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首页> 外文期刊>International Journal on Critical Infrastructure Protection >Using a random road graph model to understand road networks robustness to link failures
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Using a random road graph model to understand road networks robustness to link failures

机译:使用随机路图模型来了解道路网络的鲁棒性链接故障

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Disruptions to the transport system have a greater impact on society and the economy now than ever before due to the increased interconnectivity and interdependency of the economic sectors. The ability of transport systems to maintain functionality despite various disturbances (i.e. robustness) is hence of tremendous importance and has been the focus of research seeking to support transport planning, design and management. These approaches and findings may nevertheless be only valid for the specific networks studied. The present study attempts to find universal insights into road networks robustness by exploring the correlation between different network attributes and network robustness to single, multiple, random and targeted link failures. For this purpose, the common properties of road graphs were identified through a literature review. On this basis, the GREREC model was developed to randomly generate a variety of abstract networks presenting the topological and operational characteristics of real-road networks, on which a robustness analysis was performed. This analysis quantifies the difference between the link criticality rankings when only single-link failures are considered as opposed to when multiple-link failures are considered and the difference between the impact of targeted and random attacks. The influence of the network attributes on the network robustness and on these two differences is shown and discussed. Finally, this analysis is also performed on a set of real road networks to validate the results obtained with the artificial networks. (C) 2020 The Authors. Published by Elsevier B.V.This is an open access article under the CC BY license. ( http://creativecommons.org/licenses/by/4.0/ )
机译:由于经济部门的相互连接和相互依存性增加,运输系统对社会和经济的破坏产生了更大的影响。运输系统以维持功能的能力尽管各种干扰(即稳健性)因此是巨大的重要性,并且一直是寻求支持运输计划,设计和管理的研究的重点。然而,这些方法和调查结果可能仅适用于所研究的特定网络。本研究试图通过探索不同网络属性与网络鲁棒性与单个,多个随机和有针对性的链接故障之间的相关性来找到通用洞察力稳健性。为此目的,通过文献综述确定了道路图的共同属性。在此基础上,谷格模型开发为随机生成呈现实际公路网络拓扑和操作特性的各种抽象网络,在此进行稳健性分析。此分析量化在考虑单链路故障时仅考虑单链路故障时的链接临界性排名之间的差异,当考虑多链路故障时,有针对性和随机攻击的影响之间的差异。讨论并讨论了网络属性对网络鲁棒性以及对这两个差异的影响。最后,在一组真正的道路网络上还执行该分析以验证用人造网络获得的结果。 (c)2020作者。由elsevier b.v发布。这是CC下的开放式访问文件。 (http://creativecommons.org/licenses/by/4.0/)

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