深度强化学习在5G异构网络资源管理中的应用综述

Ying Loong Lee, Donghong Qin
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引用次数: 15

摘要

异构网络(HetNets)已被视为第五代(5G)通信的关键技术,以支持移动流量的爆炸式增长。通过在宏蜂窝中部署小蜂窝,HetNets可以提高网络容量并支持更多的用户,特别是在热点和室内区域。尽管如此,与传统蜂窝网络相比,此类网络的资源管理变得更加复杂,因为小蜂窝和大蜂窝之间会产生干扰,从而使服务质量提供更具挑战性。深度强化学习(DRL)的最新进展激发了其在5G HetNets资源管理中的应用。本文对DRL在5G HetNets资源管理中的应用进行了综述。我们特别回顾了基于drl的5G HetNets资源管理方案,包括能量收集、网络切片、认知HetNets、协调多点传输和大数据等各个领域。通过对调查研究的比较总结和分析,揭示当前基于drl的5G HetNets资源管理进展中的不足和研究差距。最后但并非最不重要的是,提出了几个悬而未决的问题和未来的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey on Applications of Deep Reinforcement Learning in Resource Management for 5G Heterogeneous Networks
Heterogeneous networks (HetNets) have been regarded as the key technology for fifth generation (5G) communications to support the explosive growth of mobile traffics. By deploying small-cells within the macrocells, the HetNets can boost the network capacity and support more users especially in the hotspot and indoor areas. Nonetheless, resource management for such networks becomes more complex compared to conventional cellular networks due to the interference arise between small-cells and macrocells, which thus making quality of service provisioning more challenging. Recent advances in deep reinforcement learning (DRL) have inspired its applications in resource management for 5G HetNets. In this paper, a survey on the applications of DRL in resource management for 5G HetNets is conducted. In particular, we review the DRL-based resource management schemes for 5G HetNets in various domains including energy harvesting, network slicing, cognitive HetNets, coordinated multipoint transmission, and big data. An insightful comparative summary and analysis on the surveyed studies is provided to shed some light on the shortcomings and research gaps in the current advances in DRL-based resource management for 5G HetNets. Last but not least, several open issues and future directions are presented.
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