The convergence of 5G architecture and deep learning has gained a lot of research interests in both the fields of wireless communication and artificial intelligence. This is because deep learning technologies have been identified to be the potential driver of the 5G technologies, that make up the 5G architecture. Hence, there have been extensive surveys on the convergence of 5G architecture and deep learning. However, most of the existing survey papers mainly focused on how deep learning can converge with a specific 5G technology, thus, not covering the full spectrum of the 5G architecture. Although there is a recent survey paper that appears to be robust, a review of that paper shows that it is not well structured to specifically cover the convergence of deep learning and the 5G technologies. Hence, this paper provides a robust overview of the convergence of the key 5G technologies and deep learning. The challenges faced by such convergence are discussed. In addition, a brief overview of the future 6G architecture, and how it can converge with deep learning is also discussed.
翻译:5G结构的结合和深层学习在无线通信和人工智能领域都引起了许多研究兴趣,这是因为深学习技术被确定为构成5G结构的5G技术的潜在驱动力,因此对5G结构的结合和深层学习进行了广泛的调查,然而,大多数现有调查论文主要侧重于深度学习如何与具体的5G技术相融合,因此没有涵盖5G结构的全部范围。虽然最近的一份调查文件似乎很健全,但对该文件的审查表明,它的结构不完善,无法具体涵盖深度学习和5G技术的结合。因此,本文件有力地概述了5G关键技术的结合和深层学习,讨论了这种结合所面临的挑战。此外,还讨论了未来6G结构的简要概述,以及它如何与深层学习相融合。