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Developing a Hybrid Intrusion Detection System Using Data Mining for Power Systems

机译:使用数据挖掘为电力系统开发混合入侵检测系统

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摘要

Synchrophasor systems provide an immense volume of data for wide area monitoring and control of power systems to meet the increasing demand of reliable energy. The construction of traditional intrusion detection systems (IDSs) that use manually created rules based upon expert knowledge is knowledge-intensive and is not suitable in the context of this big data problem. This paper presents a systematic and automated approach to build a hybrid IDS that learns temporal state-based specifications for power system scenarios including disturbances, normal control operations, and cyber-attacks. A data mining technique called common path mining is used to automatically and accurately learn patterns for scenarios from a fusion of synchrophasor measurement data, and power system audit logs. As a proof of concept, an IDS prototype was implemented and validated. The IDS prototype accurately classifies disturbances, normal control operations, and cyber-attacks for the distance protection scheme for a two-line three-bus power transmission system.
机译:同步相量系统可为电力系统的广域监视和控制提供大量数据,以满足对可靠能源不断增长的需求。使用基于专家知识手动创建的规则的传统入侵检测系统(IDS)的构建是知识密集型的,因此不适用于这种大数据问题。本文提出了一种构建混合IDS的系统化和自动化方法,该IDS可为电力系统场景(包括干扰,正常控制操作和网络攻击)学习基于时间状态的规范。一种称为共通路径挖掘的数据挖掘技术用于从同步相量测量数据和电力系统审计日志的融合中自动,准确地学习方案的模式。作为概念验证,已实施并验证了IDS原型。 IDS原型为两线三总线电力传输系统的距离保护方案准确地将干扰,正常控制操作和网络攻击分类。

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