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Identifying Critical Components in Infrastructure Networks Using Network Topology

机译:使用网络拓扑识别基础结构网络中的关键组件

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This paper applies graph theory metrics to network flow models, with the aim of assessing the possibility of using these metrics to identify vulnerable areas within infrastructure systems. To achieve this, a reduced complexity flow model that can be used to simulate flows in infrastructure networks is developed. The reason for developing this model is not to make the analysis easier, but to reduce the physical problem to its most basic level and therefore produce the most general flow model (i.e., applicable to the widest range of infrastructure networks). An initial assessment of the applicability of graph theory metrics to infrastructure networks is made by comparing the distribution of flows, calculated using this model, to the shortest average path length in three of the most recognized classes of network-scale-free networks, small-world networks, and random graph models-and it is demonstrated that for all three classes of network there is a strong correlation. This suggests that at least parts of graph theory may be used to inform one about the behavior of physical networks. The authors further demonstrate the utility of graph theory metrics by using them to improve their predictive skill in identifying vulnerable areas in a specific type of infrastructure system. This is done using a hydraulic model to calculate the flows in a sample water distribution network and then to show that using a combination of graph theory metrics and flow gives superior predictive skill over just one of these measures in isolation.
机译:本文将图论指标应用于网络流量模型,目的是评估使用这些指标来识别基础架构系统中易受攻击区域的可能性。为此,开发了可用于模拟基础设施网络中流量的降低复杂性的流量模型。开发此模型的原因不是为了简化分析,而是将物理问题减少到最基本的水平,从而产生最通用的流量模型(即适用于最广泛的基础架构网络)。通过将使用该模型计算的流量分布与三种最广为人知的无标度网络类别中的最短平均路径长度进行比较,初步评估了图论指标对基础设施网络的适用性。世界网络和随机图模型-并证明,对于所有这三类网络,都有很强的相关性。这表明图论的至少一部分可以用来告知物理网络的行为。作者还通过使用图论指标来提高其在识别特定类型的基础架构系统中的脆弱区域时的预测能力,从而证明了图论指标的实用性。这是通过使用水力模型来计算样本水分配网络中的流量来完成的,然后表明结合使用图论指标和流量可以比单独使用其中的一种方法提供更好的预测能力。

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