热带空气自冷数据中心控制的深度强化学习

D. V. Le, Rongrong Wang, Yingbo Liu, Rui Tan, Y. Wong, Yonggang Wen
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引用次数: 13

摘要

由于热带地区全年环境温度和相对湿度较高,因此不存在风冷式数据中心(dc)。由于监管机构要求提高直流温度设定值,越来越多的服务器可以承受更高的温度和相对湿度,这揭示了在热带地区使用空气自然冷却的直流数据中心的可行性。然而,由于复杂的干湿动力学,在热带地区运行风冷直流系统通常需要自适应控制供气条件,以保持服务器的计算性能和可靠性。本文研究了自由制冷热带直流系统送风温度和相对湿度控制在一定阈值以下的问题。为了实现这一目标,我们将控制问题描述为马尔可夫决策过程,并应用深度强化学习(DRL)来学习在满足送风温度和相对湿度要求的同时最小化冷却能量的控制策略。我们还开发了一个约束DRL解决方案,以提高性能。基于从空冷试验台收集的真实数据轨迹的广泛评估,以及对无约束和约束DRL方法以及其他两种基线方法的比较,表明我们提出的解决方案具有优越的性能。
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 for Tropical Air Free-Cooled Data Center Control
Air free-cooled data centers (DCs) have not existed in the tropical zone due to the unique challenges of year-round high ambient temperature and relative humidity (RH). The increasing availability of servers that can tolerate higher temperatures and RH due to the regulatory bodies’ prompts to raise DC temperature setpoints sheds light upon the feasibility of air free-cooled DCs in the tropics. However, due to the complex psychrometric dynamics, operating the air free-cooled DC in the tropics generally requires adaptive control of supply air condition to maintain the computing performance and reliability of the servers. This article studies the problem of controlling the supply air temperature and RH in a free-cooled tropical DC below certain thresholds. To achieve the goal, we formulate the control problem as Markov decision processes and apply deep reinforcement learning (DRL) to learn the control policy that minimizes the cooling energy while satisfying the requirements on the supply air temperature and RH. We also develop a constrained DRL solution for performance improvements. Extensive evaluation based on real data traces collected from an air free-cooled testbed and comparisons among the unconstrained and constrained DRL approaches as well as two other baseline approaches show the superior performance of our proposed solutions.
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