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Towards Learning Normality for Anomaly Detection in Industrial Control Networks

机译:走向学习正常的工业控制网络中的异常检测

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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:自动化技术的最新趋势导致越来越多的工业控制系统(ICS)暴露于新的漏洞。这要求在该领域中引入适当的安全性方法。 ICS中普遍使用的是访问控制。但是,尤其是在关键基础架构中,预防性安全措施应辅之以反应性措施,例如入侵检测。从自动化网络的特征开始,我们概述了入侵检测在该领域中的适当应用的含义。在此基础上,提出了一种创建ICS协议自学习异常检测的方法。与其他方法相比,它考虑了所有网络数据:流信息,应用程序数据和数据包顺序。我们讨论了在网络数据分析的每个步骤中必须解决的挑战,以确定在工业控制网络中学习学习正常性的未来方面。

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