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具有内部依赖和相互依赖链接的耦合网络中的级联故障。

Cascading failures in coupled networks with both inner-dependency and inter-dependency links.

作者信息

Liu Run-Ran, Li Ming, Jia Chun-Xiao, Wang Bing-Hong

机构信息

Alibaba Research Center for Complexity Sciences, Hangzhou Normal University, Hangzhou, 311121, People's Republic of China.

Department of Modern Physics, University of Science and Technology of China, Hefei, 230026, People's Republic of China.

出版信息

Sci Rep. 2016 May 4;6:25294. doi: 10.1038/srep25294.

Abstract

We study the percolation in coupled networks with both inner-dependency and inter-dependency links, where the inner- and inter-dependency links represent the dependencies between nodes in the same or different networks, respectively. We find that when most of dependency links are inner- or inter-ones, the coupled networks system is fragile and makes a discontinuous percolation transition. However, when the numbers of two types of dependency links are close to each other, the system is robust and makes a continuous percolation transition. This indicates that the high density of dependency links could not always lead to a discontinuous percolation transition as the previous studies. More interestingly, although the robustness of the system can be optimized by adjusting the ratio of the two types of dependency links, there exists a critical average degree of the networks for coupled random networks, below which the crossover of the two types of percolation transitions disappears, and the system will always demonstrate a discontinuous percolation transition. We also develop an approach to analyze this model, which is agreement with the simulation results well.

摘要

我们研究了具有内部依赖性和相互依赖性链接的耦合网络中的渗流问题,其中内部依赖性链接和相互依赖性链接分别表示同一网络或不同网络中节点之间的依赖性。我们发现,当大多数依赖性链接是内部或相互依赖性链接时,耦合网络系统是脆弱的,并且会发生不连续的渗流转变。然而,当两种类型的依赖性链接数量彼此接近时,系统是稳健的,并且会发生连续的渗流转变。这表明,与先前的研究不同,依赖性链接的高密度并不总是导致不连续的渗流转变。更有趣的是,尽管可以通过调整两种类型的依赖性链接的比例来优化系统的稳健性,但对于耦合随机网络存在一个关键的网络平均度,低于该平均度时,两种类型的渗流转变的交叉消失,并且系统将始终表现出不连续的渗流转变。我们还开发了一种方法来分析该模型,该方法与模拟结果吻合良好。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2312/4855168/dc9e7a4327f3/srep25294-f1.jpg

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