Location-Aware Sleep Strategy for Energy-Delay Tradeoffs in 5G with Reinforcement Learning

A. El-Amine, Hussein Al Haj Hassan, Mauricio Iturralde, L. Nuaymi
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引用次数: 18

Abstract

In this paper, we propose a sleep strategy for energy-efficient 5G Base Stations (BSs) with multiple Sleep Mode (SM) levels to bring down energy consumption. Such management of energy savings is coupled with managing the Quality of Service (QoS) resulting from waking up sleeping BSs. As a result, a tradeoff exists between energy savings and delay. Unlike prior work that studies this problem for binary state BS (ON and OFF), this work focuses on multi-level SM environment, where the BS can switch to several SM levels. We propose a Q-Learning algorithm that controls the state of the BS depending on the geographical location and moving velocity of neighboring users in order to learn the best policy that maximizes the tradeoff between energy savings and delay. We evaluate the performance of our proposed algorithm with an online suboptimal algorithm that we introduce as well. Results show that the Q-Learning algorithm performs better with energy savings up to 92% as well as better delay performance than the heuristic scheme.
基于强化学习的5G能量延迟权衡的位置感知睡眠策略
在本文中,我们提出了一种具有多个睡眠模式(SM)级别的节能5G基站(BSs)的睡眠策略,以降低能耗。这种节能管理与管理服务质量(QoS)相结合,QoS由唤醒休眠的BSs而产生。因此,在节能和延迟之间存在权衡。与之前研究二进制状态BS (ON和OFF)问题的工作不同,本工作侧重于多级SM环境,其中BS可以切换到多个SM级别。我们提出了一种Q-Learning算法,该算法根据邻近用户的地理位置和移动速度来控制BS的状态,以学习最大限度地在节能和延迟之间权衡的最佳策略。我们还介绍了一个在线次优算法来评估我们提出的算法的性能。结果表明,Q-Learning算法比启发式算法节能92%,延迟性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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