无线网络的联合强化学习:基础、挑战和未来研究趋势

IF 5.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Sree Krishna Das;Ratna Mudi;Md. Siddikur Rahman;Khaled M. Rabie;Xingwang Li
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引用次数: 0

摘要

基于物联网(IoT)的无线服务日益普及,这凸显了升级第五代(5G)及以后的无线网络以适应这些服务的迫切需要。尽管 5G 网络目前支持各种无线服务,但可能无法完全满足新应用对计算和通信资源的高要求。延迟、能耗、网络拥塞、信令开销和潜在的隐私泄露等问题都是造成这种限制的原因。机器学习(ML)经常为这些问题提供解决方案。因此,目前正在开发第六代(6G)无线技术,以解决 5G 网络的不足。传统的 ML 方法通常是集中式的。然而,由于产生了大量无线数据、对隐私的日益关注以及边缘设备计算能力的不断提高,人们开始转向以分布式方式优化系统性能。本文全面分析了分布式学习技术,包括联合学习(FL)、多代理强化学习(MARL)和多代理联合强化学习(FRL)框架。它解释了如何在无线网络中有效和高效地实施这些技术。这些方法为应对当前无线网络面临的挑战提供了潜在的解决方案,有望创建一个更强大、更有能力、更多才多艺的网络,以满足物联网和其他新兴应用日益增长的需求。实施 FRL 框架可以显著提高无线网络的学习效率。为了应对瞬息万变的无线电信道带来的挑战,我们提出了一种稳健的 FRL 框架,使本地用户能够执行分布式功率分配、带宽分配、干扰缓解和通信模式选择。最后,本文概述了未来的几个研究方向,旨在将 FRL 框架有效地集成到无线网络中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Reinforcement Learning for Wireless Networks: Fundamentals, Challenges and Future Research Trends
The increasing popularity of Internet of Things (IoT)-based wireless services highlights the urgent need to upgrade fifth-generation (5G) wireless networks and beyond to accommodate these services. Although 5G networks currently support a variety of wireless services, they might not fully meet the high computational and communication resource demands of new applications. Issues such as latency, energy consumption, network congestion, signaling overhead, and potential privacy breaches contribute to this limitation. Machine learning (ML) frequently offers solutions to these problems. As a result, sixth-generation (6G) wireless technologies are being developed to address the deficiencies of 5G networks. Traditional ML methods are generally centralized. However, the vast amount of wireless data generated, growing privacy concerns, and the increasing computational capabilities of edge devices have led to a shift towards optimizing system performance in a distributed manner. This paper provides a thorough analysis of distributed learning techniques, including federated learning (FL), multi-agent reinforcement learning (MARL), and the multi-agent federated reinforcement learning (FRL) framework. It explains how these techniques can be effectively and efficiently implemented in wireless networks. These methods offer potential solutions to the challenges faced by current wireless networks, promising to create a more robust, capable, and versatile network that meets the growing demands of IoT and other emerging applications. Implementing the FRL framework can significantly improve the learning efficiency of wireless networks. To tackle the challenges posed by rapidly changing radio channels, we propose a robust FRL framework that enables local users to perform distributed power allocation, bandwidth allocation, interference mitigation, and communication mode selection. Finally, the paper outlines several future research directions aimed at effectively integrating the FRL framework into wireless networks.
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来源期刊
CiteScore
9.60
自引率
0.00%
发文量
25
审稿时长
10 weeks
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