Siamese Neural Network Based Few-Shot Learning for Anomaly Detection in Industrial Cyber-Physical Systems 论文

2020IEEE Transactions on Industrial Informatics引用 339
Anomaly Detection Techniques and ApplicationsSmart Grid Security and ResilienceNetwork Security and Intrusion Detection

详细信息

发表期刊/会议
IEEE Transactions on Industrial Informatics
发表日期
2020-12-31
发表年份
2020

关键词

Anomaly Detection Techniques and ApplicationsSmart Grid Security and ResilienceNetwork Security and Intrusion Detection

摘要

With the increasing population of Industry 4.0, both AI and smart techniques have been applied and become hotly discussed topics in industrial cyber-physical systems (CPS). Intelligent anomaly detection for identifying cyber-physical attacks to guarantee the work efficiency and safety is still a challenging issue, especially when dealing with few labeled data for cyber-physical security protection. In this article, we propose a few-shot learning model with Siamese convolutional neural network (FSL-SCNN), to alleviate the over-fitting issue and enhance the accuracy for intelligent anomaly detection in industrial CPS. A Siamese CNN encoding network is constructed to measure distances of input samples based on their optimized feature representations. A robust cost function design including three specific losses is then proposed to enhance the efficiency of training process. An intelligent anomaly detection algorithm is developed finally. Experiment results based on a fully labeled public dataset and a few labeled dataset demonstrate that our proposed FSL-SCNN can significantly improve false alarm rate (FAR) and F1 scores when detecting intrusion signals for industrial CPS security protection.