Data-driven predictive models for residential building energy use based on the segregation of heating and cooling days

被引:67
作者
Kamel, Ehsan [1 ]
Sheikh, Shaya [2 ]
Huang, Xueqing [3 ]
机构
[1] New York Inst Technol, Dept Energy Management, Sch Engn & Comp Sci, Old Westbury, NY 11568 USA
[2] New York Inst Technol, Sch Management, Dept Management Sci Studies, New York, NY USA
[3] New York Inst Technol, Dept Comp Sci, Sch Engn & Comp Sci, Old Westbury, NY 11568 USA
关键词
Data-driven predictive model; Heating and cooling days; Energy consumption; Residential buildings; Feature selection; EXTREME LEARNING-MACHINE; LOAD PREDICTION; CONSUMPTION PREDICTION; NEURAL-NETWORKS; SELECTION; OCCUPANCY; DEMAND;
D O I
10.1016/j.energy.2020.118045
中图分类号
O414.1 [热力学];
学科分类号
摘要
Data-driven models can estimate the buildings' energy consumption using machine learning algorithms. This approach works based on the correlation between energy consumption and various inputs such as weather data, occupancy schedules, heating, air conditioning, and physical properties of buildings. Seasonal changes affect buildings' energy use. Hence, the required data for data-driven models (DDMs) during the heating and cooling days could be different. Selecting the most impactful inputs can help to choose the type and quantity of sensors for deployment that improve the model's accuracy and minimize the costs. This paper performs feature selection for heating, cooling, hot water, and ventilation loads in residential buildings under the mixed-humid climate zone. Filter method, wrapper backward elimination, wrapper recursive feature elimination, Lasso regression, linear regression, and Extreme Gradient Boosting (XGBoost) regression are adopted for heating and cooling days, separately. We use twenty-five outputs from a computer model, and the results show that the key features for a DDM are different for heating and cooling days, and XGBoost provides the most accurate forecast. The findings of this paper are useful for selecting proper models, sensors, and inputs for model-predictive control systems during the heating and cooling seasons. (C) 2020 Elsevier Ltd. All rights reserved.
引用
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页数:12
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