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Applying of Generative Adversarial Networks for Anomaly Detection in Industrial Control Systems

机译:应用生成对抗性网络在工业控制系统中的异常检测

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Modern industrial control systems (ICS) act as victims of cyber attacks more often in last years. These cyber attacks often can not be detected by classical information security methods. Moreover, the consequences of cyber attack’s impact can be catastrophic. Since cyber attacks leads to appearance of anomalies in the ICS and technological equipment controlled by it, the task of intrusion detection for ICS can be reformulated as the task of industrial process anomaly detection. This paper considers the applicability of generative adversarial networks (GANs) in the field of industrial processes anomaly detection. Existing approaches for GANs usage in the field of information security (such as anomaly detection in network traffic) were described. It is proposed to use the BiGAN architecture in order to detect anomalies in the industrial processes. The proposed approach has been tested on Secure Water Treatment Dataset (SWaT). The obtained results indicate the prospects of using the examined method in practice.
机译:现代工业控制系统(ICS)在过去几年中更常见的是网络攻击的受害者。这些网络攻击通常无法通过经典信息安全方法来检测。此外,网络攻击的影响的后果可能是灾难性的。由于网络攻击导致由ICS和技术设备的异常出现异常,因此可以将IC的入侵检测任务作为工业过程异常检测的任务。本文考虑了生成的对抗网络(GANS)在工业过程异常检测领域的适用性。描述了信息安全领域的现有GAN使用方法(例如网络流量中的异常检测)。建议使用BIGAN架构以检测工业过程中的异常。该方法已经在安全水处理数据集(SWAT)上进行了测试。所获得的结果表明在实践中使用检测方法的前景。

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