Associated Laboratory for Computing and Applied Mathematics, National Institute for Space Research, Sao José dos Campos, SP 12243-010, Brazil.
Luxembourg Centre for Systems Biomedicine, University of Luxembourg, Belvaux L-4367, Luxembourg.
Chaos. 2023 Mar;33(3):033122. doi: 10.1063/5.0137919.
Interconnected systems with critical infrastructures can be affected by small failures that may trigger a large-scale cascade of failures, such as blackouts in power grids. Vulnerability indices provide quantitative measures of a network resilience to component failures, assessing the break of information or energy flow in a system. Here, we focus on a network vulnerability analysis, that is, indices based solely on the network structure and its static characteristics, which are reliably available for most complex networks. This work studies the structural connectivity of power grids, assessing the main centrality measures in network science to identify vulnerable components (transmission lines or edges) to attacks and failures. Specifically, we consider centrality measures that implicitly model the power flow distribution in power systems. This framework allow us to show that the efficiency of the power flow in a grid can be highly sensitive to attacks on specific (central) edges. Numerical results are presented for randomly generated power-grid models and established power-grid benchmarks, where we demonstrate that the system's energy efficiency is more vulnerable to attacks on edges that are central to the power flow distribution. We expect that the vulnerability indices investigated in our work can be used to guide the design of structurally resilient power grids.
具有关键基础设施的互联系统可能会受到小故障的影响,这些小故障可能会引发大规模故障级联,例如电网停电。脆弱性指数为网络对组件故障的弹性提供了定量度量,评估了系统中信息或能量流的中断。在这里,我们专注于网络脆弱性分析,即仅基于网络结构及其静态特性的指数,这些指数对于大多数复杂网络都是可靠可用的。这项工作研究了电网的结构连通性,评估了网络科学中的主要中心性度量,以识别易受攻击和故障影响的脆弱组件(输电线路或边缘)。具体来说,我们考虑了隐式模拟电力系统中功率流分布的中心性度量。该框架使我们能够表明电网中功率流的效率可能对特定(中心)边缘的攻击高度敏感。为随机生成的电网模型和已建立的电网基准呈现了数值结果,我们证明了系统的能量效率对流向分布中心的边缘的攻击更为脆弱。我们希望我们研究中的脆弱性指数可用于指导具有结构弹性的电网的设计。