SCORE: A Security-Oriented Cyber-Physical Optimal Response Engine

A. Sahu, Hao Huang, K. Davis, S. Zonouz
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引用次数: 1

Abstract

Automatic optimal response systems are essential for preserving power system resilience and ensuring faster recovery from emergency under cyber compromise. Numerous research works have developed such response engine for cyber and physical system recovery separately. In this paper, we propose a novel cyber-physical decision support system, SCORE, that computes optimal actions considering pure and hybrid cyber-physical states, using Markov Decision Process (MDP). Such an automatic decision making engine can assist power system operators and network administrators to make a faster response to prevent cascading failures and attack escalation respectively. The hybrid nature of the engine makes the reward and state transition model of the MDP unique. Value iteration and policy iteration techniques are used to compute the optimal actions. Tests are performed on three and five substation power systems to recover from attacks that compromise relays to cause transmission line overflow. The paper also analyses the impact of reward and state transition model on computation. Corresponding results verify the efficacy of the proposed engine.
得分:面向安全的网络物理最佳响应引擎
自动优化响应系统对于保证电力系统的弹性和确保在网络入侵下从紧急情况中更快恢复至关重要。许多研究工作已经分别开发了网络和物理系统恢复的响应引擎。在本文中,我们提出了一个新的网络物理决策支持系统SCORE,它使用马尔可夫决策过程(MDP)来计算考虑纯和混合网络物理状态的最优行为。该自动决策引擎可以帮助电力系统运营商和网络管理员做出更快的响应,分别防止级联故障和攻击升级。发动机的混合特性使得MDP的奖励和状态转换模型是独一无二的。采用值迭代和策略迭代技术计算最优动作。在三个和五个变电站电力系统上进行了测试,以从破坏继电器导致传输线溢出的攻击中恢复过来。本文还分析了奖励和状态转移模型对计算的影响。相应的结果验证了所提引擎的有效性。
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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