Multi-State Load Demand Forecasting Using Hybridized Support Vector Regression Integrated with Optimal Design of Off-Grid Energy Systems—A Metaheuristic Approach

The prediction accuracy of support vector regression (SVR) is highly influenced by a kernel function. However, its performance suffers on large datasets, and this could be attributed to the computational limitations of kernel learning. To tackle this problem, this paper combines SVR with the emergin...

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Main Authors: Bashir Musa, Nasser Yimen, Sani Isah Abba, Humphrey Hugh Adun, Mustafa Dagbasi
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Processes
Subjects:
Online Access:https://www.mdpi.com/2227-9717/9/7/1166
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spelling doaj-c926b33b816a49ccb78d5ba592c6cdd12021-07-23T14:03:12ZengMDPI AGProcesses2227-97172021-07-0191166116610.3390/pr9071166Multi-State Load Demand Forecasting Using Hybridized Support Vector Regression Integrated with Optimal Design of Off-Grid Energy Systems—A Metaheuristic ApproachBashir Musa0Nasser Yimen1Sani Isah Abba2Humphrey Hugh Adun3Mustafa Dagbasi4Department of Energy Systems Engineering, Cyprus International University, Nicosia 99258, CyprusNational Advanced School of Engineering, University of Yaoundé I, Yaoundé 8390, CameroonDepartment of Civil Engineering, Baze University, Abuja 900108, NigeriaDepartment of Energy Systems Engineering, Cyprus International University, Nicosia 99258, CyprusDepartment of Energy Systems Engineering, Cyprus International University, Nicosia 99258, CyprusThe prediction accuracy of support vector regression (SVR) is highly influenced by a kernel function. However, its performance suffers on large datasets, and this could be attributed to the computational limitations of kernel learning. To tackle this problem, this paper combines SVR with the emerging Harris hawks optimization (HHO) and particle swarm optimization (PSO) algorithms to form two hybrid SVR algorithms, SVR-HHO and SVR-PSO. Both the two proposed algorithms and traditional SVR were applied to load forecasting in four different states of Nigeria. The correlation coefficient (R), coefficient of determination (R<sup>2</sup>), mean square error (MSE), root mean square error (RMSE), and mean absolute percentage error (MAPE) were used as indicators to evaluate the prediction accuracy of the algorithms. The results reveal that there is an increase in performance for both SVR-HHO and SVR-PSO over traditional SVR. SVR-HHO has the highest R<sup>2</sup> values of 0.9951, 0.8963, 0.9951, and 0.9313, the lowest MSE values of 0.0002, 0.0070, 0.0002, and 0.0080, and the lowest MAPE values of 0.1311, 0.1452, 0.0599, and 0.1817, respectively, for Kano, Abuja, Niger, and Lagos State. The results of SVR-HHO also prove more advantageous over SVR-PSO in all the states concerning load forecasting skills. This paper also designed a hybrid renewable energy system (HRES) that consists of solar photovoltaic (PV) panels, wind turbines, and batteries. As inputs, the system used solar radiation, temperature, wind speed, and the predicted load demands by SVR-HHO in all the states. The system was optimized by using the PSO algorithm to obtain the optimal configuration of the HRES that will satisfy all constraints at the minimum cost.https://www.mdpi.com/2227-9717/9/7/1166support vector regressionHarris hawks optimizationparticle swarm optimizationload demand forecastingoptimal sizingtotal annual cost
collection DOAJ
language English
format Article
sources DOAJ
author Bashir Musa
Nasser Yimen
Sani Isah Abba
Humphrey Hugh Adun
Mustafa Dagbasi
spellingShingle Bashir Musa
Nasser Yimen
Sani Isah Abba
Humphrey Hugh Adun
Mustafa Dagbasi
Multi-State Load Demand Forecasting Using Hybridized Support Vector Regression Integrated with Optimal Design of Off-Grid Energy Systems—A Metaheuristic Approach
Processes
support vector regression
Harris hawks optimization
particle swarm optimization
load demand forecasting
optimal sizing
total annual cost
author_facet Bashir Musa
Nasser Yimen
Sani Isah Abba
Humphrey Hugh Adun
Mustafa Dagbasi
author_sort Bashir Musa
title Multi-State Load Demand Forecasting Using Hybridized Support Vector Regression Integrated with Optimal Design of Off-Grid Energy Systems—A Metaheuristic Approach
title_short Multi-State Load Demand Forecasting Using Hybridized Support Vector Regression Integrated with Optimal Design of Off-Grid Energy Systems—A Metaheuristic Approach
title_full Multi-State Load Demand Forecasting Using Hybridized Support Vector Regression Integrated with Optimal Design of Off-Grid Energy Systems—A Metaheuristic Approach
title_fullStr Multi-State Load Demand Forecasting Using Hybridized Support Vector Regression Integrated with Optimal Design of Off-Grid Energy Systems—A Metaheuristic Approach
title_full_unstemmed Multi-State Load Demand Forecasting Using Hybridized Support Vector Regression Integrated with Optimal Design of Off-Grid Energy Systems—A Metaheuristic Approach
title_sort multi-state load demand forecasting using hybridized support vector regression integrated with optimal design of off-grid energy systems—a metaheuristic approach
publisher MDPI AG
series Processes
issn 2227-9717
publishDate 2021-07-01
description The prediction accuracy of support vector regression (SVR) is highly influenced by a kernel function. However, its performance suffers on large datasets, and this could be attributed to the computational limitations of kernel learning. To tackle this problem, this paper combines SVR with the emerging Harris hawks optimization (HHO) and particle swarm optimization (PSO) algorithms to form two hybrid SVR algorithms, SVR-HHO and SVR-PSO. Both the two proposed algorithms and traditional SVR were applied to load forecasting in four different states of Nigeria. The correlation coefficient (R), coefficient of determination (R<sup>2</sup>), mean square error (MSE), root mean square error (RMSE), and mean absolute percentage error (MAPE) were used as indicators to evaluate the prediction accuracy of the algorithms. The results reveal that there is an increase in performance for both SVR-HHO and SVR-PSO over traditional SVR. SVR-HHO has the highest R<sup>2</sup> values of 0.9951, 0.8963, 0.9951, and 0.9313, the lowest MSE values of 0.0002, 0.0070, 0.0002, and 0.0080, and the lowest MAPE values of 0.1311, 0.1452, 0.0599, and 0.1817, respectively, for Kano, Abuja, Niger, and Lagos State. The results of SVR-HHO also prove more advantageous over SVR-PSO in all the states concerning load forecasting skills. This paper also designed a hybrid renewable energy system (HRES) that consists of solar photovoltaic (PV) panels, wind turbines, and batteries. As inputs, the system used solar radiation, temperature, wind speed, and the predicted load demands by SVR-HHO in all the states. The system was optimized by using the PSO algorithm to obtain the optimal configuration of the HRES that will satisfy all constraints at the minimum cost.
topic support vector regression
Harris hawks optimization
particle swarm optimization
load demand forecasting
optimal sizing
total annual cost
url https://www.mdpi.com/2227-9717/9/7/1166
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