Enabling Deep Learning-based Physical-layer Secret Key Generation for
FDD-OFDM Systems in Multi-Environments
- URL: http://arxiv.org/abs/2211.03065v2
- Date: Fri, 16 Feb 2024 04:37:38 GMT
- Title: Enabling Deep Learning-based Physical-layer Secret Key Generation for
FDD-OFDM Systems in Multi-Environments
- Authors: Xinwei Zhang, Guyue Li, Junqing Zhang, Linning Peng, Aiqun Hu, Xianbin
Wang
- Abstract summary: This paper formulates the PKG problem in multiple environments as a learning-based problem.
We propose deep transfer learning (DTL) and meta-learning-based channel feature mapping algorithms for key generation.
- Score: 27.47842642468537
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep learning-based physical-layer secret key generation (PKG) has been used
to overcome the imperfect uplink/downlink channel reciprocity in frequency
division duplexing (FDD) orthogonal frequency division multiplexing (OFDM)
systems. However, existing efforts have focused on key generation for users in
a specific environment where the training samples and test samples follow the
same distribution, which is unrealistic for real-world applications. This paper
formulates the PKG problem in multiple environments as a learning-based problem
by learning the knowledge such as data and models from known environments to
generate keys quickly and efficiently in multiple new environments.
Specifically, we propose deep transfer learning (DTL) and meta-learning-based
channel feature mapping algorithms for key generation. The two algorithms use
different training methods to pre-train the model in the known environments,
and then quickly adapt and deploy the model to new environments. Simulation and
experimental results show that compared with the methods without adaptation,
the DTL and meta-learning algorithms both can improve the performance of
generated keys. In addition, the complexity analysis shows that the
meta-learning algorithm can achieve better performance than the DTL algorithm
with less cost.
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