基于深度强化学习的云无线接入网动态资源分配

Rehenuma Tasnim Rodoshi, Taewoon Kim, Wooyeol Choi
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引用次数: 4

摘要

云无线接入网(C-RAN)是满足电信网络日益增长的资源需求的一种很有前途的体系结构。在C-RAN中,基站被解耦为基带单元(BBU)和远程无线电头(RRH)。BBU进一步集中,在BBU池内虚拟化为虚拟机。这种架构可以满足蜂窝数据流量的大量增长需求。然而,C-RAN中的资源管理需要精心设计,以达到节能的目标,并满足长期运行期间的用户需求。由于不同时间和地点的用户需求是高度动态的,因此如何进行最优的资源管理是一个挑战。在本文中,我们利用深度强化学习(DRL)模型来学习C-RAN中的空间和时间用户需求,并提出了一种调整vm大小以分配BBU池内计算资源的算法。计算资源的分配是根据虚拟机关联rrh中所需资源的大小进行的。通过广泛的评估研究,我们表明所提出的算法可以在满足动态用户需求的同时提高C-RAN网络的资源效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Reinforcement Learning Based Dynamic Resource Allocation in Cloud Radio Access Networks
Cloud radio access network (C-RAN) is a promising architecture to fulfill the ever-increasing resource demand in telecommunication networks. In C-RAN, a base station is decoupled into baseband unit (BBU) and remote radio head (RRH). The BBUs are further centralized and virtualized as virtual machines (VMs) inside a BBU pool. This architecture can meet the massively increasing cellular data traffic demand. However, resource management in C-RAN needs to be designed carefully in order to reach the objectives of energy saving and to meet the user demand over a long operational period. Since the user demands are highly dynamic in different times and locations, it is challenging to perform the optimal resource management. In this paper, we exploit a deep reinforcement learning (DRL) model to learn the spatial and temporal user demand in C-RAN, and propose an algorithm that resizes the VMs to allocate computational resources inside the BBU pool. The computational resource allocation is done according to the amount of required resources in the associated RRHs of the VMs. Through an extensive evaluation study, we show that the proposed algorithm can make the C-RAN network resource-efficiency while satisfying dynamic user demand.
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