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Resiliency of Intelligent Transportation Systems to Critical Disruptions: An Eigenvalue-Based Viewpoint

机译:智能交通系统对危重中断的弹性:基于特征值的观点

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Identification of important nodes/links is critical for understanding the resiliency of transportation networks in response to disruptions. Envisioning an intelligent transportation system requires effective monitoring of different components of a transportation network, such as nodes and links. For example, identification of critical nodes/links for placing different monitoring devices (e.g., cameras) is an important task of an intelligent transportation system. This paper is focused on identifying important nodes of a given transportation network based on a novel approach that minimizes the largest eigenvalue of an adjacency matrix of a transportation network. We tested the proposed approach on the Guam road network. Our results suggested that if capacities of 15% of the critical nodes are reduced by 50%, the connectivity of the entire network drops by 50%, which is significant performance degradation. The proposed approach is more effective than existing popular metrics (e.g., betweenness) in identifying a subset of critical nodes/links.
机译:重要节点/链接的识别对于了解运输网络的弹性响应中断至关重要。设想智能交通系统需要有效监控运输网络的不同组件,例如节点和链接。例如,识别用于放置不同监视设备的关键节点/链路(例如,相机)是智能运输系统的重要任务。本文的重点是基于一种基于一种新的方法来识别给定运输网络的重要节点,其最小化运输网络的邻接矩阵的最大特征值。我们在关岛公路网上测试了拟议的方法。我们的研究结果表明,如果15%的关键节点的容量减少了50%,整个网络的连接下降了50%,这是显着的性能下降。在识别关键节点/链接的子集中,所提出的方法比现有的流行度量(例如,之间)更有效。

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