电力系统扰动与网络攻击判别的机器学习

Raymond Borges Hink, Justin M. Beaver, M. Buckner, T. Morris, U. Adhikari, S. Pan
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引用次数: 234

摘要

电力系统的干扰本质上是复杂的,可以归因于各种各样的来源,包括自然和人为事件。目前,电力系统操作员在很大程度上依赖于对所经历的干扰的原因和作为响应的适当行动方案做出决策。在针对电力系统的网络攻击的情况下,人类的判断不太确定,因为有公开的企图掩盖攻击并欺骗运营商关于系统的真实状态。为了使人类决策者能够进行决策,我们探索了机器学习作为区分电力系统干扰类型的手段的可行性,并特别关注检测网络攻击,其中欺骗是事件的核心原则。我们评估了各种机器学习方法作为干扰鉴别器,并讨论了部署机器学习系统作为现有电力系统架构增强的实际意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning for power system disturbance and cyber-attack discrimination
Power system disturbances are inherently complex and can be attributed to a wide range of sources, including both natural and man-made events. Currently, the power system operators are heavily relied on to make decisions regarding the causes of experienced disturbances and the appropriate course of action as a response. In the case of cyber-attacks against a power system, human judgment is less certain since there is an overt attempt to disguise the attack and deceive the operators as to the true state of the system. To enable the human decision maker, we explore the viability of machine learning as a means for discriminating types of power system disturbances, and focus specifically on detecting cyber-attacks where deception is a core tenet of the event. We evaluate various machine learning methods as disturbance discriminators and discuss the practical implications for deploying machine learning systems as an enhancement to existing power system architectures.
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