New technological advancements in wireless networks have enlarged the number of connected devices. The unprecedented surge of data volume in wireless systems empowered by artificial intelligence (AI) opens up new horizons for providing ubiquitous data-driven intelligent services. Traditional cloudcentric machine learning (ML)-based services are implemented by centrally collecting datasets and training models. However, this conventional training technique encompasses two challenges: (i) high communication and energy cost and (ii) threatened data privacy. In this article, we introduce a comprehensive survey of the fundamentals and enabling technologies of federated learning (FL), a newly emerging technique coined to bring ML to the edge of wireless networks. Moreover, an extensive study is presented detailing various applications of FL in wireless networks and highlighting their challenges and limitations. The efficacy of FL is further explored with emerging prospective beyond fifth-generation (B5G) and sixth-generation (6G) communication systems. This survey aims to provide an overview of the state-ofthe-art FL applications in key wireless technologies that will serve as a foundation to establish a firm understanding of the topic. Lastly, we offer a road forward for future research directions.
翻译:无线网络的新技术进步扩大了连接装置的数量; 人工智能(AI)所增强的无线系统的数据量空前激增,为提供无处不在的数据驱动智能服务开辟了新的视野; 传统的云中心机器学习(ML)服务是通过集中收集数据集和培训模式实施的; 然而,这种常规培训技术包括两个挑战:(一) 通信和能源成本高,以及(二) 数据隐私受到威胁。在本篇文章中,我们引入了对联合学习基础和辅助技术(FL)的全面调查,这是将ML带到无线网络边缘的新兴技术。此外,我们介绍了一项广泛的研究,详细介绍了FL在无线网络中的各种应用,并突出强调了它们的挑战和局限性。FL的功效进一步探索了未来第五代(B5G)和第六代(6G)通信系统之后的潜能。这项调查的目的是为关键无线技术中的最先进的FL应用提供一个概览,这些应用将成为建立明确了解该主题的基础。最后,我们为未来研究方向提供了一条前进的道路。</s>