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Towards Learning Normality for Anomaly Detection in Industrial Control Networks

机译:在工业控制网络中学习异常检测的常态

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Recent trends in automation technology lead to a rising exposition of industrial control systems (ICS) to new vulnerabilities. This requires the introduction of proper security approaches in this field. Prevalent in ICS is the use of access control. Especially in critical infrastructures, however, preventive security measures should be complemented by reactive ones, such as intrusion detection. Beginning from the characteristics of automation networks we outline the implications for a suitable application of intrusion detection in this field. On this basis, an approach for creation of self-learning anomaly detection for ICS protocols is presented. In contrast to other approaches, it takes all network data into account: flow information, application data, and the packet order. We discuss the challenges that have to be solved in each step of the network data analysis to identify future aspects of research towards learning normality in industrial control networks.
机译:最近的自动化技术趋势导致工业控制系统(IC)对新漏洞的阐述。这需要引入该领域的适当安全方法。 IC中的普遍是使用访问控制。然而,特别是在关键基础设施中,应通过反应性的基础设施(例如入侵检测)互补。从自动化网络的特征开始,我们概述了在该领域的入侵检测中适当应用的影响。在此基础上,提出了一种为IC协议创建自学异常检测的方法。与其他方法相比,它将所有网络数据考虑在内:流信息,应用程序数据和数据包序。我们讨论了网络数据分析的每一步中必须解决的挑战,以确定工业控制网络中学习正常性研究的未来方面。

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