Forget the Myth of the Air Gap: Machine Learning for Reliable Intrusion Detection in SCADA Systems

R. L. Perez, Florian Adamsky, R. Soua, T. Engel
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引用次数: 12

Abstract

Since Critical Infrastructures (CIs) use systems and equipment that are separated by long distances, Supervisory Control And Data Acquisition (SCADA) systems are used to monitor their behaviour and to send commands remotely. For a long time, operator of CIs applied the air gap principle, a security strategy that physically isolates the control network from other communication channels. True isolation, however, is di ffi cult nowadays due to the massive spread of connectivity: using open protocols and more connectivity opens new network attacks against CIs. To cope with this dilemma, sophisticated security measures are needed to address malicious intrusions, which are steadily increasing in number and variety. However, traditional Intrusion Detection Systems (IDSs) cannot detect attacks that are not already present in their databases. To this end, we assess in this paper Machine Learning (ML) techniques for anomaly detection in SCADA systems using a real data set collected from a gas pipeline system and provided by the Mississippi State University (MSU). The contribution of this paper is two-fold: 1) The evaluation of four techniques for missing data estimation and two techniques for data normalization, 2) The performances of Support Vector Machine (SVM), Random Forest (RF), Bidirectional Long Short Term Memory (BLSTM) are assessed in terms of accuracy, precision, recall and F 1 score for intrusion detection. Two cases are di ff erentiated: binary and categorical classifications. Our experiments reveal that RF and BLSTM detect intrusions e ff ectively, with an F 1 score of respectively > 99% and > 96%.
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忘记气隙的神话:在SCADA系统中进行可靠入侵检测的机器学习
由于关键基础设施(CIs)使用的系统和设备相距很远,因此使用监控和数据采集(SCADA)系统来监控其行为并远程发送命令。长期以来,ci运营商采用气隙原理,将控制网络与其他通信通道物理隔离。然而,由于连接的大规模传播,真正的隔离如今已不再是一种崇拜:使用开放协议和更多连接会引发针对ci的新网络攻击。为了应对这种困境,需要复杂的安全措施来解决恶意入侵,恶意入侵的数量和种类都在稳步增加。然而,传统的入侵检测系统(ids)无法检测到数据库中不存在的攻击。为此,我们在本文中使用密西西比州立大学(MSU)提供的从天然气管道系统收集的真实数据集,评估了SCADA系统中异常检测的机器学习(ML)技术。本文的贡献有两个方面:1)评估了四种缺失数据估计技术和两种数据归一化技术;2)评估了支持向量机(SVM)、随机森林(RF)、双向长短期记忆(BLSTM)在入侵检测中的准确性、精密度、召回率和f1分数。分为两种情况:二元分类和范畴分类。我们的实验表明,RF和BLSTM对入侵的检测效果都很好,f1得分分别> 99%和> 96%。
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