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Identifying multiple vulnerable areas of infrastructure network under global connectivity measure

机译:在全球连接度量下识别基础设施网络的多个易受攻击区域

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摘要

Infrastructure networks provide significant services for our society. Nevertheless, high dependence on physical infrastructures makes infrastructure networks vulnerable to disasters or intentional attacks which being considered as geographically related failures that happened in specific geographical locations and result in failures of neighboring network components. To provide comprehensive network protection against failures, vulnerability of infrastructure network needs to be assessed with various network performance measures. However, when considering about multiple vulnerable areas, available researches just employ measure of total number of affected edges while neglecting edges' different topologies. In this paper, we focus on identifying multiple vulnerable areas under global connectivity measure: Size Ratio of the Giant Component (SRGC). Firstly, Deterministic Damage Circle Model and Multiple Barycenters Method are presented to determine damage impact and location of damage region. For solving the HP-hard problem of identifying multiple optimal attacks, we transform the problem into combinational optimization problem and propose a mixed heuristic strategy consisted of both Greedy Algorithm and Genetic Algorithm to attain the optimal solution. We obtain numerical results for real-world infrastructure network, thereby demonstrating the effectiveness and applicability of the presented strategy and algorithms. The distinctive results of SRGC indicate the necessity and significance of considering global connectivity measure in assessing vulnerability of infrastructure networks.
机译:基础设施网络为我们的社会提供了重要的服务。尽管如此,对物理基础设施的高依赖使基础设施网络容易受到灾害或故意攻击的攻击,这些攻击被视为在特定地理位置中发生的地理相关的失败,并导致相邻网络组件的故障。为提供全面的网络保护防范失败,需要通过各种网络性能措施进行基础设施网络的脆弱性。但是,在考虑多个易受攻击的区域时,可用的研究只采用受影响边缘总数的措施,同时忽略了边缘的不同拓扑。在本文中,我们专注于识别全局连接测量下的多个易受攻击区域:巨大分量(SRGC)的尺寸比。首先,提出了确定性损伤圆模型和多个重心方法以确定损伤区域的损伤影响和位置。为了解决识别多次最佳攻击的HP难题,我们将问题转换为组合优化问题,提出了一种混合启发式策略,包括贪婪算法和遗传算法来获得最佳解决方案。我们获得现实世界基础设施网络的数值结果,从而展示了所呈现的策略和算法的有效性和适用性。 SRGC的独特结果表明了考虑在评估基础设施网络脆弱性方面的全球连接措施的必要性和意义。

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