JESO: Reducing Data Center Energy Consumption Based on Model Predictive Control

Shu Yang, Guangfei Xu,Xiaolei Chang, Zhengjian Chen,Qingzhen Dong,Laizhong Cui

Research Square (Research Square)(2023)

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摘要
Abstract With the development of the Internet, the demand for data centers is growing dramatically. The cost of running a data center mainly comes from the huge electricity bill. Actually, IT (Information Technology) equipment and the HVAC (Heating, Ventilation, and Air Conditioning) system of the data center consume the majority of electricity. The existing energy--saving researches usually consider IT equipment or the HVAC system separately. But the energy consumption of HVAC is partially correlated with the running status of IT equipment. Taking methods to optimize the energy consumption of them jointly will generate more benefits. Therefore, we proposed JESO (Joint Energy Saving Optimization), a MPC (Model Predictive Control) -based method, to realize the joint energy-saving optimization of IT equipment and the HVAC system. We conducted extensive experiments based on generated transmission data and the HVAC system data from two real data centers. The experimental results demonstrated that JESO based on the joint energy-saving algorithm of IT equipment and the HVAC system can further reduce energy consumption as compared to baselines and will not negatively affect the data transmission latency of the IT equipment.
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data center energy consumption,predictive control,energy consumption
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