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Comparison of machine learning algorithms for evaluating building energy efficiency using big data analytics

Christian Nnaemeka Egwim (Big Data Technologies and Innovation Laboratory, University of Hertfordshire, Hatfield, UK)
Hafiz Alaka (Big Data Technologies and Innovation Laboratory, University of Hertfordshire, Hatfield, UK)
Oluwapelumi Oluwaseun Egunjobi (Department of Energy for Sustainability (EFS), Universidade de Coimbra, Coimbra, Portugal)
Alvaro Gomes (Department of Energy for Sustainability (EFS), Universidade de Coimbra, Coimbra, Portugal)
Iosif Mporas (School of Physics, Engineering and Computer Science, University of Hertfordshire, Hatfield, UK)

Journal of Engineering, Design and Technology

ISSN: 1726-0531

Article publication date: 26 September 2022

249

Abstract

Purpose

This study aims to compare and evaluate the application of commonly used machine learning (ML) algorithms used to develop models for assessing energy efficiency of buildings.

Design/methodology/approach

This study foremostly combined building energy efficiency ratings from several data sources and used them to create predictive models using a variety of ML methods. Secondly, to test the hypothesis of ensemble techniques, this study designed a hybrid stacking ensemble approach based on the best performing bagging and boosting ensemble methods generated from its predictive analytics.

Findings

Based on performance evaluation metrics scores, the extra trees model was shown to be the best predictive model. More importantly, this study demonstrated that the cumulative result of ensemble ML algorithms is usually always better in terms of predicted accuracy than a single method. Finally, it was discovered that stacking is a superior ensemble approach for analysing building energy efficiency than bagging and boosting.

Research limitations/implications

While the proposed contemporary method of analysis is assumed to be applicable in assessing energy efficiency of buildings within the sector, the unique data transformation used in this study may not, as typical of any data driven model, be transferable to the data from other regions other than the UK.

Practical implications

This study aids in the initial selection of appropriate and high-performing ML algorithms for future analysis. This study also assists building managers, residents, government agencies and other stakeholders in better understanding contributing factors and making better decisions about building energy performance. Furthermore, this study will assist the general public in proactively identifying buildings with high energy demands, potentially lowering energy costs by promoting avoidance behaviour and assisting government agencies in making informed decisions about energy tariffs when this novel model is integrated into an energy monitoring system.

Originality/value

This study fills a gap in the lack of a reason for selecting appropriate ML algorithms for assessing building energy efficiency. More importantly, this study demonstrated that the cumulative result of ensemble ML algorithms is usually always better in terms of predicted accuracy than a single method.

Keywords

Acknowledgements

Funding: The Doctoral Scholarship of the University of Hertfordshire, United Kingdom, provided funding for the completion of this study as part of the first author's Ph.D. research.

Citation

Egwim, C.N., Alaka, H., Egunjobi, O.O., Gomes, A. and Mporas, I. (2022), "Comparison of machine learning algorithms for evaluating building energy efficiency using big data analytics", Journal of Engineering, Design and Technology, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/JEDT-05-2022-0238

Publisher

:

Emerald Publishing Limited

Copyright © 2022, Emerald Publishing Limited

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