Predicting Energy Consumption in Educational Buildings: A Comparative Study of Machine Learning Models

The increasing energy consumption in educational institutions underscores the need for accurate predictive models to enhance energy management and sustainability. This study compares the effectiveness of multiple linear regression (MLR), artificial neural networks (ANN), deep neural networks (DNN),...

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Published in:14th IEEE International Conference on Control System, Computing and Engineering, ICCSCE 2024 - Proceedings
Main Author: Ramli S.S.M.; Ahmad A.M.; Ibrahim M.N.; Daud K.
Format: Conference paper
Language:English
Published: Institute of Electrical and Electronics Engineers Inc. 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85207062930&doi=10.1109%2fICCSCE61582.2024.10696293&partnerID=40&md5=596f6477ae90b9984ffabedc6463a1a4
id 2-s2.0-85207062930
spelling 2-s2.0-85207062930
Ramli S.S.M.; Ahmad A.M.; Ibrahim M.N.; Daud K.
Predicting Energy Consumption in Educational Buildings: A Comparative Study of Machine Learning Models
2024
14th IEEE International Conference on Control System, Computing and Engineering, ICCSCE 2024 - Proceedings


10.1109/ICCSCE61582.2024.10696293
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85207062930&doi=10.1109%2fICCSCE61582.2024.10696293&partnerID=40&md5=596f6477ae90b9984ffabedc6463a1a4
The increasing energy consumption in educational institutions underscores the need for accurate predictive models to enhance energy management and sustainability. This study compares the effectiveness of multiple linear regression (MLR), artificial neural networks (ANN), deep neural networks (DNN), and support vector regression (SVR) in predicting energy consumption in educational buildings. The dataset included variables such as humidity, temperature, occupancy, and power consumption. Each model's performance was evaluated using key metrics, and optimal configurations were identified. The results show that DNN models, with their superior ability to capture complex patterns, achieved the highest predictive accuracy, followed by SVR, ANN, and MLR. The study also highlights the significant impact of the number of neurons in ANN and DNN models, as well as the regularization parameter and kernel parameter in SVR models. These findings demonstrate the potential of advanced machine learning techniques to improve energy consumption predictions and contribute to more efficient energy management in educational buildings. Future research should focus on further optimizing these models and exploring hybrid approaches for enhanced predictive accuracy. © 2024 IEEE.
Institute of Electrical and Electronics Engineers Inc.

English
Conference paper

author Ramli S.S.M.; Ahmad A.M.; Ibrahim M.N.; Daud K.
spellingShingle Ramli S.S.M.; Ahmad A.M.; Ibrahim M.N.; Daud K.
Predicting Energy Consumption in Educational Buildings: A Comparative Study of Machine Learning Models
author_facet Ramli S.S.M.; Ahmad A.M.; Ibrahim M.N.; Daud K.
author_sort Ramli S.S.M.; Ahmad A.M.; Ibrahim M.N.; Daud K.
title Predicting Energy Consumption in Educational Buildings: A Comparative Study of Machine Learning Models
title_short Predicting Energy Consumption in Educational Buildings: A Comparative Study of Machine Learning Models
title_full Predicting Energy Consumption in Educational Buildings: A Comparative Study of Machine Learning Models
title_fullStr Predicting Energy Consumption in Educational Buildings: A Comparative Study of Machine Learning Models
title_full_unstemmed Predicting Energy Consumption in Educational Buildings: A Comparative Study of Machine Learning Models
title_sort Predicting Energy Consumption in Educational Buildings: A Comparative Study of Machine Learning Models
publishDate 2024
container_title 14th IEEE International Conference on Control System, Computing and Engineering, ICCSCE 2024 - Proceedings
container_volume
container_issue
doi_str_mv 10.1109/ICCSCE61582.2024.10696293
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85207062930&doi=10.1109%2fICCSCE61582.2024.10696293&partnerID=40&md5=596f6477ae90b9984ffabedc6463a1a4
description The increasing energy consumption in educational institutions underscores the need for accurate predictive models to enhance energy management and sustainability. This study compares the effectiveness of multiple linear regression (MLR), artificial neural networks (ANN), deep neural networks (DNN), and support vector regression (SVR) in predicting energy consumption in educational buildings. The dataset included variables such as humidity, temperature, occupancy, and power consumption. Each model's performance was evaluated using key metrics, and optimal configurations were identified. The results show that DNN models, with their superior ability to capture complex patterns, achieved the highest predictive accuracy, followed by SVR, ANN, and MLR. The study also highlights the significant impact of the number of neurons in ANN and DNN models, as well as the regularization parameter and kernel parameter in SVR models. These findings demonstrate the potential of advanced machine learning techniques to improve energy consumption predictions and contribute to more efficient energy management in educational buildings. Future research should focus on further optimizing these models and exploring hybrid approaches for enhanced predictive accuracy. © 2024 IEEE.
publisher Institute of Electrical and Electronics Engineers Inc.
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