析的网络中发现了三组不同的重要节点。因此,我们得出结论,应使用一组中心度量来检测城市网络的重要拓扑节点,而不是仅使用一种中心度量。此外,我们还研究了利用 CI 和 ECI 的各个方面来揭示城市道路网络的关键节点。
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