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首页> 外文期刊>International Journal of Heat and Mass Transfer >Comparison of data driven modeling approaches for temperature prediction in data centers
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Comparison of data driven modeling approaches for temperature prediction in data centers

机译:数据中心温度预测的数据驱动建模方法比较

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Energy-efficient thermal management of data centers based on dynamic optimization and provisioning of cooling resources requires rapid (nearly real-time) predictions of temperatures within data centers. This work for the first time compares multiple Data-Driven Models (DDMs) to achieve such rapid temperature predictions. DDM typically employs statistical or machine learning-based tools, in combination with physics-based modeling and/or experimental data to predict system behavior. In general, DDM approaches are well-suited to systems that have multiple operational states based on interactions between the many electrical, mechanical and control parameters typical of data centers.This study compares the performance of three different DDM methods, namely Artificial Neural Networks (ANN), Support Vector Regression (SVR), Gaussian Process Regression (GPR) in predicting both steady-state and transient rack inlet air temperature distributions in data centers. Additionally, Proper Orthogonal Decomposition (POD) was considered for transient modeling. The data used for training and analysis were obtained by performing 300 offline numerical simulations with a room-level, experimentally validated computational fluid dynamics/heat transfer (CFD/HT) model.The performance of the four data-driven models was evaluated based on the absolute mean error for interpolation and extrapolation, and the adaptability of the models to changes in physical domain (data center room) configuration. Additionally, the impact of the size of the training data set on prediction accuracy is also compared for the four models.For the steady-state case study, the predictions for ANN, SVR and GPR models are in good agreement with CFD/HT simulations, with the GPR model having the smallest overall average prediction error of 0.6 degrees C in rack inlet air temperature, corresponding to a relative error of 2.7% with respect to rack inlet temperature measured in degrees C. It was found that for all the frameworks the prediction error increases when the size of training data set was less than 300 samples. The GPR model had the best accuracy for smaller training data sets compared with the other models, with an average prediction error for rack inlet temperatures 1 degrees C when trained on only 50 simulations. For the transient case study, the interpolative prediction error for all the models is very low ( 0.3 degrees C); however, the extrapolative prediction errors are much greater, and appear to be directly proportional to the (here, temporal) "distance" from the interrogation point to the input parameter space. (C) 2019 Elsevier Ltd. All rights reserved.
机译:基于动态优化和冷却资源配置的数据中心节能型热管理要求对数据中心内的温度进行快速(近实时)预测。这项工作首次比较了多个数据驱动模型(DDM),以实现如此快速的温度预测。 DDM通常采用基于统计或机器学习的工具,并结合基于物理的建模和/或实验数据来预测系统行为。通常,DDM方法非常适合基于数据中心典型的许多电气,机械和控制参数之间相互作用的具有多个运行状态的系统。本研究比较了三种不同DDM方法的性能,即人工神经网络(ANN) ),支持向量回归(SVR),高斯过程回归(GPR),用于预测数据中心的稳态和瞬态机架入口空气温度分布。此外,考虑采用适当的正交分解(POD)进行瞬态建模。训练和分析所用的数据是通过对300个离线数值模拟进行的,这些模拟是在室内进行的,经过实验验证的计算流体力学/传热(CFD / HT)模型。内插和外插的绝对平均误差,以及模型对物理域(数据中​​心机房)配置变化的适应性。此外,还比较了这四个模型的训练数据集的大小对预测准确性的影响。对于稳态案例研究,ANN,SVR和GPR模型的预测与CFD / HT仿真非常吻合, GPR模型在机架入口空气温度中的总平均预测误差最小,为0.6摄氏度,相对于以摄氏度为单位测量的机架入口温度,其相对误差为2.7%。发现对于所有框架,该预测当训练数据集的大小小于300个样本时,误差会增加。与其他模型相比,GPR模型在较小的训练数据集上具有最高的准确性,仅在50个模拟中进行训练时,机架入口温度<1摄氏度的平均预测误差。对于瞬态案例研究,所有模型的插值预测误差都非常低(<0.3摄氏度);但是,外推预测误差要大得多,并且看起来与从询问点到输入参数空间的(此处为时间)“距离”成正比。 (C)2019 Elsevier Ltd.保留所有权利。

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