Systematic Review of Deep Learning and Machine Learning for Building Energy

Research output: Contribution to journalReview articleContributedpeer-review

Contributors

  • Sina Ardabili - , János Selye University (Author)
  • Leila Abdolalizadeh - , János Selye University (Author)
  • Csaba Mako - , University of Public Service (Author)
  • Bernat Torok - , University of Public Service (Author)
  • Amir Mosavi - , TUD Dresden University of Technology, Slovak University of Technology, Óbuda University (Author)

Abstract

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.

Details

Original languageEnglish
Article number786027
Journal Frontiers in energy research
Volume10
Publication statusPublished - 18 Mar 2022
Peer-reviewedYes

Keywords

Keywords

  • building energy, data science, deep learning, energy consumption, energy demand, internet of things, machine learning, smart grid