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Transfer learning for smart buildings: A critical review of algorithms, applications, and future perspectives

期刊

ADVANCES IN APPLIED ENERGY
卷 5, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.adapen.2022.100084

关键词

Transfer learning; Deep learning; Machine learning; Smart buildings; Building energy management

资金

  1. Laboratory Directed Research and Development (LDRD) Program of Lawrence Berkeley National Laboratory, Office of Science, of the U.S. Department of Energy [DE-AC02-05CH11231]

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This study provides a comprehensive overview of the applications of transfer learning in smart buildings, classifying and analyzing 77 papers. The research identifies four main application areas of transfer learning: building load prediction, occupancy detection and activity recognition, building dynamics modeling, and energy systems control.
Smart buildings play a crucial role toward decarbonizing society, as globally buildings emit about one-third of greenhouse gases. In the last few years, machine learning has achieved a notable momentum that, if properly harnessed, may unleash its potential for advanced analytics and control of smart buildings, enabling the technique to scale up for supporting the decarbonization of the building sector. In this perspective, transfer learning aims to improve the performance of a target learner exploiting knowledge in related environments. The present work provides a comprehensive overview of transfer learning applications in smart buildings, classifying and analyzing 77 papers according to their applications, algorithms, and adopted metrics. The study identified four main application areas of transfer learning: (1) building load prediction, (2) occupancy detection and activity recognition, (3) building dynamics modeling, and (4) energy systems control. Furthermore, the review highlighted the role of deep learning in transfer learning applications that has been used in more than half of the analyzed studies. The paper also discusses how to integrate transfer learning in a smart building's ecosystem, identifying, for each application area, the research gaps and guidelines for future research directions.

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