基于强化学习的5G雾无线接入网计算资源分配方案

N. Khumalo, O. Oyerinde, L. Mfupe
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引用次数: 4

摘要

雾计算已经成为第五代移动网络(5G)的关键组成部分之一,因为它能够有效地满足实时或对延迟敏感的应用的需求。为了在5G中引入雾,特别是在无线接入网络(RAN)中,远程无线电头、小蜂窝和宏蜂窝等中间网络设备配备了虚拟化存储和处理资源,以构成雾RAN (F-RAN)。然而,这些资源是有限的,低效的管理可能会导致F-RAN节点的瓶颈。为此,本文重点研究了一种考虑节点用户时延需求的动态自主的F-RAN计算资源分配方案。该算法使用强化学习来优化F-RAN中的延迟、能耗和成本。所提出的算法的性能和计算复杂度将作为仿真的一部分进行评估,并将结果与具有类似目标函数的现有研究中的其他算法进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcement Learning-based Computation Resource Allocation Scheme for 5G Fog-Radio Access Network
Fog computing has emerged as one of the key building blocks of fifth generation mobile networks (5G) because of its ability to effectively meet the demands of real-time or latency-sensitive applications. To introduce fog in 5G, particularly in the radio access network (RAN), intermediate network devices such as remote radio heads, small cells and macro cells are equipped with virtualised storage and processing resources to constitute the fog RAN (F-RAN). However, these resources are limited and inefficient management could cause a bottleneck for F-RAN nodes. To this end, this paper focuses on developing a dynamic and autonomous computing resource allocation scheme for F-RAN considering delay requirements of users at a node. The proposed algorithm uses reinforcement learning to optimise latency, energy consumption and cost in the F-RAN. The performance and computational complexity of the proposed algorithm will be evaluated as part of a simulation and the results compared with other algorithms from existing studies with a similar objective function.
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