Evaluation of Machine Learning Algorithms for Anomaly Detection in Industrial Networks

Giuseppe Bernieri, M. Conti, F. Turrin
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引用次数: 21

Abstract

The cyber-physical security of Industrial Control Systems (ICSs) represents an actual and worthwhile research topic. In this paper, we compare and evaluate different Machine Learning (ML) algorithms for anomaly detection in industrial control networks. We analyze supervised and unsupervised ML-based anomaly detection approaches using datasets extracted from the Secure Water Treatment (SWaT), a testbed developed to emulate a scaled-down real industrial plant. Our experiments show strengths and limitations of the two ML-based anomaly detection approaches for industrial networks.
工业网络异常检测的机器学习算法评价
工业控制系统的网络物理安全是一个具有现实意义和研究价值的课题。在本文中,我们比较和评估了不同的机器学习(ML)算法在工业控制网络中的异常检测。我们使用从安全水处理(SWaT)提取的数据集分析了有监督和无监督的基于ml的异常检测方法,SWaT是一个用于模拟按比例缩小的真实工业工厂的测试平台。我们的实验显示了两种基于机器学习的工业网络异常检测方法的优势和局限性。
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