Deep learning (DL) has proven its unprecedented success in diverse fields such as computer vision, natural language processing, and speech recognition by its strong representation ability and ease of computation. As we move forward to a thoroughly intelligent society with 6G wireless networks, new applications and use-cases have been emerging with stringent requirements for next-generation wireless communications. Therefore, recent studies have focused on the potential of DL approaches in satisfying these rigorous needs and overcoming the deficiencies of existing model-based techniques. The main objective of this article is to unveil the state-of-the-art advancements in the field of DL-based physical layer (PHY) methods to pave the way for fascinating applications of 6G. In particular, we have focused our attention on four promising PHY concepts foreseen to dominate next-generation communications, namely massive multiple-input multiple-output (MIMO) systems, sophisticated multi-carrier (MC) waveform designs, reconfigurable intelligent surface (RIS)-empowered communications, and PHY security. We examine up-to-date developments in DL-based techniques, provide comparisons with state-of-the-art methods, and introduce a comprehensive guide for future directions. We also present an overview of the underlying concepts of DL, along with the theoretical background of well-known DL techniques. Furthermore, this article provides programming examples for a number of DL techniques and the implementation of a DL-based MIMO by sharing user-friendly code snippets, which might be useful for interested readers.
翻译:深度学习(DL)证明,它在计算机愿景、自然语言处理和语音识别等不同领域取得了前所未有的成功。随着我们进入一个拥有6G无线网络的完全智能社会,新的应用程序和使用案例已经出现,对下一代无线通信提出了严格的要求。因此,最近的研究侧重于DL方法在满足这些严格需求和克服现有基于模型的技术缺陷方面的潜力。本文章的主要目的是公布基于DL的物理层(PHY)领域的最新进展,为6G的迷人应用铺平道路。特别是,我们把注意力集中在四个充满希望的PHY概念上,预计将主导下一代通信,即大规模多投入多投入(MIMO)系统、复杂的多载(MC)波形设计、可重新配置智能地面(RIS)的有用通信和PHY安全。我们研究基于DL的物理层技术的最新发展,为基于DG的精确应用方法提供与州级方法的对比,并引入了当前DL系统设计方法的全面方向。我们还可以根据D-L的理论,为目前的用户技术提供最新的D版的理论性指南。