Integrated Optimization Algorithm in Solving Economic Dispatch Problems
The utilization of conservative fossil fuels in power generation has played a significant role in driving economic growth, but it has also resulted in adverse consequences towards environmental impacts. This study proposed Multi-objective Hybrid Evolutionary Programming-Barnacles Mating Optimization...
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my.uniten.dspace-345292024-10-14T11:20:26Z Integrated Optimization Algorithm in Solving Economic Dispatch Problems Ismail N.L. Musirin I. Dahlan N.Y. Mansor M.H. Sentilkumar A.V. 57190935802 8620004100 24483200900 56372667100 58746048100 barnacles mating optimizer economic dispatch evolutionary programming hybrid algorithm multi-objective optimization weighted-sum Computer programming Electric load dispatching Environmental impact Fossil fuels Multiobjective optimization Barnacle mating optimizer Economic Dispatch Hybrid algorithms Integrated optimization Matings Multi objective Multi-objectives optimization Optimization algorithms Optimizers Weighted Sum Evolutionary algorithms The utilization of conservative fossil fuels in power generation has played a significant role in driving economic growth, but it has also resulted in adverse consequences towards environmental impacts. This study proposed Multi-objective Hybrid Evolutionary Programming-Barnacles Mating Optimization as a solution to address the Combined Economic Environmental Dispatch problem by weighted-sum method implementation. The bi-objective function are the minimizing of the total generation cost and total emission have been optimized simultaneously. The performance of the algorithm is evaluated on Reliability Test System IEEE 57-Bus consisting of 7 generating units that consider ramp rate limits generator constraint. The proposed algorithm has been compared with the existing techniques, Multi-objective Barnacles Mating Optimizer and Multi-objective Evolutionary Programming. The results reveal that MOHEBMO generates superior and consistent solutions. � 2023 IEEE. Final 2024-10-14T03:20:25Z 2024-10-14T03:20:25Z 2023 Conference Paper 10.1109/IICAIET59451.2023.10291341 2-s2.0-85178556739 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85178556739&doi=10.1109%2fIICAIET59451.2023.10291341&partnerID=40&md5=75b967b0939046acede13e635cffd0b0 https://irepository.uniten.edu.my/handle/123456789/34529 129 134 Institute of Electrical and Electronics Engineers Inc. Scopus |
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barnacles mating optimizer economic dispatch evolutionary programming hybrid algorithm multi-objective optimization weighted-sum Computer programming Electric load dispatching Environmental impact Fossil fuels Multiobjective optimization Barnacle mating optimizer Economic Dispatch Hybrid algorithms Integrated optimization Matings Multi objective Multi-objectives optimization Optimization algorithms Optimizers Weighted Sum Evolutionary algorithms |
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barnacles mating optimizer economic dispatch evolutionary programming hybrid algorithm multi-objective optimization weighted-sum Computer programming Electric load dispatching Environmental impact Fossil fuels Multiobjective optimization Barnacle mating optimizer Economic Dispatch Hybrid algorithms Integrated optimization Matings Multi objective Multi-objectives optimization Optimization algorithms Optimizers Weighted Sum Evolutionary algorithms Ismail N.L. Musirin I. Dahlan N.Y. Mansor M.H. Sentilkumar A.V. Integrated Optimization Algorithm in Solving Economic Dispatch Problems |
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The utilization of conservative fossil fuels in power generation has played a significant role in driving economic growth, but it has also resulted in adverse consequences towards environmental impacts. This study proposed Multi-objective Hybrid Evolutionary Programming-Barnacles Mating Optimization as a solution to address the Combined Economic Environmental Dispatch problem by weighted-sum method implementation. The bi-objective function are the minimizing of the total generation cost and total emission have been optimized simultaneously. The performance of the algorithm is evaluated on Reliability Test System IEEE 57-Bus consisting of 7 generating units that consider ramp rate limits generator constraint. The proposed algorithm has been compared with the existing techniques, Multi-objective Barnacles Mating Optimizer and Multi-objective Evolutionary Programming. The results reveal that MOHEBMO generates superior and consistent solutions. � 2023 IEEE. |
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57190935802 |
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57190935802 Ismail N.L. Musirin I. Dahlan N.Y. Mansor M.H. Sentilkumar A.V. |
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Conference Paper |
author |
Ismail N.L. Musirin I. Dahlan N.Y. Mansor M.H. Sentilkumar A.V. |
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Ismail N.L. |
title |
Integrated Optimization Algorithm in Solving Economic Dispatch Problems |
title_short |
Integrated Optimization Algorithm in Solving Economic Dispatch Problems |
title_full |
Integrated Optimization Algorithm in Solving Economic Dispatch Problems |
title_fullStr |
Integrated Optimization Algorithm in Solving Economic Dispatch Problems |
title_full_unstemmed |
Integrated Optimization Algorithm in Solving Economic Dispatch Problems |
title_sort |
integrated optimization algorithm in solving economic dispatch problems |
publisher |
Institute of Electrical and Electronics Engineers Inc. |
publishDate |
2024 |
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1814061125631737856 |