利用三模块框架最小化公用事业控制中心智能电网网络攻击认知差距

Aditya Sundararajan, Longfei Wei, Tanwir Khan, A. Sarwat, Deepal Rodrigo
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引用次数: 8

摘要

公用事业指挥和控制中心的操作和信息技术支持人员不断检测智能电网中的可疑事件和/或极端情况。他们已经被常规的强制性任务(如遵循指导方针和打补丁)压得喘不过气来,如果忽视这些任务可能会招致惩罚,他们几乎没有时间去理解入侵检测系统、防火墙和其他安全工具生成的大量事件日志。这些强大的自动化工具和人类思维之间的认知差距减少了对情况的感知,从而增加了对进化良好的攻击者有利的次优决策的可能性。本文提出了一个三模块框架,将低性能的处理速度和数据情境化转变为智能学习算法,仅为人类提供可操作的信息,从而弥合认知差距。该框架有三个模块,包括数据模块(DM): Kafka、Spark和R,用于摄取异构数据流;分类模块(CM):对处理后的数据进行分类的长短期记忆(LSTM)模型;行动模块(AM):分别用于时间关键型和非时间关键型决策的自然主义和理性模型。本文重点介绍了模块的设计和开发,并利用部分合成的真实智能电网网络安全数据流演示了DM的概念验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Tri-Modular Framework to Minimize Smart Grid Cyber-Attack Cognitive Gap in Utility Control Centers
The Operation and Information Technology support personnel at utility command and control centers constantly detect suspicious events and/or extreme conditions across the smart grid. Already overwhelmed by routine mandatory tasks like guidelines compliance and patching that if ignored could incur penalties, they have little time to understand the large volumes of event logs generated by intrusion detection systems, firewalls, and other security tools. The cognitive gap between these powerful automated tools and the human mind reduces the situation awareness, thereby increasing the likelihood of sub-optimal decisions that could be advantageous to well-evolved attackers. This paper proposes a tri-modular framework which shifts low-performance processing speed and data contextualization to intelligent learning algorithms that provide humans only with actionable information, thereby bridging the cognitive gap. The framework has three modules including Data Module (DM): Kafka, Spark, and R to ingest streams of heterogeneous data; Classification Module (CM): a Long Short-Term Memory (LSTM) model to classify processed data; and Action Module (AM): naturalistic and rational models for time-critical and non-time-critical decision-making, respectively. This paper focuses on the design and development of the modules, and demonstrates proof-of-concept of DM using partially synthesized streams of real smart grid network security data.
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