Improved elitist genetic algorithm for reactive power planning in power system / Mohamad Fadhil Mohd Kamal

This thesis presents a newly developed technique for the improvement of the elitist binary genetic algorithms (EGA) in implementing the reactive power planning (RPP) in power system. The genetic algorithm (GA) is a search technique based on the behaviour of natural genetics. The study conducts compa...

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Main Author: Mohd Kamal, Mohamad Fadhil
Format: Thesis
Language:English
Published: 2010
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Online Access:https://ir.uitm.edu.my/id/eprint/99258/1/99258.pdf
https://ir.uitm.edu.my/id/eprint/99258/
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spelling my.uitm.ir.992582024-12-16T02:25:45Z https://ir.uitm.edu.my/id/eprint/99258/ Improved elitist genetic algorithm for reactive power planning in power system / Mohamad Fadhil Mohd Kamal Mohd Kamal, Mohamad Fadhil Algorithms This thesis presents a newly developed technique for the improvement of the elitist binary genetic algorithms (EGA) in implementing the reactive power planning (RPP) in power system. The genetic algorithm (GA) is a search technique based on the behaviour of natural genetics. The study conducts comparative analyses on the performances of the elitist genetic algorithms (EGA). Modified steady state genetic algorithms (SSGA) and computationally enhanced steady state genetic algorithm (CSGA) in improving the voltage stability and minimizing loss via the optimization of the RPP in power system. Elitism is one of method implemented to improve the accuracy of the solution and computation time of the GA. The application of elitism in GA constitutes the deployment of the elitism mechanism in the selection scheme or genetic operator. The elitist mechanism guarantees that the best fitness of the population discovered in the earlier generation will never disappear unless a better solution is found. The EGA ensures the quality of the solution never deteriorates as the generations progress since the fittest solution of the current population is duplicated in the subsequent generations. It may strike a fair balance between exploitation and exploration in achieving an acceptable optimum solution with an appropriate population composition. Any result inferior to the reading produced by the EGA shall be considered as a premature convergence onto a local optimum. However, the EGA has the weakness of a moderate convergent rate despite of a good search performance. The study adopts the reading produced by the EGA as the benchmark for drawing any judgment towards developing the improved EGA. 2010 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/99258/1/99258.pdf Improved elitist genetic algorithm for reactive power planning in power system / Mohamad Fadhil Mohd Kamal. (2010) Masters thesis, thesis, Universiti Teknologi MARA (UiTM). <http://terminalib.uitm.edu.my/99258.pdf>
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Algorithms
spellingShingle Algorithms
Mohd Kamal, Mohamad Fadhil
Improved elitist genetic algorithm for reactive power planning in power system / Mohamad Fadhil Mohd Kamal
description This thesis presents a newly developed technique for the improvement of the elitist binary genetic algorithms (EGA) in implementing the reactive power planning (RPP) in power system. The genetic algorithm (GA) is a search technique based on the behaviour of natural genetics. The study conducts comparative analyses on the performances of the elitist genetic algorithms (EGA). Modified steady state genetic algorithms (SSGA) and computationally enhanced steady state genetic algorithm (CSGA) in improving the voltage stability and minimizing loss via the optimization of the RPP in power system. Elitism is one of method implemented to improve the accuracy of the solution and computation time of the GA. The application of elitism in GA constitutes the deployment of the elitism mechanism in the selection scheme or genetic operator. The elitist mechanism guarantees that the best fitness of the population discovered in the earlier generation will never disappear unless a better solution is found. The EGA ensures the quality of the solution never deteriorates as the generations progress since the fittest solution of the current population is duplicated in the subsequent generations. It may strike a fair balance between exploitation and exploration in achieving an acceptable optimum solution with an appropriate population composition. Any result inferior to the reading produced by the EGA shall be considered as a premature convergence onto a local optimum. However, the EGA has the weakness of a moderate convergent rate despite of a good search performance. The study adopts the reading produced by the EGA as the benchmark for drawing any judgment towards developing the improved EGA.
format Thesis
author Mohd Kamal, Mohamad Fadhil
author_facet Mohd Kamal, Mohamad Fadhil
author_sort Mohd Kamal, Mohamad Fadhil
title Improved elitist genetic algorithm for reactive power planning in power system / Mohamad Fadhil Mohd Kamal
title_short Improved elitist genetic algorithm for reactive power planning in power system / Mohamad Fadhil Mohd Kamal
title_full Improved elitist genetic algorithm for reactive power planning in power system / Mohamad Fadhil Mohd Kamal
title_fullStr Improved elitist genetic algorithm for reactive power planning in power system / Mohamad Fadhil Mohd Kamal
title_full_unstemmed Improved elitist genetic algorithm for reactive power planning in power system / Mohamad Fadhil Mohd Kamal
title_sort improved elitist genetic algorithm for reactive power planning in power system / mohamad fadhil mohd kamal
publishDate 2010
url https://ir.uitm.edu.my/id/eprint/99258/1/99258.pdf
https://ir.uitm.edu.my/id/eprint/99258/
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score 13.222552