IEEE Access (Jan 2021)

Differential Contour Stellar-Based Radio Frequency Fingerprint Identification for Internet of Things

  • Jingchao Li,
  • Yulong Ying,
  • Chunlei Ji,
  • Bin Zhang

DOI
https://doi.org/10.1109/ACCESS.2021.3071352
Journal volume & issue
Vol. 9
pp. 53745 – 53753

Abstract

Read online

Data attacks from illegal access devices of the Internet of Things will cause serious interference and threats to the entire network. It is difficult to ensure the security of the communication system only by relying on traditional application layer password authentication methods. Therefore, it is of great significance to design an effective physical layer authentication system based on radio frequency fingerprints. Regarding the issue above, this paper proposes a novel physical layer authentication method for Internet of Things based on differential contour stellar. Through the test of identification and authentication of 20 WiFi network card devices from same manufacturer, same type and same batch, the recognition accuracy rate can reach 98.6% by the proposed method. The proposed method can improve the effect of radio frequency fingerprint identification from three aspects: i. The differential processing can effectively reduce the negative influence of phase rotation caused by carrier frequency offset and Doppler effects; ii. The color processing can effectively reduce the negative influence of random noise caused by channel noise; iii. It is suitable for processing large-scale networks and the massive data they bring.

Keywords