Energy Use and Demand Prediction Using Time-Series Deep Learning Forecasting Techniques: Application for a University Campus

A growing global impetus has emerged to enhance the sustainability of energy systems and practices. The two popular levers to achieve this goal include increasing the proportion of clean energy in the energy mix and enhancing energy efficiency. The former involves reducing reliance on fossil fuel-ba...

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Main Authors: Bivin Pradeep, Parag Kulkarni, Farman Ullah, Abderrahmane Lakas
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Open Journal of the Computer Society
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10807248/
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author Bivin Pradeep
Parag Kulkarni
Farman Ullah
Abderrahmane Lakas
author_facet Bivin Pradeep
Parag Kulkarni
Farman Ullah
Abderrahmane Lakas
author_sort Bivin Pradeep
collection DOAJ
description A growing global impetus has emerged to enhance the sustainability of energy systems and practices. The two popular levers to achieve this goal include increasing the proportion of clean energy in the energy mix and enhancing energy efficiency. The former involves reducing reliance on fossil fuel-based energy sources and increasing the adoption of renewable energy. The latter involves understanding factors that impact the current energy footprint and improving the efficiencies of the process. University campuses comprise many buildings, and it is well-known that buildings have a sizeable energy footprint. Therefore, it is beneficial to understand their energy consumption and identify ways in which this could be further optimised. Furthermore, catering to the energy demand requires appropriate provisioning with significant costs associated with energy procurement on-demand. To address this, it is vital to predict demand in advance accurately. In this article, we elaborate on these two aspects, i.e., analysis of energy consumption and demand forecasting using deep learning-based time series techniques such as Long short-term memory (LSTM), Bi-directional Long short-term memory (BiLSTM), Gated recurrent unit (GRU), and Bidirectional Gated recurrent units (BiGRU). We analyse the different parameter optimisers and history window lengths to select a better hyper-parameter set for accurate energy use and demand prediction. Findings from this study show that the prediction follows the actual demand curve with a minimum RMSE of 65.354 MWh and 65.936 MWh for window sizes of four and six for validation (testing), respectively. The window size six performs better for most time-series algorithms and hyperparameter combinations.
format Article
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institution Kabale University
issn 2644-1268
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publishDate 2025-01-01
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spelling doaj-art-35916ab8352543b0bd56f936a80f729e2025-01-21T00:02:38ZengIEEEIEEE Open Journal of the Computer Society2644-12682025-01-01618919810.1109/OJCS.2024.352019810807248Energy Use and Demand Prediction Using Time-Series Deep Learning Forecasting Techniques: Application for a University CampusBivin Pradeep0https://orcid.org/0000-0002-1203-0886Parag Kulkarni1https://orcid.org/0000-0001-8612-444XFarman Ullah2https://orcid.org/0000-0002-2488-8353Abderrahmane Lakas3https://orcid.org/0000-0003-4725-8634College of IT, UAE University, Al Ain, UAECollege of IT, UAE University, Al Ain, UAECollege of IT, UAE University, Al Ain, UAECollege of IT, UAE University, Al Ain, UAEA growing global impetus has emerged to enhance the sustainability of energy systems and practices. The two popular levers to achieve this goal include increasing the proportion of clean energy in the energy mix and enhancing energy efficiency. The former involves reducing reliance on fossil fuel-based energy sources and increasing the adoption of renewable energy. The latter involves understanding factors that impact the current energy footprint and improving the efficiencies of the process. University campuses comprise many buildings, and it is well-known that buildings have a sizeable energy footprint. Therefore, it is beneficial to understand their energy consumption and identify ways in which this could be further optimised. Furthermore, catering to the energy demand requires appropriate provisioning with significant costs associated with energy procurement on-demand. To address this, it is vital to predict demand in advance accurately. In this article, we elaborate on these two aspects, i.e., analysis of energy consumption and demand forecasting using deep learning-based time series techniques such as Long short-term memory (LSTM), Bi-directional Long short-term memory (BiLSTM), Gated recurrent unit (GRU), and Bidirectional Gated recurrent units (BiGRU). We analyse the different parameter optimisers and history window lengths to select a better hyper-parameter set for accurate energy use and demand prediction. Findings from this study show that the prediction follows the actual demand curve with a minimum RMSE of 65.354 MWh and 65.936 MWh for window sizes of four and six for validation (testing), respectively. The window size six performs better for most time-series algorithms and hyperparameter combinations.https://ieeexplore.ieee.org/document/10807248/Energy efficiencydemand predictionsustainability
spellingShingle Bivin Pradeep
Parag Kulkarni
Farman Ullah
Abderrahmane Lakas
Energy Use and Demand Prediction Using Time-Series Deep Learning Forecasting Techniques: Application for a University Campus
IEEE Open Journal of the Computer Society
Energy efficiency
demand prediction
sustainability
title Energy Use and Demand Prediction Using Time-Series Deep Learning Forecasting Techniques: Application for a University Campus
title_full Energy Use and Demand Prediction Using Time-Series Deep Learning Forecasting Techniques: Application for a University Campus
title_fullStr Energy Use and Demand Prediction Using Time-Series Deep Learning Forecasting Techniques: Application for a University Campus
title_full_unstemmed Energy Use and Demand Prediction Using Time-Series Deep Learning Forecasting Techniques: Application for a University Campus
title_short Energy Use and Demand Prediction Using Time-Series Deep Learning Forecasting Techniques: Application for a University Campus
title_sort energy use and demand prediction using time series deep learning forecasting techniques application for a university campus
topic Energy efficiency
demand prediction
sustainability
url https://ieeexplore.ieee.org/document/10807248/
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AT paragkulkarni energyuseanddemandpredictionusingtimeseriesdeeplearningforecastingtechniquesapplicationforauniversitycampus
AT farmanullah energyuseanddemandpredictionusingtimeseriesdeeplearningforecastingtechniquesapplicationforauniversitycampus
AT abderrahmanelakas energyuseanddemandpredictionusingtimeseriesdeeplearningforecastingtechniquesapplicationforauniversitycampus