论文标题

在多种环境中为FDD-OFDM系统提供基于深度学习的物理层密钥生成

Enabling Deep Learning-based Physical-layer Secret Key Generation for FDD-OFDM Systems in Multi-Environments

论文作者

Zhang, Xinwei, Li, Guyue, Zhang, Junqing, Peng, Linning, Hu, Aiqun, Wang, Xianbin

论文摘要

基于深度学习的物理层秘密密钥生成(PKG)已被用来克服频划分双工(FDD)正交频施加(OFDM)系统中不完美的上行链路/下行链路通道互惠。但是,现有的努力集中在特定环境中的用户关键生成上,在这种环境中,培训样本和测试样本遵循相同的分布,这对于现实世界应用是不现实的。本文通过学习来自已知环境的数据和模型之类的知识,以在多个新环境中快速有效地生成钥匙,从而将PKG问题作为基于学习的问题提出了基于学习的问题。具体而言,我们建议对密钥生成的深度转移学习(DTL)和基于元学习的信道特征映射算法。这两种算法使用不同的培训方法在已知的环境中预先培训模型,然后快速调整并将模型部署到新环境中。模拟和实验结果表明,与没有适应的方法相比,DTL和元学习算法都可以改善生成的密钥的性能。此外,复杂性分析表明,元学习算法可以比成本较低的DTL算法获得更好的性能。

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.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源