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ZOE: Content-Based Anomaly Detection for Industrial Control Systems

机译:ZOE:用于工业控制系统的基于内容的异常检测

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Due its complexity and a multitude of proprietary components, industrial control systems are an immanently difficult field of application for intrusion detection. Proprietary binary protocols and the lack of public specifications have forced the research community to move away from content-based detection to more abstract concepts. In this paper, we show that in contrast to prior belief the content of unknown binary protocols can very well be modeled. ZOE derives prototype models that are specific to individual types of messages in order to capture the characteristics of arbitrary binary protocols and enable detecting different forms of attacks as anomalies. In an evaluation based on 6 days of network traffic recorded at a large power plant (1,900 MW) with over 92,000 unique devices, we demonstrate that ZOE improves upon related approaches by up to an order of magnitude in detection performance, but also significantly decreases false positives.
机译:由于其复杂性和大量的专有组件,工业控制系统是入侵检测应用领域内极为困难的领域。专有的二进制协议和缺乏公共规范迫使研究界从基于内容的检测转向更抽象的概念。在本文中,我们表明与先验信念相反,可以很好地对未知二进制协议的内容进行建模。 ZOE派生了特定于各种消息类型的原型模型,以捕获任意二进制协议的特征并能够将不同形式的攻击检测为异常。在根据大型电厂(1,900 MW)拥有92,000多个独特设备记录的6天网络流量进行的评估中,我们证明ZOE对相关方法的检测性能提高了一个数量级,但还大大减少了错误率。积极的。

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