Comparison of data driven modeling approaches for temperature prediction in data centers

被引:64
|
作者
Athavale, Jayati [1 ]
Yoda, Minami [1 ]
Joshi, Yogendra [1 ]
机构
[1] Georgia Inst Technol, George W Woodruff Sch Mech Engn, Atlanta, GA 30332 USA
关键词
Compact modeling; Data center; Rapid temperature prediction;
D O I
10.1016/j.ijheatmasstransfer.2019.02.041
中图分类号
O414.1 [热力学];
学科分类号
摘要
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.
引用
收藏
页码:1039 / 1052
页数:14
相关论文
共 50 条
  • [31] A comparison of stochastic and data-driven FEM approaches to problems with insufficient material data
    Korzeniowski, Tim Fabian
    Weinberg, Kerstin
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2019, 350 : 554 - 570
  • [32] Comparison and explanation of data-driven modeling for weld quality prediction in resistance spot welding
    Russell, Matthew
    Kershaw, Joseph
    Xia, Yujun
    Lv, Tianle
    Li, Yongbing
    Ghassemi-Armaki, Hassan
    Carlson, Blair E.
    Wang, Peng
    JOURNAL OF INTELLIGENT MANUFACTURING, 2024, 35 (03) : 1305 - 1319
  • [33] Towards Data-Driven Autonomics in Data Centers
    Sirbu, Alina
    Babaoglu, Ozalp
    2015 INTERNATIONAL CONFERENCE ON CLOUD AND AUTONOMIC COMPUTING (ICCAC), 2015, : 45 - 56
  • [34] Data driven modeling of photonic data
    Ryabchykov, Oleg
    Bocklitz, Thomas
    ADVANCED CHEMICAL MICROSCOPY FOR LIFE SCIENCE AND TRANSLATIONAL MEDICINE 2022, 2022, 11973
  • [35] Data-Driven Software Reliability and Availability Modeling and Prediction
    Xuemei Zhang
    Hoang Pham
    OPSEARCH, 2008, 45 (4) : 335 - 350
  • [36] Data driven modeling for energy consumption prediction in smart buildings
    Gonzalez-Vidal, Aurora
    Ramallo-Gonzalez, Alfonso P.
    Terroso-Saenz, Fernando
    Skarmeta, Antonio
    2017 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2017, : 4562 - 4569
  • [37] Analysis of daily solar power prediction with data-driven approaches
    Long, Huan
    Zhang, Zijun
    Su, Yan
    APPLIED ENERGY, 2014, 126 : 29 - 37
  • [38] Data driven approaches for prediction of building energy consumption at urban level
    Tardioli, Giovanni
    Kerrigan, Ruth
    Oates, Mike
    O'Donnell, James
    Finn, Donal
    6TH INTERNATIONAL BUILDING PHYSICS CONFERENCE (IBPC 2015), 2015, 78 : 3378 - 3383
  • [39] Load Profile Prediction in Smart Building using Data Driven Approaches
    Revati, G.
    Palak, M.
    Suryawanshi, U.
    Sheikh, A.
    Bhil, S.
    PROCEEDINGS OF 2021 31ST AUSTRALASIAN UNIVERSITIES POWER ENGINEERING CONFERENCE (AUPEC), 2021,
  • [40] A Systematic Review of Data-Driven Approaches to Item Difficulty Prediction
    AlKhuzaey, Samah
    Grasso, Floriana
    Payne, Terry R.
    Tamma, Valentina
    ARTIFICIAL INTELLIGENCE IN EDUCATION (AIED 2021), PT I, 2021, 12748 : 29 - 41