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摘要:
With the booming of cyber attacks and cyber criminals against cyber-physical systems (CPSs), detecting these attacks remains challenging. It might be the worst of times, but it might be the best of times because of opportunities brought by machine learning (ML), in particular deep learning (DL). In general, DL delivers superior performance to ML because of its layered setting and its effective algorithm for extract useful information from training data. DL models are adopted quickly to cyber attacks against CPS systems. In this survey, a holistic view of recently proposed DL solutions is provided to cyber attack detection in the CPS context. A six-step DL driven methodology is provided to summarize and analyze the surveyed literature for applying DL methods to detect cyber attacks against CPS systems. The methodology includes CPS scenario analysis, cyber attack identification, ML problem formulation, DL model customization, data acquisition for training, and performance evaluation. The reviewed works indicate great potential to detect cyber attacks against CPS through DL modules. Moreover, excellent performance is achieved partly because of several high-quality datasets that are readily available for public use. Furthermore, challenges, opportunities, and research trends are pointed out for future research.
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篇名 Deep Learning Based Attack Detection for Cyber-Physical System Cybersecurity: A Survey
来源期刊 自动化学报(英文版) 学科
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年,卷(期) 2022,(3) 所属期刊栏目 REVIEWS
研究方向 页码范围 377-391
页数 15页 分类号
字数 语种 英文
DOI 10.1109/JAS.2021.1004261
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自动化学报(英文版)
双月刊
2329-9266
10-1193/TP
大16开
北京市海淀区中关村东路95号
80-604
2014
eng
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801
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