Data Center Cooling System Optimization Using Offline Reinforcement Learning
Xianyuan Zhan, Xiangyu Zhu, Peng Cheng, Xiao Hu, Ziteng He, Hanfei, Geng, Jichao Leng, Huiwen Zheng, Chenhui Liu, Tianshun Hong, Yan Liang,, Yunxin Liu, Feng Zhao

TL;DR
This paper introduces a physics-informed offline reinforcement learning framework utilizing graph neural networks to optimize data center cooling systems, achieving significant energy savings while ensuring safety and operational constraints.
Contribution
The work presents a novel offline RL approach with a physics-informed graph neural network for energy-efficient data center cooling, validated in a real-world large-scale deployment.
Findings
Achieved 14-21% energy savings in data center cooling
Successfully deployed in a large-scale production environment
Demonstrated robustness and safety compliance in control
Abstract
The recent advances in information technology and artificial intelligence have fueled a rapid expansion of the data center (DC) industry worldwide, accompanied by an immense appetite for electricity to power the DCs. In a typical DC, around 30~40% of the energy is spent on the cooling system rather than on computer servers, posing a pressing need for developing new energy-saving optimization technologies for DC cooling systems. However, optimizing such real-world industrial systems faces numerous challenges, including but not limited to a lack of reliable simulation environments, limited historical data, and stringent safety and control robustness requirements. In this work, we present a novel physics-informed offline reinforcement learning (RL) framework for energy efficiency optimization of DC cooling systems. The proposed framework models the complex dynamical patterns and physical…
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Taxonomy
TopicsHeat Transfer and Optimization
MethodsGraph Neural Network
