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Anomaly detection in cyber-physical systems: A formal methods approach

机译:网络物理系统中的异常检测:一种正式方法

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As the complexity of cyber-physical systems increases, so does the number of ways an adversary can disrupt them. This necessitates automated anomaly detection methods to detect possible threats. In this paper, we extend our recent results in the field of inference via formal methods to develop an unsupervised learning algorithm. Our procedure constructs from data a signal temporal logic (STL) formula that describes normal system behavior. Trajectories that do not satisfy the learned formula are flagged as anomalous. STL can be used to formulate properties such as “If the train brakes within 500 m of the platform at a speed of 50 km/hr, then it will stop in at least 30 s and at most 50 s.” STL gives a more human-readable representation of behavior than classifiers represented as surfaces in high-dimensional feature spaces. STL formulae can also be used for early detection via online monitoring and for anomaly mitigation via formal synthesis. We demonstrate the power of our method with a physical model of a train's brake system. To our knowledge, this paper is the first instance of formal methods being applied to anomaly detection.
机译:随着网络物理系统的复杂性增加,攻击者破坏网络物理系统的方式也越来越多。这需要自动异常检测方法来检测可能的威胁。在本文中,我们通过形式化方法扩展了我们在推理领域的最新成果,以开发一种无监督的学习算法。我们的过程从数据构造一个描述常规系统行为的信号时态逻辑(STL)公式。不满足学习公式的轨迹被标记为异常。 STL可以用来表述诸如“如果火车以500 km / hr的速度在平台500 m内制动,那么它将在至少30 s和最多50 s内停止”。与在高维特征空间中以曲面表示的分类器相比,STL提供了更易于理解的行为表示。 STL公式还可以用于通过在线监控进行早期检测,以及通过形式综合用于异常缓解。我们通过火车制动系统的物理模型演示了我们方法的强大功能。就我们所知,本文是形式方法用于异常检测的第一个实例。

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