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Intrusion Detection of Industrial Control System Based on Double-layer One-class Support Vector Machine

机译:基于双层单级支持向量机的工业控制系统的入侵检测

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In this paper, the stealthy attack detection in industrial control system (ICS) is studied, and a new detection method is proposed from the perspective of signal analysis. The method consists of a double-layer one-class support vector machine model (DL-OCSVM), where the first-layer model is the standard OCSVM, and the second-layer model is obtained by incremental learning based on the former. The wavelet decomposition is used to extract the physical characteristics of the ICS. The KKT condition and the adjacent classification interval are adopted to reduce the training samples, improving the learning rate and system scalability. In addition, the designed boundary samples are employed for incremental learning, avoiding overfitting and reducing false positives rate (FPR). The experimental results show that the proposed method has high detection rate and low FPR for stealthy attacks, and is more suitable for precision machining process.
机译:本文研究了工业控制系统(IC)的隐身攻击检测,并从信号分析的角度提出了一种新的检测方法。该方法包括双层单级支持向量机模型(DL-OCSVM),其中第一层模型是标准OCSVM,并且通过基于前者的增量学习获得第二层模型。小波分解用于提取IC的物理特征。采用KKT条件和相邻的分类间隔来减少训练样本,提高学习率和系统可扩展性。另外,设计的边界样本用于增量学习,避免过度拟合和减少假阳性率(FPR)。实验结果表明,该方法具有高检测率和低压FPR用于隐形攻击,更适合精密加工过程。

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