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Detection of Cyber Physical Attacks on Water Distribution Systems via Principal Component Analysis and Artificial Neural Networks

机译:基于主成分分析和人工神经网络的供水系统网络物理攻击检测

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Automated monitoring and operation of modern Water Distribution Systems (WDSs) are largely dependent on an interconnected network of computers, sensors, and actuators that are jointly coordinated by a Supervisory Control and Data Acquisition (SCADA) system. Although the implementation of such embedded systems enhances the reliability of the WDS, it also exposes it to cyber-physical attacks that can disrupt the system's operation or compromise critical information. Hence, the development of attack detection algorithms that can efficiently diagnose and identify such assaults is crucial for the successful application of these automated systems. In this study, we developed an algorithm to identify anomalous behaviors of the different components of a WDS in the context of the Battle of the Attack Detection Algorithms (BATADAL). The algorithm relies on using multiple layers of anomaly detection techniques to identify both local anomalies that affect each sensor individually, as well as global anomalies that simultaneously affect more than one sensor at the same time. The first layer targets finding statistical outliers in the data using simple outlier detection techniques. The second layer employs a trained artificial neural networks (ANNs) model to detect contextual anomalies that does not conform to the normal operational behavior of the system. The third layer uses principal component analysis (PCA) to decompose the high-dimensional space occupied by the given set of sensor measurements into two sub-spaces representing normal and anomalous network operating conditions. By continuously tracking the projections of the data instances on the anomalous conditions subspace, the algorithm identifies the outliers based on their influence on the directions of the principal components. The proposed approach successfully predicted all of the pre-labeled attacks in the validation data set with high sensitivity and specificity. However, for all the detected attacks, the algorithm maintained a false "under attack" status for a few hours after the threat no longer existed.
机译:现代水分配系统(WDS)的自动化监视和操作在很大程度上取决于由监督,控制和数据采集(SCADA)系统共同协调的计算机,传感器和执行器的互连网络。尽管此类嵌入式系统的实施增强了WDS的可靠性,但也使WDS暴露于可能破坏系统运行或危及关键信息的网络物理攻击中。因此,开发能够有效诊断和识别此类攻击的攻击检测算法对于这些自动化系统的成功应用至关重要。在这项研究中,我们开发了一种算法,用于在攻击检测算法之战(BATADAL)的背景下识别WDS不同组件的异常行为。该算法依赖于使用多层异常检测技术来识别分别影响每个传感器的局部异常,以及同时影响多个传感器的全局异常。第一层的目标是使用简单的异常值检测技术在数据中查找统计异常值。第二层采用训练有素的人工神经网络(ANN)模型来检测不符合系统正常操作行为的上下文异常。第三层使用主成分分析(PCA)将给定的传感器测量值集合所占据的高维空间分解为代表正常和异常网络操作条件的两个子空间。通过连续跟踪异常条件子空间上数据实例的投影,该算法根据异常值对主成分方向的影响来识别异常值。所提出的方法以高灵敏度和特异性成功地预测了验证数据集中的所有预先标记的攻击。但是,对于所有检测到的攻击,该算法在威胁不再存在后的几个小时内都保持错误的“处于攻击中”状态。

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