School of Reliability and Systems Engineering, Beihang University, Beijing, 100191, P.R. China.
Key Laboratory of Science &Technology on Reliability &Environmental Engineering, Beihang University, Beijing, 100191, P.R. China.
Sci Rep. 2016 Nov 28;6:37749. doi: 10.1038/srep37749.
The dependency property and self-recovery of failure nodes both have great effects on the robustness of networks during the cascading process. Existing investigations focused mainly on the failure mechanism of static dependency groups without considering the time-dependency of interdependent nodes and the recovery mechanism in reality. In this study, we present an evolving network model consisting of failure mechanisms and a recovery mechanism to explore network robustness, where the dependency relations among nodes vary over time. Based on generating function techniques, we provide an analytical framework for random networks with arbitrary degree distribution. In particular, we theoretically find that an abrupt percolation transition exists corresponding to the dynamical dependency groups for a wide range of topologies after initial random removal. Moreover, when the abrupt transition point is above the failure threshold of dependency groups, the evolving network with the larger dependency groups is more vulnerable; when below it, the larger dependency groups make the network more robust. Numerical simulations employing the Erdős-Rényi network and Barabási-Albert scale free network are performed to validate our theoretical results.
依赖属性和故障节点的自恢复对级联过程中网络的鲁棒性都有很大的影响。现有研究主要集中在静态依赖组的失效机制上,而没有考虑到相关节点的时间依赖性和实际中的恢复机制。在这项研究中,我们提出了一个由失效机制和恢复机制组成的演化网络模型,以研究网络的鲁棒性,其中节点之间的依赖关系随时间变化。基于生成函数技术,我们为具有任意度分布的随机网络提供了一个分析框架。特别是,我们从理论上发现,在初始随机删除后,对于广泛的拓扑结构,存在与动态依赖组对应的突然渗流转变。此外,当突然转变点高于依赖组的失效阈值时,具有较大依赖组的演化网络更脆弱;当低于该阈值时,较大的依赖组使网络更健壮。采用 Erdős-Rényi 网络和 Barabási-Albert 无标度网络进行的数值模拟验证了我们的理论结果。