具有完全学习调制和同步的深度学习无线收发器

Johannes Schmitz, Caspar von Lengerke, Nikita Airee, A. Behboodi, R. Mathar
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引用次数: 9

摘要

在本文中,我们提出了一个基于深度学习的无线收发器。我们详细描述了相应的人工神经网络架构,训练过程,并报告了过度的空中测量结果。我们采用端到端训练方法,采用自编码器模型,该模型包括先前在文献中提出的中间层通道模型。与其他最先进的结果相比,我们的架构支持学习时间同步,而无需任何手动设计的信号处理操作。此外,该神经收发器已通过软件无线电实现进行了空中测试。我们对实现的单天线系统的实验结果表明,原始比特率为每秒50万比特。这超过了文献中提出的可比系统的结果,并表明高通量深度学习收发器的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning Wireless Transceiver with Fully Learned Modulation and Synchronization
In this paper, we present a deep learning based wireless transceiver. We describe in detail the corresponding artificial neural network architecture, the training process, and report on excessive over-the-air measurement results. We employ the end-to-end training approach with an autoencoder model that includes a channel model in the middle layers as previously proposed in the literature. In contrast to other state-of-the-art results, our architecture supports learning time synchronization without any manually designed signal processing operations. Moreover, the neural transceiver has been tested over the air with an implementation in software defined radio. Our experimental results for the implemented single antenna system demonstrate a raw bit-rate of 0.5 million bits per second. This exceeds results from comparable systems presented in the literature and suggests the feasibility of high throughput deep learning transceivers.
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