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Network Traffic Features for Anomaly Detection in Specific Industrial Control System Network

机译:特定工业控制系统网络中异常检测的网络流量功能

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The deterministic and restricted nature of industrial control system networks sets them apart from more open networks, such as local area networks in office environments. This improves the usability of network security, monitoring approaches that would be less feasible in more open environments. One of such approaches is machine learning based anomaly detection. Without proper customization for the special requirements of the industrial control system network environment, many existing anomaly or misuse detection systems will perform sub-optimally. A machine learning based approach could reduce the amount of manual customization required for different industrial control system networks. In this paper we analyze a possible set of features to be used in a machine learning based anomaly detection system in the real world industrial control system network environment under investigation. The network under investigation is represented by architectural drawing and results derived from network trace analysis. The network trace is captured from a live running industrial process control network and includes both control data and the data flowing between the control network and the office network. We limit the investigation to the IP traffic in the traces.
机译:工业控制系统网络的确定性和受限性质使它们与更开放的网络(如办公环境中的局域网)区分开。这提高了网络安全性的可用性,监控了在更开放的环境中不太可行的方法。这种方法之一是基于机器学习的异常检测。如果没有针对工业控制系统网络环境的特殊要求进行适当的自定义,则许多现有的异常或滥用检测系统将无法达到最佳性能。基于机器学习的方法可以减少不同工业控制系统网络所需的手动定制量。在本文中,我们分析了在调查中的现实世界工业控制系统网络环境中,基于机器学习的异常检测系统中可能使用的一组功能。被调查的网络以架构图表示,其结果来自网络跟踪分析。网络跟踪是从实时运行的工业过程控制网络中捕获的,并且包括控制数据以及在控制网络和办公室网络之间流动的数据。我们将调查限于跟踪中的IP流量。

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