Optimal Defense Strategy Against Load Redistribution Attacks under Attacker’s Resource Uncertainty: A Trilevel Optimization Approach

Jinshun Su, Chengzhi Xie, P. Dehghanian, S. Mehrani
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引用次数: 2

Abstract

The wide deployment of advanced computer technologies and evolving digitalization in power systems monitoring and control will inevitably make the power grid more vulnerable to cyber adversaries. Regarded as a viable cyber attack mechanism against power grids, load redistribution (LR) attack may mislead the power re-dispatch and cause unnecessary load outages. In this research, we develop a strategy for optimal allocation of limited defensive resources to safeguard power systems against LR attacks. The proposed defense scheme against LR attack is formulated as a trilevel optimization problem. To capture the uncertainty of attacking resources, we present a chance-constrained programming formulation where chance constraint is used to capture the possible variations in the attacker’s actions constrained by the uncertain available resources. The Karush- Kuhn-Tucker (KKT) condition and Benders decomposition algorithm are applied to solve the trilevel optimization problem. Case studies on the IEEE 57-bus test system demonstrate the efficiency of the resulting defense decisions against LR attacks.
攻击者资源不确定性下负载重分配攻击的最优防御策略:一种三级优化方法
先进计算机技术的广泛应用和电力系统监测和控制的数字化发展将不可避免地使电网更容易受到网络对手的攻击。负载重分配攻击是一种可行的电网网络攻击机制,它可能会误导电网的重新调度,造成不必要的负荷中断。在本研究中,我们开发了一种有限防御资源的优化分配策略,以保护电力系统免受LR攻击。提出的LR攻击防御方案是一个三级优化问题。为了捕获攻击资源的不确定性,我们提出了一个机会约束规划公式,其中机会约束用于捕获受不确定性可用资源约束的攻击者行为的可能变化。应用Karush- Kuhn-Tucker (KKT)条件和Benders分解算法求解三层优化问题。对IEEE 57总线测试系统的案例研究证明了所得到的针对LR攻击的防御决策的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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