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Feature Selection for Machine Learning Based Anomaly Detection in Industrial Control System Networks

机译:基于机器学习的机器学习的特征选择,在工业控制系统网络中的基于异常检测

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The nature of the traffic in industrial control system network is markedly different from more open networks. Industrial control system networks should be far more restricted in what types of traffic diversity is present. This enables the usage of approaches that are currently not as feasible in open environments, such as machine learning based anomaly detection. Without proper customization for the special requirements of industrial control system network environment many existing anomaly or misuse detection systems will perform sub-optimally. Machine learning based approach would reduce the amount of manual customization required for different restricted network environments of which an industrial control system network is an good example of. In this paper we present an initial analysis of data received from a ethernet network of a live running industrial site. This includes both control data and the data flowing between the control network and the office network. A set of possible features to be used for detecting anomalies is studied for this environment.
机译:工业控制系统网络中交通的性质与更多开放网络显着不同。工业控制系统网络应该更受限制在存在的交通变量类型中。这使得能够使用目前在开放环境中不可行的方法,例如基于机器学习的异常检测。如果没有适当定制的工业控制系统网络环境的特殊要求,许多现有的异常或滥用检测系统将以次优先进行。基于机器学习的方法将减少不同受限制网络环境所需的手动定制量,其中工业控制系统网络是一个很好的例子。在本文中,我们初步分析了从实时运行工业站点的以太网网络接收的数据。这包括控制数据和控制网络与Office网络之间的数据。为此环境研究了用于检测异常的一组可能的功能。

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