放大和转发中继通道中自学波形合成与分析

A. Anderson, Steven R. Young
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引用次数: 0

摘要

无线通信在战术网络、空间通信等多个复杂领域发挥着举足轻重的作用。用于数字通信的传统物理层协议包含信号处理块链,这些块链经过数学优化,可以在有噪声的信道上有效地传输信息位。不幸的是,硬件和软件设计的不断进步,以及算法的发展,使得一些领域很难跟上现代通信系统的不断变化。之前的研究表明,将深度学习与数字调制(deepmod)相结合,可以让系统自己学习通信,而不需要人类发明的协议。这对空间通信特别有吸引力,因为更新物理层技术可能非常复杂或昂贵。使用deepmod的链接能够学习波形合成(发送)和分析(接收),这是自学的。当deepmod第一次启动时,它不知道信道介质,但通过合成可以在链路另一端成功解码的波形,它很快学会了通信。这是由一个定制的深度神经网络来完成的,特别适合于这个特定的学习任务。在目前的工作中,我们证明了deepmod既可以在传统的点对点信道中学习,也可以在更抽象的多跳放大转发中继信道中学习。在实验结果中,即使发射器和接收器之间不存在直接连接,启用深度模态的节点仍然会产生可用于通信的潜在信息承载波形。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Taught Waveform Synthesis and Analysis in the Amplify-and-Forward Relay Channel
Wireless communications plays a pivotal role in multiple complex domains such as tactical networks or space communications. Traditional physical (PHY) layer protocols for digital communications contain chains of signal processing blocks that have been mathematically optimized to transmit information bits efficiently over noisy channels. Unfortunately, the ongoing advancement of hardware and software design, and algorithm development, makes it difficult for some domains to keep up with the constant change in modern communication systems. It has been shown previously that combining deep learning with digital modulation (deepmod) allows a system to learn communications on its own rather than requiring human-invented protocols. This is particularly attractive to space communications where updating PHY layer technologies may be prohibitively complex or expensive. A link using deepmod is able to learn both waveform synthesis (transmit) and analysis (receive) that is self-taught. When deepmod is first initiated it has no knowledge of the channel medium but quickly learns to communicate by synthesizing waveforms that can be successfully decoded at the other end of the link. This is accomplished by a custom deep neural network especially suited for this particular task of learning. In this current work, we show that deepmod learns in both traditional point-to-point channels as well as the more abstract multi-hop amplify-and-forward relay channel. In the experimental results, even though no direct link between transmitter and receiver exists, deepmod-enabled nodes still create latent information bearing waveforms that can be used for communications.
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