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Statistical analysis for predicting location-specific data center PUE and its improvement potential

机译:预测特定地点数据中心型型呈统计分析及其改进潜力

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摘要

This paper presents a statistical framework for predictive analysis of data center power usage effectiveness (PUE), with a focus on hyperscale data centers (HDCs). Thermodynamics-based PUE models considering representative economizer choices are proposed, taking climate variables and energy system parameters as inputs for robust PUE predictions. Sobol's method is used to assess total order sensitivity indices of key modeling parameters, suggesting that climate variables and uninterruptible power supply (UPS) efficiencies are the most important parameters. The PUE values of 17 HDCs operated by Google and Facebook were predicted, considering location-specific weather conditions, and uncertainties in energy system parameters and economizer choices. Results were verified using reported PUE values, indicating the model's effectiveness in capturing regional and seasonal PUE variations, and in generating point-estimations for macro-level data center (DC) energy models. Finally, achievable PUE values were computed through differential evolution, identifying minimum practical PUE values that could be obtained with state-of-the-art technologies. The framework can be applied in predictions of location-specific PUE values, PUE improvement analysis, and PUE target-setting by policy makers.
机译:本文提出了一种统计框架,用于预测数据中心电力使用有效性(PUE),专注于超奇数据中心(HDC)。考虑代表性化学器选择的基于热力学的PUE模型,将气候变量和能量系统参数作为强大的百合预测的输入。 Sobol的方法用于评估关键建模参数的总次敏感性指标,表明气候变量和不间断电源(UPS)效率是最重要的参数。通过谷歌和Facebook运营的17个HDC的PUE值,考虑到特定于位置的天气状况,以及能源系统参数和康乐器选择中的不确定性。结果是使用报告的百分比进行验证,表明模型在捕获区域和季节性紫杉变化方面的有效性,以及为宏观数据中心(DC)能量模型的发电点估计。最后,通过差分演进计算可实现的百合值,识别可以通过最先进的技术获得的最小实用型百分比。该框架可以应用于决策者的特定位置特定的PUE值,PUE改进分析和PUE目标设置的预测。

著录项

  • 来源
    《Energy》 |2020年第15期|117556.1-117556.14|共14页
  • 作者

    Nuoa Lei; Eric Masanet;

  • 作者单位

    Department of Mechanical Engineering Northwestern University Evanston IL USA;

    Department of Mechanical Engineering Northwestern University Evanston IL USA Department of Chemical and Biological Engineering Northwestern University Evanston IL USA Bren School of Environmental Science and Management University of California Santa Barbara CA USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Data centers; Power usage effectiveness (PUE); Energy systems analysis; Sensitivity analysis; Prediction under uncertainty;

    机译:数据中心;电力使用有效性(扁平);能源系统分析;敏感性分析;在不确定性下预测;

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