冷却系统对数据中心能源效率的影响:机器学习优化

Rajendra Kumar, S. Khatri, Mario José Diván
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引用次数: 1

摘要

由于越来越多的人使用云服务进行数据存储和管理,数据中心的数量正在迅速增加。因此,数据中心的总功耗也在不断增加。由于各种原因,如设备的热损失和功率因素问题,数据中心的能源效率不是很高。本文试图回顾2015年至2019年前后的现有工作,并了解数据中心面临的问题。数据中心的能源使用和温度的影响以及通过机器学习(ML)算法进行优化的方法进行了审查。影响数据中心能耗的一些因素包括气流、热损失、环境温度等。通过识别影响数据中心冷却的各种因素,得出了现有研究的空白。根据需求,在数据中心的不同位置优化冷却参数的效果。强化学习技术在优化方面被认为是有效的。建议将支持向量机(SVM)和蚁群优化(ACO)相结合作为本研究的未来范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effect of Cooling Systems on the Energy Efficiency of Data Centers: Machine Learning Optimisation
The number of data centers is increasing rapidly since more people are now using cloud services for data storage and management. Due to this, the total power consumption of the data centers is also increasing. The energy efficiency of the data centers is not very high due to a variety of reasons like heat loss by equipment and power factor issues. This paper attempts to review the existing work around 2015 to 2019 and understand the issues faced by the data centers. The energy usage by the data centers and the effect of the temperatures are reviewed along with the methods of optimisation through Machine Learning (ML) algorithms. Some of the factors affecting the energy consumption of the data centers are the airflow, heat loss, ambient temperature, among others. The gap in the existing research is obtained by identifying the various factors that affect the cooling of the data centers. The effect of the cooling parameters is optimised at different locations of the data centers as per the requirement. Reinforced learning techniques have been seen to be efficient in terms of optimisation. A combination of Support Vector Machine (SVM) and Ant Colony Optimisation (ACO) is suggested as a future scope of this study.
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