FSL: federated sequential learning-based cyberattack detection for Industrial Internet of Things

被引:0
作者
Fangyu Li
Junnuo Lin
Honggui Han
机构
[1] Beijing University of Technology,Faculty of Information Technology
来源
Industrial Artificial Intelligence | / 1卷 / 1期
关键词
Federated learning; Sequential modeling; IIoT; Cyberattack detection;
D O I
10.1007/s44244-023-00006-2
中图分类号
学科分类号
摘要
Industrial Internet of Things (IIoT) brings revolutionary technical supports to modern industries. However, today’s IIoT still faces the challenges of modeling varying time-series in common data isolation while considering data security. To accurately characterize industrial dynamics, we propose a possible solution based on federated sequence learning (FSL) with cyber attack detection capabilities. Under a federated framework, FSL constructs a collaborative global model without violating local data integrity. Taking advantages of the locally sequential modeling, FSL captures the intrinsic industrial time-series responses. Furthermore, data heterogeneity among distributed clients is also considered, which is important to maintenance a robust but sensitive attack detection. Experiments on classic distributed datasets demonstrate that FSL is capable to accurately model data heterogeneity caused by data isolation and dynamics of time-series. Real IIoT attack detection experiments using a distributed testbed show that our FSL provides better detection performances for industrial time-series sensory data compared to existing methods. Therefore, the proposed attack detection approach FSL is promising in real IIoT scenarios in terms of feasibility, robustness and accuracy.
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  • [1] Pivoto D(2021)Cyber-physical systems architectures for industrial internet of things applications in Industry 4.0: a literature review J Manuf Syst 58 176-220139
  • [2] Fernandes L(2020)Industrial internet of things: recent advances, enabling technologies and open challenges Comput Electr Eng 81 220121-6403
  • [3] Righi R(2021)A review and state of art of internet of things (IoT) Arch Comput Methods Eng 8 6396-5231
  • [4] Rodrigues J(2019)Internet of things and data mining: from applications to techniques and systems Int J Account Financ Report 6 5224-7716
  • [5] Lugli A(2020)Industrial artificial intelligence in industry 4.0—systematic review, challenges and outlook IEEE Access 6 7706-2498
  • [6] Alberti A(2019)System statistics learning-based iot security: feasibility and suitability IEEE Internet Things J 8 2495-2996
  • [7] Khan WZ(2019)Enhanced cyber-physical security in internet of things through energy auditing IEEE Internet Things J 36 2985-8201
  • [8] Rehman MH(2021)Hybrid decentralized data analytics in edge-computing-empowered iot networks IEEE Internet Things J 17 8182-186
  • [9] Zangoti HM(2021)Detection and diagnosis of data integrity attacks in solar farms based on multi-layer long short-term memory network IEEE Trans Power Electron 6 163-2973
  • [10] Afzal MK(2022)Data heterogeneity-robust federated learning via group client selection in industrial iot IEEE Internet Things J 2 2964-2501