Prediction of heating and cooling loads based on light gradient boosting machine algorithms

被引:81
作者
Guo, Jiaxin [1 ]
Yun, Sining [1 ,2 ]
Meng, Yao [1 ]
He, Ning [3 ]
Ye, Dongfu [2 ]
Zhao, Zeni [1 ]
Jia, Lingyun [1 ]
Yang, Liu [4 ]
机构
[1] Xian Univ Architecture & Technol, Sch Mat Sci & Engn, Xian 710055, Shaanxi, Peoples R China
[2] Qinghai Bldg & Mat Res Acad Co Ltd, Qinghai Prov Key Lab Plateau Green Bldg & Ecocommu, Xining 810000, Qinghai, Peoples R China
[3] Xian Univ Architecture & Technol, Sch Mech & Elect Engn, Xian 710055, Shaanxi, Peoples R China
[4] Xian Univ Architecture & Technol, Coll Architecture, Xian 710055, Shaanxi, Peoples R China
关键词
Residential buildings; Machine learning; Feature selection; Hyperparameter optimization algorithm; Ensemble learning; ARTIFICIAL NEURAL-NETWORKS; RESIDENTIAL BUILDINGS; COMPRESSIVE STRENGTH; ENERGY;
D O I
10.1016/j.buildenv.2023.110252
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Machine learning models have been widely used to study the prediction of heating and cooling loads in resi-dential buildings. However, most of these methods use the default hyperparameters, resulting in inaccurate prediction accuracy. In this work, based on hyperparametric optimization algorithms of random search (Random), grid search (Grid), covariance matrix adaptive evolution strategy (CMA-ES), and tree-structured parzen estimator (TPE), were combined with the light gradient boosting machine (LightGBM) model, to construct four hybrid models (Random-LightGBM, Grid-LightGBM, CMA-ES-LightGBM and TPE-LightGBM) for improved prediction accuracy of heating and cooling loads. The LightGBM model was trained using a dataset consisting of building features, cooling set points, and occupant behavior parameters. Feature selection was performed by a random forest-based feature selection method, which determines the input features of the load prediction model. The TPE-LightGBM model achieved the best prediction accuracy among all proposed models with a root mean square error (RMSE) of 0.2714, mean absolute error (MAE) of 0.1416, coefficient of deter-mination (R2) of 0.9981, and mean absolute percentage error (MAPE) of 0.4699% for heating load prediction, and RMSE of 0.1901, MAE of 0.1394, R2 of 0.9924, and MAPE of 2.3509% for cooling load prediction. The proposed TPE-LightGBM model provides an efficient strategy for predicting heating and cooling loads, which can provide better energy efficiency measures at the early design stages of residential buildings.
引用
收藏
页数:15
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共 57 条
[1]   Optimizing deep neural networks hyperparameter positions and values [J].
Akl, Ahmed ;
El-Henawy, Ibrahim ;
Salah, Ahmad ;
Li, Kenli .
JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2019, 37 (05) :6665-6681
[2]   Hybrid approach for energy consumption prediction: Coupling data-driven and physical approaches [J].
Amasyali, Kadir ;
El-Gohary, Nora .
ENERGY AND BUILDINGS, 2022, 259
[3]   Predicting the shear strength of reinforced concrete beams using Artificial Neural Networks [J].
Asteris, Panagiotis G. ;
Armaghani, Danial J. ;
Hatzigeorgiou, George D. ;
Karayannis, Chris G. ;
Pilakoutas, Kypros .
COMPUTERS AND CONCRETE, 2019, 24 (05) :469-488
[4]   Application of artificial neural networks for the prediction of the compressive strength of cement-based mortars [J].
Asteris, Panagiotis G. ;
Apostolopoulou, Maria ;
Skentou, Athanasia D. ;
Moropoulou, Antonia .
COMPUTERS AND CONCRETE, 2019, 24 (04) :329-345
[5]   Prediction of the compressive strength of self-compacting concrete using surrogate models [J].
Asteris, Panagiotis G. ;
Ashrafian, Ali ;
Rezaie-Balf, Mohammad .
COMPUTERS AND CONCRETE, 2019, 24 (02) :137-150
[6]   Artificial bee colony-based neural network for the prediction of the fundamental period of infilled frame structures [J].
Asteris, Panagiotis G. ;
Nikoo, Mehdi .
NEURAL COMPUTING & APPLICATIONS, 2019, 31 (09) :4837-4847
[7]   Krill herd algorithm-based neural network in structural seismic reliability evaluation [J].
Asteris, Panagiotis G. ;
Nozhati, Saeed ;
Nikoo, Mehdi ;
Cavaleri, Liborio ;
Nikoo, Mohammad .
MECHANICS OF ADVANCED MATERIALS AND STRUCTURES, 2019, 26 (13) :1146-1153
[8]   Identifying whole-building heat loss coefficient from heterogeneous sensor data: An empirical survey of gray and black box approaches [J].
Baasch, Gaby ;
Westermann, Paul ;
Evins, Ralph .
ENERGY AND BUILDINGS, 2021, 241
[9]   Deep reinforcement learning to optimise indoor temperature control and heating energy consumption in buildings [J].
Brandi, Silvio ;
Piscitelli, Marco Savino ;
Martellacci, Marco ;
Capozzoli, Alfonso .
ENERGY AND BUILDINGS, 2020, 224
[10]   Particle removal efficiency of a household portable air cleaner in real-world residences: A single-blind cross-over field study [J].
Cai, Jiao ;
Yu, Wei ;
Li, Baizhan ;
Yao, Runming ;
Zhang, Tujingwa ;
Guo, Miao ;
Wang, Han ;
Cheng, Zhu ;
Xiong, Jie ;
Meng, Qingyu ;
Kipen, Howard .
ENERGY AND BUILDINGS, 2019, 203