Deep Reinforcement Learning for Tropical Air Free-cooled Data Center Control

Author:

Le Duc Van1ORCID,Wang Rongrong1,Liu Yingbo1,Tan Rui1ORCID,Wong Yew-Wah2,Wen Yonggang1

Affiliation:

1. Computer Science and Engineering, Nanyang Technological University, Singapore

2. Energy Research Institute, Nanyang Technological University, Singapore

Abstract

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.

Funder

Media Development Authority

National Research Foundation

Green Data Centre Programme

Energy Programme

Energy Market Authority

Green Data Centre Research

Behavioural Studies in the Energy, Water, Waste and Transportation Sectors

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference42 articles.

1. Uptime Institute. 2014. Data Center Industry Survey Results. Retrieved from https://journal.uptimeinstitute.com/2014-data-centerindustry-survey/. Uptime Institute. 2014. Data Center Industry Survey Results. Retrieved from https://journal.uptimeinstitute.com/2014-data-centerindustry-survey/.

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