Abstract
Smart services based on the Internet of Things (IoT) are likely to grow
in popularity in the forthcoming years, necessitating the improvement of
fifth-generation (5G) cellular networks upgrade of future networks from
their present state. Despite the fact that the 5G cellular networks may
manage a diversity of IoT services, they may not be able to fully meet
the requirements of emerging smart applications due to their limitations
that, in many cases, could be overcome by applying artificial
intelligence (AI). Therefore, sixth–generation (6G) wireless
technologies are being developed to address the limitations of 5G
networks. Traditional machine learning (ML) techniques are driven in a
centralized way. However, the huge volume of produced wireless data, the
confidentiality concerns, and the growing computing competencies of
wireless edge devices have led to the exposure of a promising solution
in a decentralized way which is called distributed learning. This paper
provides a comprehensive analysis of distributed learning (e.g.,
federated learning (FL), multi–agent reinforcement learning
(MARL)–based FL framework) and how to deploy in an effective and
efficient way for wireless networks. Moreover, we describe a timely
comprehensive review of the role of FL in facilitating 6G enabling
technologies, such as mobile edge computing, network slicing, satellite
communications, terahertz links, blockchain, and semantic
communications. Also, we identify and discuss several open research
issues related to FL–empowered 6G wireless networks. In particular, we
focus on FL for enabling an extensive range of smart services and
applications. For each application, the main motivation for using FL
along with the associated challenges and detailed examples for use
scenarios are given. Regarding the AI techniques, we consider
MARL–based FL framework tailored to the needs of future wireless
networks for ensuring fast convergence and high model accuracy of large
state and action spaces. Particularly, to manage the fast varying radio
channels and limited radio resources (e.g., transmission power and radio
spectrum) in a cellular communication environment, this article proposes
a robust MARL–based FL framework to enable local users to perform
distributed power allocation, mode selection, resource allocation, and
interference management. Finally, the paper outlines several prospective
upcoming research topics, aimed to create constructive incorporation of
MARL–based FL framework for future wireless networks.