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Detection of Cyberattacks in Industrial Control Systems Using Enhanced Principal Component Analysis and Hypergraph-Based Convolution Neural Network (EPCA-HG-CNN)

机译:利用增强的主成分分析和超图卷积神经网络检测工业控制系统中的网络攻击(EPCA-HG-CNN)

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摘要

The automated operations of industrial control systems (ICSs) highly rely on the interconnected devices, sensors, and actuators that are monitored and controlled by the supervisory control and data acquisition (SCADA) systems. Despite the numerous benefits of unifying the networking technologies with SCADA systems, ICSs are more susceptible to cyberattacks that can disrupt the secure operations of the critical infrastructures. Thus, the design and development of an efficient attack detection approach has become a complex task. Hence, this research work presents a novel hypergraph-based anomaly detection technique with enhanced principal component analysis and convolution neural network (EPCA-HG-CNN) to detect deviant behaviors of such systems. The proposed EPCA-HG-CNN algorithm involves two phases: 1) dimensionality reduction using enhanced PCA and 2) anomaly detection with HG-based CNN. Furthermore, the performance of EPCA-HG-CNN is evaluated with Singapore University of Technology and Design secure water treatment system and the experimental results show that the proposed EPCA-HG-CNN has identified anomalous behavior of the data with high detection rate, low false positives, and better classification accuracy.
机译:工业控制系统的自动操作(ICSS)高度依赖于监控和数据采集(SCADA)系统监控和控制的互连设备,传感器和执行器。尽管统一了与SCADA系统统一网络技术的好处,但ICSS更容易受到Cyber​​Atchs的影响,这可能会破坏关键基础设施的安全操作。因此,有效的攻击检测方法的设计和开发已成为一个复杂的任务。因此,该研究工作提出了一种新型超图的异常检测技术,具有增强的主成分分析和卷积神经网络(EPCA-HG-CNN)来检测这种系统的偏差行为。所提出的EPCA-HG-CNN算法涉及使用基于HG的CNN的增强PCA和2)异常检测来涉及两阶段:1)维度减少。此外,EPCA-HG-CNN的性能由新加坡工业大学和设计安全水处理系统评估,实验结果表明,所提出的EPCA-HG-CNN已经确定了具有高检测率的数据的异常行为,低假积极效果,更好的分类准确性。

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