A Data-Driven Forecasting Strategy to Predict Continuous Hourly Energy Demand in Smart Buildings

被引:19
作者
Mariano-Hernandez, Deyslen [1 ,2 ]
Hernandez-Callejo, Luis [2 ]
Solis, Martin [3 ]
Zorita-Lamadrid, Angel [4 ]
Duque-Perez, Oscar [4 ]
Gonzalez-Morales, Luis [5 ]
Santos-Garcia, Felix [6 ]
机构
[1] Inst Tecnol Santo Domingo, Area Ingn, Santo Domingo 10602, Dominican Rep
[2] Univ Valladolid, Dept Ingn Agr & Forestal, ADIRE ITAP, Valladolid 47002, Spain
[3] Tecnol Costa Rica, Cartago 30101, Costa Rica
[4] Univ Valladolid, Dept Ingn Elect, ADIRE ITAP, Valladolid 47002, Spain
[5] Univ Cuenca, Fac Ingn, Dept Ingn Elect Elect & Telecomunicac DEET, Cuenca 010107, Ecuador
[6] Inst Tecnol Santo Domingo, Area Ciencias Basicas & Ambientales, Santo Domingo 10602, Dominican Rep
来源
APPLIED SCIENCES-BASEL | 2021年 / 11卷 / 17期
关键词
forecasting models; energy consumption; multi-step forecasting; short-term forecasting; smart building; SHORT-TERM;
D O I
10.3390/app11177886
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Smart buildings seek to have a balance between energy consumption and occupant comfort. To make this possible, smart buildings need to be able to foresee sudden changes in the building's energy consumption. With the help of forecasting models, building energy management systems, which are a fundamental part of smart buildings, know when sudden changes in the energy consumption pattern could occur. Currently, different forecasting methods use models that allow building energy management systems to forecast energy consumption. Due to this, it is increasingly necessary to have appropriate forecasting models to be able to maintain a balance between energy consumption and occupant comfort. The objective of this paper is to present an energy consumption forecasting strategy that allows hourly day-ahead predictions. The presented forecasting strategy is tested using real data from two buildings located in Valladolid, Spain. Different machine learning and deep learning models were used to analyze which could perform better with the proposed strategy. After establishing the performance of the models, a model was assembled using the mean of the prediction values of the top five models to obtain a model with better performance.
引用
收藏
页数:16
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