IEEE Open Journal of the Communications Society (Jan 2024)

Understanding Radio Frequency Fingerprint Identification With RiFyFi Virtual Databases

  • Alice Chillet,
  • Robin Gerzaguet,
  • Karol Desnos,
  • Matthieu Gautier,
  • Elena Simona Lohan,
  • Erwan Nogues,
  • Mikko Valkama

DOI
https://doi.org/10.1109/OJCOMS.2024.3414858
Journal volume & issue
Vol. 5
pp. 3735 – 3752

Abstract

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This paper proposes to explore the Radio Frequency Fingerprint (RFF) identification with a virtual database generator. RFF is a unique signature created in the emitter transmission chain by the hardware impairments. These impairments may be used as a secure identifier as they cannot be easily replicated for spoofing purposes. In recent years, the RFF identification relies mainly on Deep Learning (DL), and large databases are consequently needed to improve identification in different environmental conditions. In this paper, we introduce the so-called RiFyFi_VDG, referring to Radio Frequency Fingerprint Virtual Database Generator, and explore individually the impairment impact on the classification accuracy to highlight the most relevant impairment. Different transmission scenarios are then explored, such as the impact of the data type (being a preamble or a payload) and the data size. Design rules of real databases are finally drawn for the different scenarios. We found out that the power amplifier imperfections play the biggest role in RFF accuracy and that average accuracy levels of 94% can be reached when combining the various hardware impairments at the transmitter.

Keywords