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Hybrid surrogate model for online temperature and pressure predictions in data centers

机译:混合代理模型用于数据中心的在线温度和压力预测

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摘要

The increase in cloud computing and big data storage has led to significant growth in data center (DC) infrastructure that is now estimated to consume more than 1.5% of the world's electricity. Due to suboptimal DC design and operation, a significant fraction of this energy is wasted because of the cooling systems inability to effectively distribute cold air to servers. Consequently, additional cooling air must be circulated inside a DC to prevent local hot spots, which leads to undercooling at other locations. Row-based cooling is an emerging architecture that provides more effective airflow distribution, which lowers energy consumption. Since available methods are unsuitable for accurate online predictions, a general thermal model is required to predict spatiotemporal temperature changes inside a DC and hence optimize airflow distribution for this architecture. Typical approaches include physical models, computational fluid dynamics (CFD) simulations, and black-box data-driven models (DDMs). All three approaches are limited because they do not encapsulate the entirety of relevant operational parameters, are time-consuming and can provide unacceptable errors during extrapolative predictions. We address these deficiencies by developing a fast, adaptive, and accurate hybrid surrogate model by combining a DDM and the thermofluid transport relations to predict temperatures in a DC. Training data for the DDM is obtained from CFD simulations. An artificial neural network (ANN) with the Rectified Linear Unit (ReLU) activation function is shown to predict pressure distributions accurately in a row-based cooling DC. These predicted pressures are inputs for thermofluid transport equations to determine the temperature distribution. The applicability of the model is demonstrated by comparing predictions with experimental measurements that characterize the influence of varying server workload distribution and cooling unit operational conditions, i.e., temperature set-point, airflow rate, and fan locations, on the temperature distribution. The model can be used to (1) improve cooling configuration design, (2) facilitate thermally aware workload management, and (3) test "what if scenarios to characterize the influence of operating conditions on the temperature distribution.
机译:云计算和大数据存储的增加导致数据中心(DC)基础设施的显着增长,现在估计占世界电力的1.5%以上。由于次优的DC设计和操作,由于冷却系统无法有效地将冷空气分配给服务器,因此浪费了这种能量的显着分数。因此,必须在DC内循环额外的冷却空气以防止局部热点,这导致在其他位置过冷却。基于行的冷却是一种新兴架构,提供更有效的气流分布,从而降低能耗。由于可用的方法不适合准确在线预测,因此需要一种通用的热模型来预测DC内的时空温度变化,因此优化该架构的气流分布。典型方法包括物理模型,计算流体动力学(CFD)仿真和黑盒数据驱动模型(DDMS)。所有三种方法都是有限的,因为它们不会封装完整的相关操作参数,是耗时的,并且可以在外推预测期间提供不可接受的错误。通过组合DDM和Thermof流体传输关系来开发快速,自适应和准确的混合替代模型来解决这些缺陷来解决这些缺陷。 DDM的培训数据是从CFD仿真获得的。具有整流线性单元(Relu)激活功能的人工神经网络(ANN)被示出为在基于行的冷却DC中精确地预测压力分布。这些预测的压力是热流体传输方程的输入,以确定温度分布。通过将预测与实验测量的预测进行了比较了表征不同服务器工作量分布和冷却单元操作条件的影响,即温度设定点,气流率和风扇位置的实验测量来证明模型的适用性。该模型可用于(1)改善冷却配置设计,(2)促进热意识的工作负载管理,(3)测试“如果是如何表征操作条件对温度分布的影响。

著录项

  • 来源
    《Future generation computer systems》 |2021年第1期|531-547|共17页
  • 作者单位

    Computing Infrastructure Research Center McMaster University Hamilton Ontario Canada Department of Mechanical Engineering McMaster University Hamilton Ontario Canada;

    Computing Infrastructure Research Center McMaster University Hamilton Ontario Canada Department of Mechanical Engineering McMaster University Hamilton Ontario Canada;

    Computing Infrastructure Research Center McMaster University Hamilton Ontario Canada;

    Computing Infrastructure Research Center McMaster University Hamilton Ontario Canada;

    Computing Infrastructure Research Center McMaster University Hamilton Ontario Canada Department of Computer and Software Engineering McMaster University Hamilton Ontario Canada;

    Computing Infrastructure Research Center McMaster University Hamilton Ontario Canada;

    Computing Infrastructure Research Center McMaster University Hamilton Ontario Canada Department of Mechanical Engineering McMaster University Hamilton Ontario Canada;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Data center; Data-driven models; Row-based cooling architecture; Temperature prediction; ANN; SVR;

    机译:数据中心;数据驱动模型;基于行的冷却架构;温度预测;安;SVR.;

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