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Modelling interdependencies over incomplete join structures of power law networks

机译:在幂律网络的不完整联接结构上建立相互依赖性模型

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The interdependence of critical infrastructures, particularly of information and telecommunication networks and systems and electrical power networks has been studied intensively employing a number of different methods ranging from semi-qualitative Leontief models via percolation models and related approaches from statistical physics to agent and graph-theoretical models. In this paper we focus on the latter approach and study the structures arising from incomplete joining of two power-law networks. Both ICT and power networks are artificial networks, but a number of studies demonstrate that such networks generally exhibit scale-free properties and can be described with high accuracy by power-law degree sequence graphs. A well-known result is that the robustness of such networks to random failures and intentional attack differs considerably, with high levels of vulnerability to targeted attacks. However, differences in robustness exist based on the exact degree sequence. Dependencies between two or more such networks can result in both dependency paths, where the length of paths and the existence of vertex-and edge-disjoint paths can inform mitigation mechanisms; more importantly, however, cycles arising indicate the existence of interdependencies that may be more difficult to recover from or mitigate. This has been studied previously for both simple graphs and for flows; however, we argue that particularly for the case of (inter-)dependencies between power and ICT networks in smart grid environments, this relation between the graphs is itself not static. We consider the existence, addition, or removal of dependencies in the form of sparse random graphs resulting in the creation of interdependence cycles. The diameter of such cycles can serve as a strong indicator of the vulnerability of the overall network as it is indicative of the attack surface of the network. The introduction of additional edges in the graph, indicating information flows in the smart grid, can- hence reduce vulnerabilities, hence the efficient discovery of such structures for a given graph is of particular interest.
机译:关键基础设施的相互依赖性,特别是信息和电信网络,系统和电力网络的相互依赖性,已通过多种方法进行了深入研究,从半定性Leontief模型到渗流模型,以及从统计物理学到代理和图论的相关方法。楷模。在本文中,我们将重点放在后一种方法上,并研究由于两个幂律网络的不完全结合而产生的结构。 ICT和电力网络都是人工网络,但是许多研究表明,此类网络通常表现出无标度特性,并且可以通过幂律度序列图进行高精度描述。众所周知的结果是,此类网络对随机故障和故意攻击的鲁棒性差异很大,对目标攻击的脆弱性很高。但是,基于精确度顺序存在鲁棒性差异。两个或多个此类网络之间的依赖关系可能导致两条依赖路径,其中路径的长度以及顶点和边缘不相交路径的存在可以为缓解机制提供信息;然而,更重要的是,出现的周期表明存在相互依赖关系,而相互依赖关系可能更难从中恢复或缓解。先前已经针对简单图形和流进行了研究。但是,我们认为,特别是对于智能电网环境中电力和ICT网络之间的(相互)依赖关系,图表之间的这种关系本身并不是静态的。我们考虑以稀疏随机图的形式存在,添加或删除依赖项,从而导致相互依赖循环的产生。这样的周期的直径可以强烈指示整个网络的脆弱性,因为它表明了网络的攻击面。在图表中引入额外的边缘以指示信息在智能电网中的流动,因此可以减少漏洞,因此,对于给定的图表有效发现此类结构尤为重要。

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