Predicting Heating Load in Energy-Efficient Buildings Through Machine Learning Techniques

被引:37
作者
Moayedi, Hossein [1 ,2 ]
Dieu Tien Bui [3 ,4 ]
Dounis, Anastasios [5 ]
Lyu, Zongjie [6 ]
Foong, Loke Kok [7 ]
机构
[1] Ton Duc Thang Univ, Dept Management Sci & Technol Dev, Ho Chi Minh City 758307, Vietnam
[2] Ton Duc Thang Univ, Fac Civil Engn, Ho Chi Minh City 758307, Vietnam
[3] Duy Tan Univ, Inst Res & Dev, Da Nang 550000, Vietnam
[4] Univ South Eastern Norway, Dept Business & IT, Geog Informat Syst Grp, N-3800 Bo I Telemark, Norway
[5] Univ West Attica, Dept Ind Design & Prod Engn, Campus 2,250 Thivon & P Ralli, Egaleo 12244, Greece
[6] Xian Univ Technol, State Key Lab Ecohydraul Northwest Arid Reg China, Xian 710048, Shaanxi, Peoples R China
[7] Univ Teknol Malaysia, Fac Engn, Sch Civil Engn, Johor Baharu 81310, Johor, Malaysia
来源
APPLIED SCIENCES-BASEL | 2019年 / 9卷 / 20期
关键词
energy-efficient buildings; smart buildings; machine learning; random forest; optimization; COOLING LOADS; DESIGN; CLASSIFICATION; CONSUMPTION; REGRESSION; DEMAND; SOIL;
D O I
10.3390/app9204338
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The heating load calculation is the first step of the iterative heating, ventilation, and air conditioning (HVAC) design procedure. In this study, we employed six machine learning techniques, namely multi-layer perceptron regressor (MLPr), lazy locally weighted learning (LLWL), alternating model tree (AMT), random forest (RF), ElasticNet (ENet), and radial basis function regression (RBFr) for the problem of designing energy-efficient buildings. After that, these approaches were used to specify a relationship among the parameters of input and output in terms of the energy performance of buildings. The calculated outcomes for datasets from each of the above-mentioned models were analyzed based on various known statistical indexes like root relative squared error (RRSE), root mean squared error (RMSE), mean absolute error (MAE), correlation coefficient (R-2), and relative absolute error (RAE). It was found that between the discussed machine learning-based solutions of MLPr, LLWL, AMT, RF, ENet, and RBFr, the RF was nominated as the most appropriate predictive network. The RF network outcomes determined the R-2, MAE, RMSE, RAE, and RRSE for the training dataset to be 0.9997, 0.19, 0.2399, 2.078, and 2.3795, respectively. The RF network outcomes determined the R-2, MAE, RMSE, RAE, and RRSE for the testing dataset to be 0.9989, 0.3385, 0.4649, 3.6813, and 4.5995, respectively. These results show the superiority of the presented RF model in estimation of early heating load in energy-efficient buildings.
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收藏
页数:17
相关论文
共 54 条
[1]   A new design chart for estimating friction angle between soil and pile materials [J].
Aksoy, Huseyin Suha ;
Gor, Mesut ;
Inal, Esen .
GEOMECHANICS AND ENGINEERING, 2016, 10 (03) :315-324
[2]  
[Anonymous], ENG COMPUT
[3]  
[Anonymous], MACH LEARN MACH LEARN
[4]  
[Anonymous], 2017, SPATIAL MODELING ASS
[5]  
Atkeson CG, 1997, ARTIF INTELL REV, V11, P75, DOI 10.1023/A:1006511328852
[6]   Prediction of residential building energy consumption: A neural network approach [J].
Biswas, M. A. Rafe ;
Robinson, Melvin D. ;
Fumo, Nelson .
ENERGY, 2016, 117 :84-92
[7]   SmcHD1, containing a structural-maintenance-of-chromosomes hinge domain, has a critical role in X inactivation [J].
Blewitt, Marnie E. ;
Gendrel, Anne-Valerie ;
Pang, Zhenyi ;
Sparrow, Duncan B. ;
Whitelaw, Nadia ;
Craig, Jeffrey M. ;
Apedaile, Anwyn ;
Hilton, Douglas J. ;
Dunwoodie, Sally L. ;
Brockdorff, Neil ;
Kay, Graham F. ;
Whitelaw, Emma .
NATURE GENETICS, 2008, 40 (05) :663-669
[8]  
Buhmann M. D, 2003, C MO AP C M, DOI 10.1017/CBO9780511543241
[9]   Modeling heating and cooling loads by artificial intelligence for energy-efficient building design [J].
Chou, Jui-Sheng ;
Bui, Dac-Khuong .
ENERGY AND BUILDINGS, 2014, 82 :437-446
[10]   Random forests for classification in ecology [J].
Cutler, D. Richard ;
Edwards, Thomas C., Jr. ;
Beard, Karen H. ;
Cutler, Adele ;
Hess, Kyle T. .
ECOLOGY, 2007, 88 (11) :2783-2792