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Big Data Analysis Techniques for Cyber-threat Detection in Critical Infrastructures

机译:关键基础设施中用于网络威胁检测的大数据分析技术

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The research presented in this paper offers a way of supporting the security currently in place in critical infrastructures by using behavioural observation and big data analysis techniques to add to the Defence in Depth (DiD). As this work demonstrates, applying behavioural observation to critical infrastructure protection has effective results. Our design for Behavioural Observation for Critical Infrastructure Security Support (BOCISS) processes simulated critical infrastructure data to detect anomalies which constitute threats to the system. This is achieved using feature extraction and data classification. The data is provided by the development of a nuclear power plant simulation using Siemens Tecnomatix Plant Simulator and the programming language SimTalk. Using this simulation, extensive realistic data sets are constructed and collected, when the system is functioning as normal and during a cyber-attack scenario. The big data analysis techniques, classification results and an assessment of the outcomes is presented.
机译:本文提出的研究通过使用行为观察和大数据分析技术来增加深度防御(DiD),提供了一种支持关键基础架构中当前存在的安全性的方法。正如这项工作所表明的那样,将行为观察应用于关键的基础设施保护具有有效的结果。我们的关键基础设施安全支持行为观察设计(BOCISS)处理关键的基础设施数据,以检测对系统构成威胁的异常。这是使用特征提取和数据分类实现的。数据是通过使用Siemens Tecnomatix工厂模拟器和编程语言SimTalk开发核电厂模拟提供的。使用该模拟,可以在系统正常运行时以及在网络攻击情况下构建和收集大量的实际数据集。介绍了大数据分析技术,分类结果和结果评估。

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