Nodes and links jointed critical region identification based network vulnerability assessing

Song Wang, Tiankui Zhang, Chunyan Feng
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引用次数: 2

Abstract

Large-scale regionally-correlated failures resulting from natural disasters or intentional attacks pose a great threat to the physical backbone networks, since the impact of large-scale failures can cause network nodes and links co-located in a large geographical area to fail. When the same intensity of threats occurs at different physical locations, the damage to the network performance varies greatly. In the network vulnerability assessment, the critical region is defined as the destructed area which would lead to the highest network disruption. Traditional critical region identification for network vulnerability assessment is only determined by nodes, without considering the failures of the links. To this end, this paper proposes a critical region identification method that joints nodes and links to find the critical region. We study this vulnerability assessment problem in two cases, the special case of the failure center constrained at a network node and the general one of that at an arbitrary location, and propose two algorithms for these two cases respectively. The simulation-based experiment on synthetic network is given with different criticality metrics. The simulation results verify the feasibility and effectiveness of our proposed critical region identification method in comparison to others.
基于节点和链路连接关键区域识别的网络脆弱性评估
由于自然灾害或故意攻击导致的大规模区域相关故障对物理骨干网构成了极大的威胁,大规模故障的影响可能导致位于大地理区域内的网络节点和链路失效。当相同强度的威胁发生在不同的物理位置时,对网络性能的破坏程度差别很大。在网络脆弱性评估中,临界区域被定义为导致网络中断程度最高的破坏区域。传统的网络脆弱性评估关键区域识别仅由节点确定,未考虑链路失效情况。为此,本文提出了一种连接节点和链路寻找关键区域的关键区域识别方法。研究了两种情况下的脆弱性评估问题,即故障中心被约束在某一网络节点的特殊情况和故障中心被约束在任意位置的一般情况,并分别针对这两种情况提出了两种算法。采用不同的临界指标对合成网络进行了仿真实验。仿真结果验证了所提关键区域识别方法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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