考虑多个内部热源的数据中心服务器温度预测负载均衡方法

Xin Yao, Minato Omori, H. Nishi
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引用次数: 2

摘要

随着人们对云计算服务的需求不断增长,计算资源的使用越来越灵活,导致数据中心能耗过高的问题日益严重。在近年来的研究中,计算和冷却设备的能耗问题备受关注。为了降低数据中心的能耗,需要考虑冷却设备的能效。本研究从理论上模拟了服务器内部热源和排气温度之间的关系。首先,我们提出了一个模型,扩展了先前的研究,以描述温度变化的延迟,并将其应用于多个内部热源。在此基础上,利用真实服务器对该模型的预测精度进行了实验评估,并通过仿真验证了该模型在负载均衡方面的有效性。仿真结果表明,与传统方法相比,该方法可将服务器平均最高温度降低0.27°C,理论上可在典型数据中心每天节省260 kW,每年节省95 MW。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Load Balancing Method Using Server Temperature Prediction Considering Multiple Internal Heat Sources in Data Centers
The increasing demand for cloud computing services to more flexibly use computing resources has led to a severe problem of excessive energy consumption in data centers. In recent research, the energy consumption of computing and cooling equipment has attracted much attention. To reduce the energy consumption in data centers, the energy efficiency of the cooling equipment needs to be considered. This study theoretically modeled the relations between the server's internal heat sources and exhaust temperatures. First, we proposed a model that expands the previous study to describe the temperature change delay and to apply it to multiple internal heat sources. Then, we experimentally evaluated the prediction accuracy of the proposed model using a real server and conducted a simulation to confirm the efficiency of this prediction model for load balancing. The simulation results showed that the proposed method reduced the average maximum server temperature by 0.27 °C compared to the conventional method, which theoretically leads to energy savings of 260 kW per day and 95 MW per year in typical data centers.
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