This article focuses on the application of artificial intelligence (AI) in non-orthogonal multiple-access (NOMA), which aims to achieve automated, adaptive, and high-efficiency multi-user communications towards next generation multiple access (NGMA). First, the limitations of current scenario-specific multi-antenna NOMA schemes are discussed, and the importance of AI for NGMA is highlighted. Then, to achieve the vision of NGMA, a novel cluster-free NOMA framework is proposed for providing scenario-adaptive NOMA communications, and several promising machine learning solutions are identified. To elaborate further, novel centralized and distributed machine learning paradigms are conceived for efficiently employing the proposed cluster-free NOMA framework in single-cell and multi-cell networks, where numerical results are provided to demonstrate the effectiveness. Furthermore, the interplays between the proposed cluster-free NOMA and emerging wireless techniques are presented. Finally, several open research issues of AI enabled NGMA are discussed.
翻译:文章的重点是在非横向多重接入中应用人工智能(AI),目的是实现自动化、适应性和高效的多用户通信,实现下一代多重接入(NGMA),首先讨论了当前针对情景的多亚同NOMA计划的限制,强调了AI对NGMA的重要性,然后为实现NGMA的愿景,提出了一个新的无集群的NOMA框架,以提供适合情景的NOMA通信,并确定了若干有希望的机器学习解决方案。为在单细胞和多细胞网络中高效使用拟议的无集群的NOMA框架,提出了新的中央和分布式机器学习模式,提供了数字结果,以证明其有效性。此外,还介绍了拟议的无集群NOMA与新兴无线技术之间的相互作用。最后,讨论了由AI促成的NGMA的若干公开研究问题。