首页> 外文会议>IFIP WG 11.9 International Conference on Digital Forensics >DETECTING ANOMALIES IN PROGRAMMABLE LOGIC CONTROLLERS USING UNSUPERVISED MACHINE LEARNING
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DETECTING ANOMALIES IN PROGRAMMABLE LOGIC CONTROLLERS USING UNSUPERVISED MACHINE LEARNING

机译:使用非监督机器学习来检测可编程逻辑控制器中的异常

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Supervisory control and data acquisition systems have been employed for decades to communicate with and coordinate industrial processes. These systems incorporate numerous programmable logic controllers that manage the operations of industrial equipment based on sensor information. Due to the important roles that programmable logic controllers play in industrial facilities, these microprocessor-based systems are exposed to serious cyber threats. This chapter describes an innovative methodology that leverages unsupervised machine learning to monitor the states of programmable logic controllers to uncover latent defects and anomalies. The methodology, which employs a one-class support vector machine, is able to detect anomalies without being bound to specific scenarios or requiring detailed knowledge about the control logic. A case study involving a traffic light simulation demonstrates that anomalies are detected with high accuracy, enabling the prompt mitigation of the underlying problems.
机译:监督控制和数据采集系统已经使用了数十年,以与工业过程进行通信并进行协调。这些系统集成了许多可编程逻辑控制器,这些控制器根据传感器信息管理工业设备的运行。由于可编程逻辑控制器在工业设施中发挥着重要作用,因此这些基于微处理器的系统面临严重的网络威胁。本章介绍了一种创新的方法,该方法利用无监督的机器学习来监视可编程逻辑控制器的状态,以发现潜在的缺陷和异常。该方法采用一类支持向量机,能够检测异常,而不必受限于特定场景或需要有关控制逻辑的详细知识。涉及交通信号灯模拟的案例研究表明,可以以较高的准确度检测到异常,从而可以迅速缓解潜在问题。

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