利用功率趋势预测器提高数据中心热管理效率

Chuan Song, Yanbing Sun, N. Ahuja, Xiaogang Sun, Litrin Jiang, Abishai Daniel, R. Khanna, T. Zhou, Xiaoping Zhou, Lifei Zhang
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引用次数: 0

摘要

介绍了一种基于功率变化趋势分析的优化主动冷却管理方法。通过对数据中心历史功率遥测数据的分析,功率预测器能够以5 ~ 15分钟的粒度预测功率变化。冷却控制器利用观测到的热量信息和预估的热量变化趋势驱动CRAC对预测窗口内的温度情况进行管理。为了验证不同冷却参数下的冷却结果,提出了一种风险等级评价方法,并进行了不同预测窗口下的实验,给出了实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using power trend predicator to improve datacenter thermal management efficiency
This paper introduced one optimized proactive cooling management approach based on power variation trend analysis. Through analyzing the data center historical power telemetries, the power predictor is able to predicate power variation with 5– 15 minutes granularity. The cooling controller uses the observed heat information and estimated thermal variation trend to drive CRAC to manage temperature situation at prediction window. To validate cooling results from different cooling parameters, one risk level evaluation method is proposed and the experiments for different prediction window are conducted and the result is presented.
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