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Anomaly Detection of Industrial Control Systems Based on Transfer Learning

2021-06-15分类号:TP273;TP18

【作者】Weiping Wang  Zhaorong Wang  Zhanfan Zhou  Haixia Deng  Weiliang Zhao  Chunyang Wang  Yongzhen Guo  
【部门】School of Computer and Communication Engineering   the Beijing Key Laboratory of Knowledge Engineering for Materials Science   and the Institute of Artificial Intelligence   University of Science and Technology Beijing   Beijing 100083   China   and with Shunde
【摘要】Industrial Control Systems(ICSs) are the lifeline of a country. Therefore, the anomaly detection of ICS traffic is an important endeavor. This paper proposes a model based on a deep residual Convolution Neural Network(CNN) to prevent gradient explosion or gradient disappearance and guarantee accuracy. The developed methodology addresses two limitations: most traditional machine learning methods can only detect known network attacks and deep learning algorithms require a long time to train. The utilization of transfer learning under the modification of the existing residual CNN structure guarantees the detection of unknown attacks. One-dimensional ICS flow data are converted into two-dimensional grayscale images to take full advantage of the features of CNN. Results show that the proposed method achieves a high score and solves the time problem associated with deep learning model training.The model can give reliable predictions for unknown or differently distributed abnormal data through short-term training. Thus, the proposed model ensures the safety of ICSs and verifies the feasibility of transfer learning for ICS anomaly detection.
【关键词】anomaly detection  transfer learning  deep learning  Industrial Control System(ICS)
【基金】supported in part by 2018 industrial Internet innovation and development project “Construction of Industrial Internet Security Standard System and Test and Verification Environment”;; in part by the National Industrial Internet Security Public Service Pla
【所属期刊栏目】Tsinghua Science and Technology
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