Perspective on the Use of Artificial Intelligence for Energy Efficiency in Public Buildings

Authors

DOI:

https://doi.org/10.9771/cp.v13i3.33079

Keywords:

Machine Learning, Automation, Public Buildings.

Abstract

This paper aimed to survey the use of artificial intelligence (AI) for energy efficiency management in public buildings. It used the qualitative approach, with exploratory objective on the subject in question, relying on bibliographic research, in the basis of scientific and documentary publications, in Brazilian government agencies on energy efficiency, and technological prospection. The keywords used were "artificial intelligence AND energy efficiency AND public buildings", the search in Scopus returned 1,459 articles referring to the object of work. Most affiliate documents belong to Chinese and European educational institutions, although the United States ranks first in number of publications by country. As for technological prospection, most patents also belong to universities, but in this case, especially China. Because artificial intelligence is a broad term, it enables the development of future work in greater depth in a specific branch of AI.

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Author Biographies

Marcelo Pereira Justino, Mato Grosso State University, Cáceres, MT, Brazil

Data Processing Supervision - SPD/UNEMAT

Fernando Selleri Silva, Mato Grosso State University, Cáceres, MT, Brazil

(Faculty of Exact and Technological Sciences - FACET) / UNEMAT

 

Olivan da Silva Rabelo, Federal University of Mato Grosso, Cuiabá, MT, Brazil

Faculty of Administration and Accounting Sciences - Campus of Cuiabá-MT

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Published

2020-05-29

How to Cite

Justino, M. P., Silva, F. S., & Rabelo, O. da S. (2020). Perspective on the Use of Artificial Intelligence for Energy Efficiency in Public Buildings. Cadernos De Prospecção, 13(3), 769. https://doi.org/10.9771/cp.v13i3.33079

Issue

Section

Prospecções Tecnológicas de Assuntos Específicos