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An Unsupervised Framework for Anomaly Detection in a Water Treatment System

机译:水处理系统中异常检测的无监督框架

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Current Cyber-Physical Systems (CPSs) are sophisticated, complex, and equipped with networked sensors and actuators. As such, they have become further exposed to cyber-attacks. Recent catastrophic events have demonstrated that standard, human-based management of anomaly detection in complex systems is not efficient enough and have underlined the significance of automated detection, intelligent and rapid response. Nevertheless, existing anomaly detection frameworks usually are not capable of dealing with the dynamic and complicated nature of the CPSs. In this study, we introduce an unsupervised framework for anomaly detection based on an Attention-based Spatio-Temporal Autoencoder. In particular, we first construct statistical correlation matrices to characterize the system status across different time steps. Next, a 2D convolutional encoder is employed to encode the patterns of the correlation matrices, whereas an Attention-based Convolutional LSTM Encoder-Decoder (ConvLSTM-ED) is used to capture the temporal dependencies. More precisely, we introduce an input attention mechanism to adaptively select the most significant input features at each time step. Finally, the 2D convolutional decoder reconstructs the correlation matrices. The differences between the reconstructed correlation matrices and the original ones are used as indicators of anomalies. Extensive experimental analysis on data collected from all six stages of Secure Water Treatment (SWaT) testbed, a scaled-down version of a real-world industrial water treatment plant, demonstrates that the proposed model outperforms the state-of-the-art baseline techniques.
机译:电流网络物理系统(CPS)复杂,复杂,并配备了网络传感器和执行器。因此,它们已经进一步暴露于网络攻击。最近的灾难事件已经证明,在复杂系统中的异常检测的标准,基于人类的异常检测是不够有效的,并强调了自动检测,智能和快速响应的重要性。尽管如此,现有的异常检测框架通常不能处理CPS的动态和复杂性。在这项研究中,我们基于基于关注的时空自动化器介绍了一项无常规的异常检测框架。特别是,我们首先构造统计相关矩阵,以表征不同时间步长的系统状态。接下来,采用2D卷积编码器来对相关矩阵的模式进行编码,而基于注意的卷积LSTM编码器(ConvlStm-ED)用于捕获时间依赖性。更确切地说,我们引入了输入注意机制,以便在每次步骤中自适应地选择最重要的输入功能。最后,2D卷积解码器重建相关矩阵。重建相关矩阵与原始相关矩阵之间的差异用作异常的指标。从安全的水处理(SWAT)测试平台的所有六个阶段收集到的数据广泛的实验分析,按比例缩小的现实世界中工业水处理厂的版本,表明该模型优于国家的最先进的底线技术。

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