Gradient boosting machine for modeling the energy consumption of commercial buildings

被引:317
作者
Touzani, Samir [1 ]
Granderson, Jessica [1 ]
Fernandes, Samuel [1 ]
机构
[1] Lawrence Berkeley Natl Lab, 1 Cyclotron Rd, Berkeley, CA 94720 USA
关键词
Gradient boosting machine; Machine learning; Statistical regression; Baseline energy modeling; Energy efficiency; Savings measurement and verification; AUTOMATED MEASUREMENT; VERIFICATION; REGRESSION;
D O I
10.1016/j.enbuild.2017.11.039
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Accurate savings estimations are important to promote energy efficiency projects and demonstrate their cost-effectiveness. The increasing presence of advanced metering infrastructure (AMI) in commercial buildings has resulted in a rising availability of high frequency interval data. These data can be used for a variety of energy efficiency applications such as demand response, fault detection and diagnosis, and heating, ventilation, and air conditioning (HVAC) optimization. This large amount of data has also opened the door to the use of advanced statistical learning models, which hold promise for providing accurate building baseline energy consumption predictions, and thus accurate saving estimations. The gradient boosting machine is a powerful machine learning algorithm that is gaining considerable traction in a wide range of data driven applications, such as ecology, computer vision, and biology. In the present work an energy consumption baseline modeling method based on a gradient boosting machine was proposed. To assess the performance of this method, a recently published testing procedure was used on a large dataset of 410 commercial buildings. The model training periods were varied and several prediction accuracy metrics were used to evaluate the model's performance. The results show that using the gradient boosting machine model improved the R-squared prediction accuracy and the CV(RMSE) in more than 80 percent of the cases, when compared to an industry best practice model that is based on piecewise linear regression, and to a random forest algorithm. (C) 2017 Elsevier B.V. All rights reserved.
引用
收藏
页码:1533 / 1543
页数:11
相关论文
共 42 条
[1]  
Aad G., 2014, J HIGH ENERGY PHYS, V6, P1
[2]  
Ahmad M. W., 2017, ENERGY BUILD
[3]  
[Anonymous], 2012, Commercial Buildings Energy Consumption Survey
[4]   An ensemble learning framework for anomaly detection in building energy consumption [J].
Araya, Daniel B. ;
Grolinger, Katarina ;
ElYamany, Hany F. ;
Capretz, Miriam A. M. ;
Bitsuamlak, Girma .
ENERGY AND BUILDINGS, 2017, 144 :191-206
[5]  
ASHRAE, 2014, Measurement of energy, demand and water savings-Guidelines 14
[6]  
Bergmeir C., 2015, Monash University Department of Econometrics and Business Statistics Working Paper, V10, P15, DOI [DOI 10.1016/J.CSDA.2017.11, DOI 10.1016/J.CSDA.2017.11.003.[]
[7]   On the use of cross-validation for time series predictor evaluation [J].
Bergmeir, Christoph ;
Benitez, Jose M. .
INFORMATION SCIENCES, 2012, 191 :192-213
[8]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[9]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[10]   Kernel regression for real-time building energy analysis [J].
Brown, Matthew ;
Barrington-Leigh, Chris ;
Brown, Zosia .
JOURNAL OF BUILDING PERFORMANCE SIMULATION, 2012, 5 (04) :263-276