基于无监督机器学习的过程控制通信攻击与故障检测

Franka Schuster, F. Kopp, A. Paul, H. König
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引用次数: 9

摘要

在工业数字化进程中,过程控制网络特别是关键基础设施的安全问题已经成为一个重大问题,需要采用新颖的方法来实现多级保护。这种保护的一个重要特性是在过程控制网络中进行特定于协议的监视,以识别已经克服防火墙保护的故障和攻击。对于各种站点的广泛应用,这种监控必须能够自适应各自网络的不同流量特征。协议知识与无监督机器学习算法相结合可以利用这一任务。在本文中,我们介绍了将两种机器学习方法应用于来自两个工厂过程控制网络的真实交通数据集的最新结果。从f-score、精度和召回率方面讨论了所考虑的包特征的不同映射的结果。他们展示了使用无监督学习训练异常检测器来识别工业网络入侵的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attack and Fault Detection in Process Control Communication Using Unsupervised Machine Learning
In the course of industrial digitalization, the security of process control networks and especially critical infrastructures has become a major issue that requires novel methods to achieve a multi-level protection. An important feature of this protection is a protocol-specific monitoring within the process control networks that identifies faults and attacks which already have overcome the firewall protection. For a wide-spread application in various sites, this monitoring must be self-adaptive to the different traffic characteristics of the respective networks. Protocol knowledge combined with unsupervised machine learning algorithms can leverage this task. In this paper we present the latest results of applying two machine learning methods on real-world traffic datasets from two plant process control networks. The results for different mappings of the considered packet features are discussed in terms of f-score, precision, and recall. They demonstrate the high potential of using unsupervised learning for training anomaly detectors to identify intrusions in industrial networks.
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