Deep learning based transmitter identification using power amplifier nonlinearity

SS Hanna, D Cabric - 2019 International Conference on …, 2019 - ieeexplore.ieee.org
2019 International Conference on Computing, Networking and …, 2019ieeexplore.ieee.org
The imperfections in the RF frontend of different transmitters can be used to distinguish
them. This process is called transmitter identification using RF fingerprints. The nonlinearity
in the power amplifier of the RF frontend is a significant cause of the discrepancy in RF
fingerprints, which enables transmitter identification. In this work, we use deep learning to
identify different transmitters using their nonlinear characteristics. By developing a nonlinear
model generator based on extensive measurements, we were able to extend the evaluation …
The imperfections in the RF frontend of different transmitters can be used to distinguish them. This process is called transmitter identification using RF fingerprints. The nonlinearity in the power amplifier of the RF frontend is a significant cause of the discrepancy in RF fingerprints, which enables transmitter identification. In this work, we use deep learning to identify different transmitters using their nonlinear characteristics. By developing a nonlinear model generator based on extensive measurements, we were able to extend the evaluation of transmitter identification to include a larger number of transmitters beyond what exists in the literature. We were also able to study the impact of transmitter variability on identification accuracy. Additionally, many other factors were considered including modulation type, length of data used for identification, and type of data being transmitted whether identical or random under a realistic channel model. Simulation results were compared with experiments which confirmed similar trends.
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