基于张量的多层复杂系统级联故障谱分析

Songyang Zhang, Han Zhang, Hang Li, Shuguang Cui
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引用次数: 9

摘要

多层复杂系统的级联失效是目前业界和学术界非常关注的问题。在本文中,我们提出了一个基于可伸缩张量的框架来表示相互依赖的多层网络,并使用该框架来分析基于易感-感染-易感(SIS)流行病模型的故障传播。具体地说,推导了过渡方程和过渡张量来表征失效传播的行为。我们证明了转换张量的谱半径是一个带有显式故障阈值的故障指示器,可以用来衡量系统的可靠性。此外,为了使失效指标具有解析性和计算效率,我们推导了它的上界和下界,以及它在特殊情况下作为邻接张量和流行参数的函数的近似表达式。在一组随机图生成的多层网络中进行了仿真,结果表明,与其他基准逼近方法相比,我们的分析结果可以达到预期的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tensor-based Spectral Analysis of Cascading Failures over Multilayer Complex Systems
Cascading failure in multilayer complex systems draws significant attentions from both industry and academia nowadays. In this paper, we propose a scalable tensor-based framework to represent the interdependent multilayer network, and use this framework to analyze the failure propagation based on a susceptible-infectious-susceptible (SIS) epidemic model. Specifically, the transition equations and transition tensor are derived to characterize the behavior of failure propagation. We show that the spectral radius of transition tensor is a failure indicator with an explicit failure threshold to measure the system reliability. Moreover, to make the failure indicator analytically tractable and computationally efficient, we derive its upper and lower bounds, as well as its approximated expressions in special cases as functions of the adjacency tensor and epidemic parameters. Our analytical results are evaluated by simulations in a set of multilayer networks generated by random graphs, which show that our results can achieve the desired performance compared with other benchmark approximation methods.
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