4.8 Article

DeepFed: Federated Deep Learning for Intrusion Detection in Industrial Cyber-Physical Systems

期刊

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
卷 17, 期 8, 页码 5615-5624

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2020.3023430

关键词

Intrusion detection; Machine learning; Servers; Data models; Protocols; Cyberattack; Data privacy; deep learning; federated learning; industrial cyber– physical system (CPS); intrusion detection

资金

  1. National Natural Science Foundation of China [U1736212, U19A2068, 61302161, 61972269]
  2. China Postdoctoral Science Foundation [2019TQ0217, 2020M673277]
  3. Provincial Key Research and Development Program of Sichuan [2020YFG0133]
  4. Fundamental Research Funds for the Central Universities [YJ201933]
  5. Doctoral Fund, Ministry of Education, China [20130181120076]
  6. China International Postdoctoral Exchange Fellowship Program (Talent-Introduction)

向作者/读者索取更多资源

The study introduces a novel federated deep learning scheme named DeepFed for detecting cyber threats against industrial CPSs. By designing a new intrusion detection model and federated learning framework, the research successfully achieves secure detection of various cyber threats.
The rapid convergence of legacy industrial infrastructures with intelligent networking and computing technologies (e.g., 5G, software-defined networking, and artificial intelligence), have dramatically increased the attack surface of industrial cyber-physical systems (CPSs). However, withstanding cyber threats to such large-scale, complex, and heterogeneous industrial CPSs has been extremely challenging, due to the insufficiency of high-quality attack examples. In this article, we propose a novel federated deep learning scheme, named DeepFed, to detect cyber threats against industrial CPSs. Specifically, we first design a new deep learning-based intrusion detection model for industrial CPSs, by making use of a convolutional neural network and a gated recurrent unit. Second, we develop a federated learning framework, allowing multiple industrial CPSs to collectively build a comprehensive intrusion detection model in a privacy-preserving way. Further, a Paillier cryptosystem-based secure communication protocol is crafted to preserve the security and privacy of model parameters through the training process. Extensive experiments on a real industrial CPS dataset demonstrate the high effectiveness of the proposed DeepFed scheme in detecting various types of cyber threats to industrial CPSs and the superiorities over state-of-the-art schemes.

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