Systematic Review of Deep Learning and Machine Learning for Building Energy

被引:67
作者
Ardabili, Sina [1 ]
Abdolalizadeh, Leila [1 ]
Mako, Csaba [2 ]
Torok, Bernat [2 ]
Mosavi, Amir [3 ,4 ,5 ]
机构
[1] J Selye Univ, Dept Informat, Komarom, Slovakia
[2] Univ Publ Serv, Inst Informat Soc, Budapest, Hungary
[3] Tech Univ Dresden, Fac Civil Engn, Dresden, Germany
[4] Slovak Univ Technol Bratislava, Inst Informat Engn Automat & Math, Bratislava, Slovakia
[5] Obuda Univ, John Neumann Fac Informat, Budapest, Hungary
基金
欧盟地平线“2020”;
关键词
deep learning; machine learning; building energy; energy demand; energy consumption; smart grid; internet of things; data science; RECURRENT NEURAL-NETWORK; DATA-DRIVEN APPROACH; CONSUMPTION PREDICTION; OFFICE BUILDINGS; DEMAND; LOAD; MODELS; OPTIMIZATION; SIMULATION; EFFICIENCY;
D O I
10.3389/fenrg.2022.786027
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
The building energy (BE) management plays an essential role in urban sustainability and smart cities. Recently, the novel data science and data-driven technologies have shown significant progress in analyzing the energy consumption and energy demand datasets for a smarter energy management. The machine learning (ML) and deep learning (DL) methods and applications, in particular, have been promising for the advancement of accurate and high-performance energy models. The present study provides a comprehensive review of ML- and DL-based techniques applied for handling BE systems, and it further evaluates the performance of these techniques. Through a systematic review and a comprehensive taxonomy, the advances of ML and DL-based techniques are carefully investigated, and the promising models are introduced. According to the results obtained for energy demand forecasting, the hybrid and ensemble methods are located in the high-robustness range, SVM-based methods are located in good robustness limitation, ANN-based methods are located in medium-robustness limitation, and linear regression models are located in low-robustness limitations. On the other hand, for energy consumption forecasting, DL-based, hybrid, and ensemble-based models provided the highest robustness score. ANN, SVM, and single ML models provided good and medium robustness, and LR-based models provided a lower robustness score. In addition, for energy load forecasting, LR-based models provided the lower robustness score. The hybrid and ensemble-based models provided a higher robustness score. The DL-based and SVM-based techniques provided a good robustness score, and ANN-based techniques provided a medium robustness score.
引用
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页数:19
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