利用卷积神经网络检测工业控制系统中的网络攻击

Moshe Kravchik, A. Shabtai
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引用次数: 208

摘要

本文提出了一种基于卷积神经网络的工业控制系统网络攻击检测方法。该研究是在安全水处理试验台(SWaT)数据集上进行的,该数据集代表了现实世界工业水处理厂的缩小版。我们提出了一种基于测量预测值与观测值的统计偏差的异常检测方法。我们通过使用各种深度神经网络架构(包括卷积和循环网络的不同变体)来应用所提出的方法。测试数据集包括36种不同的网络攻击。该方法成功检测了31次攻击,其中有3次假阳性,从而改进了先前基于该数据集的研究。研究结果表明,一维卷积网络可以成功地用于工业控制系统中的异常检测,并且在这种情况下优于循环网络。研究结果还表明,一维卷积网络在时间序列预测任务中是有效的,而这些任务通常被认为是使用循环神经网络最好的解决方案。这个观察结果很有前途,因为1D卷积神经网络比循环神经网络更简单、更小、更快。
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Detecting Cyber Attacks in Industrial Control Systems Using Convolutional Neural Networks
This paper presents a study on detecting cyber attacks on industrial control systems (ICS) using convolutional neural networks. The study was performed on a Secure Water Treatment testbed (SWaT) dataset, which represents a scaled-down version of a real-world industrial water treatment plant. We suggest a method for anomaly detection based on measuring the statistical deviation of the predicted value from the observed value. We applied the proposed method by using a variety of deep neural network architectures including different variants of convolutional and recurrent networks. The test dataset included 36 different cyber attacks. The proposed method successfully detected 31 attacks with three false positives thus improving on previous research based on this dataset. The results of the study show that 1D convolutional networks can be successfully used for anomaly detection in industrial control systems and outperform recurrent networks in this setting. The findings also suggest that 1D convolutional networks are effective at time series prediction tasks which are traditionally considered to be best solved using recurrent neural networks. This observation is a promising one, as 1D convolutional neural networks are simpler, smaller, and faster than the recurrent neural networks.
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Proceedings of the 2018 Workshop on Cyber-Physical Systems Security and PrivaCy Secure Autonomous Cyber-Physical Systems Through Verifiable Information Flow Control Session details: Session 2: Intrusion and Anomaly detection CORGIDS: A Correlation-based Generic Intrusion Detection System Temporal Phase Shifts in SCADA Networks
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