Flow-Based Intrusion Detection for SCADA networks using Supervised Learning

Gabriela Vasquez, R. S. Miani, B. B. Zarpelão
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引用次数: 7

Abstract

Recent attacks on industrial networks have brought the question of their protection, given the importance of the equipment that they control. In this paper, we address the application of Machine Learning (ML) algorithms to build an Intrusion Detection System (IDS) for these networks. As network traffic usually has much less malicious packets than normal ones, intrusion detection problems have class imbalance as a key characteristic, which can be a challenge for ML algorithms. Therefore, we study the performance of nine different ML algorithms in classifying IP flows of an industrial network, analyzing the impact of class imbalance in the results. The algorithms were evaluated taking as main metrics the F1-Score and Averaged Accuracy. Our experiments showed that the three algorithms based on decision trees were superior to the others. Particularly, the Decision Jungle algorithm outperformed all the others.
基于监督学习的SCADA网络流入侵检测
鉴于它们所控制的设备的重要性,最近对工业网络的攻击带来了它们的保护问题。在本文中,我们讨论了机器学习(ML)算法在这些网络中构建入侵检测系统(IDS)的应用。由于网络流量的恶意数据包通常比正常流量少得多,入侵检测问题的一个关键特征是类不平衡,这对机器学习算法来说是一个挑战。因此,我们研究了九种不同的ML算法在工业网络IP流分类中的性能,分析了类不平衡对结果的影响。以F1-Score和平均准确率为主要指标对算法进行评价。实验表明,基于决策树的三种算法均优于其他算法。特别是,决策丛林算法优于所有其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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