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An Optimization-Based Framework for the Identification of Vulnerabilities in Electric Power Grids Exposed to Natural Hazards

机译:基于优化的自然灾害电网脆弱性识别框架

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This article proposes a novel mathematical optimization framework for the identification of the vulnerabilities of electric power infrastructure systems (which is a paramount example of critical infrastructure) due to natural hazards. In this framework, the potential impacts of a specific natural hazard on an infrastructure are first evaluated in terms of failure and recovery probabilities of system components. Then, these are fed into a bi-level attacker-defender interdiction model to determine the critical components whose failures lead to the largest system functionality loss. The proposed framework bridges the gap between the difficulties of accurately predicting the hazard information in classical probability-based analyses and the over conservatism of the pure attacker-defender interdiction models. Mathematically, the proposed model configures a bi-level max-min mixed integer linear programming (MILP) that is challenging to solve. For its solution, the problem is casted into an equivalent one-level MILP that can be solved by efficient global solvers. The approach is applied to a case study concerning the vulnerability identification of the georeferenced RTS24 test system under simulated wind storms. The numerical results demonstrate the effectiveness of the proposed framework for identifying critical locations under multiple hazard events and, thus, for providing a useful tool to help decisionmakers in making more-informed prehazard preparation decisions.
机译:本文提出了一种新颖的数学优化框架,用于识别由于自然灾害导致的电力基础设施系统(这是关键基础设施的最重要示例)的脆弱性。在此框架中,首先根据系统组件的故障和恢复概率来评估特定自然灾害对基础架构的潜在影响。然后,将这些信息输入到双层攻击者/防御者拦截模型中,以确定其故障导致最大的系统功能损失的关键组件。所提出的框架弥补了在经典的基于概率的分析中准确预测危害信息的困难与纯攻击者-防御者拦截模型的过度保守之间的差距。在数学上,所提出的模型配置了一个双层最大-最小混合整数线性规划(MILP),该规划难以解决。对于其解决方案,该问题被转换为等效的一级MILP,可以由高效的全局求解器解决。该方法被应用于一个案例研究,该案例研究了在模拟暴风雨中经过地理定位的RTS24测试系统的脆弱性。数值结果表明,提出的框架可用于识别多种危险事件下的关键位置,从而为帮助决策者做出更明智的预警准备决策提供了有用的工具。

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