Federated Radio Frequency Fingerprinting with Model Transfer and Adaptation

Chuanting Zhang*, Shuping Dang, Junqing Zhang, Haixia Zhang, Mark A Beach

*Corresponding author for this work

Research output: Contribution to conferenceConference Paperpeer-review

Abstract

The Radio frequency (RF) fingerprinting technique makes highly secure device authentication possible for future networks by exploiting hardware imperfections introduced during manufacturing. Although this technique has received considerable attention over the past few years, RF fingerprinting still faces great challenges of channel-variation-induced data distribution drifts between the training phase and the test phase. To address this fundamental challenge and support model training and testing at the edge, we propose a federated RF fingerprinting algorithm with a novel strategy called model transfer and adaptation (MTA). The proposed algorithm introduces dense connectivity among convolutional layers into RF fingerprinting to enhance learning accuracy and reduce model complexity. Besides, we implement the proposed algorithm in the context of federated learning, making our algorithm communication efficient and privacy-preserved. To further conquer the data mismatch challenge, we transfer the learned model from one channel condition and adapt it to other channel conditions with only a limited amount of information, leading to highly accurate predictions under environmental drifts. Experimental results on real-world datasets demonstrate that the proposed algorithm is model-agnostic and also signal-irrelevant. Compared with state-of-the-art RF fingerprinting algorithms, our algorithm can improve prediction performance considerably with a performance gain of up to 15\%.
Original languageEnglish
Pages1-12
Number of pages12
DOIs
Publication statusPublished - 22 Feb 2023
EventIEEE INFOCOM Network Science for Quantum Communication Networks Workshop: NetSciQCom 2023 - New York area, USA, New York, United States
Duration: 17 May 202320 May 2023
https://infocom2023.ieee-infocom.org/workshop-network-science-quantum-communication-networks-netsciqcom

Conference

ConferenceIEEE INFOCOM Network Science for Quantum Communication Networks Workshop
Abbreviated titleNetSciQCom
Country/TerritoryUnited States
CityNew York
Period17/05/2320/05/23
Internet address

Keywords

  • Artificial Intelligence
  • RF Fingerprinting
  • Network Security
  • Model Transfer and Adaptation
  • Federated Learning
  • Cryptography and Security
  • Distributed, Parallel, and Cluster Computing

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  • SWAN (Secure Wireless Agile Networks) EPSRC Prosperity Partnership

    Beach, M. A. (Principal Investigator), Sandell, M. (Co-Principal Investigator), Hilton, G. (Co-Investigator), Austin, A. C. M. (Co-Investigator), Armour, S. M. D. (Co-Investigator), Haine, J. L. (Collaborator), Wales, S. W. (Collaborator), Luke, J. (Collaborator), Rogoyski, A. (Collaborator), Zhu, Z. (Collaborator), Watkins, G. T. (Collaborator), Kalokidou, V. (Researcher), Cappello, T. (Co-Investigator), Arabi, E. (Researcher), Nair, M. (Researcher), Ma, J. (Student), Wilson, S. (Student), Ozan, S. H. O. (Student), Prior, R. E. (Administrator), Xenos, E. (Student), Kayal, S. (Student), Chin, W. H. (Co-Principal Investigator) & Morris, K. A. (Co-Investigator)

    1/02/2031/01/25

    Project: Research, Parent

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