Strategies for predictive power: Machine learning models in city-scale load forecasting

This study focuses on enhancing machine learning (ML) algorithms' performance in predicting daily loads for Kirkuk, Iraq—an essential element in energy planning, resource allocation, and policymaking. We explore single and ensemble learning algorithms, including AdaBoost, Bagging, Support Vecto...

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Main Authors: Orhan Nooruldeen, Mohammed Rashad Baker, A.M. Aleesa, Ahmed Ghareeb, Ehab Hashim Shaker
Format: Article
Language:English
Published: Elsevier 2023-12-01
Series:e-Prime: Advances in Electrical Engineering, Electronics and Energy
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2772671123002875
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author Orhan Nooruldeen
Mohammed Rashad Baker
A.M. Aleesa
Ahmed Ghareeb
Ehab Hashim Shaker
author_facet Orhan Nooruldeen
Mohammed Rashad Baker
A.M. Aleesa
Ahmed Ghareeb
Ehab Hashim Shaker
author_sort Orhan Nooruldeen
collection DOAJ
description This study focuses on enhancing machine learning (ML) algorithms' performance in predicting daily loads for Kirkuk, Iraq—an essential element in energy planning, resource allocation, and policymaking. We explore single and ensemble learning algorithms, including AdaBoost, Bagging, Support Vector Regression (SVR), and Decision Tree (DT). To assess accuracy, we employ critical metrics: Mean Squared Error (MSE), Root Mean Squared Error (RMSE), Mean Absolute Percentage Error (MAPE), and R-squared (R2). MSE and RMSE gauge precision through squared differences between predictions and actual energy consumption. MAPE reveals percentage deviations, while R2 quantifies model fit, indicating its ability to capture energy consumption variance. Our results highlight Bagging's superiority, particularly in day-ahead forecasts, demonstrating superior accuracy over Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA). These findings underscore the importance of feature reduction methods in enhancing performance. Bagging exhibits promise across various feature reduction scenarios, proficiently predicting energy consumption. Furthermore, the AdaBoost algorithm demonstrates commendable performance. The application of voting ensemble learning emerges as a particularly insightful approach, effectively reducing the squared differences and deviations in energy consumption forecasts. The significant implications of these findings suggest that the models, with their impressive performance, could serve as valuable tools for energy planners and policymakers in Kirkuk, playing a key role in optimizing resource allocation for efficient energy utilization.
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spelling doaj.art-d5835d7745044c6982a6b7b5ef4c8d5e2023-12-17T06:43:38ZengElseviere-Prime: Advances in Electrical Engineering, Electronics and Energy2772-67112023-12-016100392Strategies for predictive power: Machine learning models in city-scale load forecastingOrhan Nooruldeen0Mohammed Rashad Baker1A.M. Aleesa2Ahmed Ghareeb3Ehab Hashim Shaker4Software Department, College of Computer Science and Information Technology, University of Kirkuk, Kirkuk, IraqSoftware Department, College of Computer Science and Information Technology, University of Kirkuk, Kirkuk, Iraq; Corresponding author.Software Department, College of Computer Science and Information Technology, University of Kirkuk, Kirkuk, IraqDepartment of Mechanical Engineering, University of Kirkuk, Kirkuk, IraqDepartment of Computer Techniques Engineering, College of Information Technology, Imam Ja'afar Al-Sadiq University, Baghdad, IraqThis study focuses on enhancing machine learning (ML) algorithms' performance in predicting daily loads for Kirkuk, Iraq—an essential element in energy planning, resource allocation, and policymaking. We explore single and ensemble learning algorithms, including AdaBoost, Bagging, Support Vector Regression (SVR), and Decision Tree (DT). To assess accuracy, we employ critical metrics: Mean Squared Error (MSE), Root Mean Squared Error (RMSE), Mean Absolute Percentage Error (MAPE), and R-squared (R2). MSE and RMSE gauge precision through squared differences between predictions and actual energy consumption. MAPE reveals percentage deviations, while R2 quantifies model fit, indicating its ability to capture energy consumption variance. Our results highlight Bagging's superiority, particularly in day-ahead forecasts, demonstrating superior accuracy over Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA). These findings underscore the importance of feature reduction methods in enhancing performance. Bagging exhibits promise across various feature reduction scenarios, proficiently predicting energy consumption. Furthermore, the AdaBoost algorithm demonstrates commendable performance. The application of voting ensemble learning emerges as a particularly insightful approach, effectively reducing the squared differences and deviations in energy consumption forecasts. The significant implications of these findings suggest that the models, with their impressive performance, could serve as valuable tools for energy planners and policymakers in Kirkuk, playing a key role in optimizing resource allocation for efficient energy utilization.http://www.sciencedirect.com/science/article/pii/S2772671123002875Load forecastingElectricity planningMachine learningEnsemble learningFeature reductionKirkuk city
spellingShingle Orhan Nooruldeen
Mohammed Rashad Baker
A.M. Aleesa
Ahmed Ghareeb
Ehab Hashim Shaker
Strategies for predictive power: Machine learning models in city-scale load forecasting
e-Prime: Advances in Electrical Engineering, Electronics and Energy
Load forecasting
Electricity planning
Machine learning
Ensemble learning
Feature reduction
Kirkuk city
title Strategies for predictive power: Machine learning models in city-scale load forecasting
title_full Strategies for predictive power: Machine learning models in city-scale load forecasting
title_fullStr Strategies for predictive power: Machine learning models in city-scale load forecasting
title_full_unstemmed Strategies for predictive power: Machine learning models in city-scale load forecasting
title_short Strategies for predictive power: Machine learning models in city-scale load forecasting
title_sort strategies for predictive power machine learning models in city scale load forecasting
topic Load forecasting
Electricity planning
Machine learning
Ensemble learning
Feature reduction
Kirkuk city
url http://www.sciencedirect.com/science/article/pii/S2772671123002875
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AT ahmedghareeb strategiesforpredictivepowermachinelearningmodelsincityscaleloadforecasting
AT ehabhashimshaker strategiesforpredictivepowermachinelearningmodelsincityscaleloadforecasting