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Optimal allocation of distributed generation for power loss reduction and voltage profile improvement

Distributed generation (DG) integration in a distribution system has increased to high penetration levels. There is a need to improve technical benefits of DG integration by optimal allocation in a power system network. These benefits include electrical power losses reduction and voltage profile imp...

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Main Author: Oluwole, Osaloni Oluwafunso
Other Authors: Awodele, Kehinde
Format: Thesis
Language:English
Published: Department of Electrical Engineering 2016
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access_status_str Open Access
author Oluwole, Osaloni Oluwafunso
author2 Awodele, Kehinde
author_browse Awodele, Kehinde
Oluwole, Osaloni Oluwafunso
author_facet Awodele, Kehinde
Oluwole, Osaloni Oluwafunso
author_sort Oluwole, Osaloni Oluwafunso
collection Thesis
description Distributed generation (DG) integration in a distribution system has increased to high penetration levels. There is a need to improve technical benefits of DG integration by optimal allocation in a power system network. These benefits include electrical power losses reduction and voltage profile improvement. Optimal DG location and sizing in a power system distribution network with the aim of reducing system power losses and improving the voltage profile still remain a major problem. Though much research has been done on optimal DG location and sizing in a power system distribution network with the aim of reducing system power losses and improving the voltage profile, most of the existing works in the literature use several techniques such as computation, artificial intelligence and an analytical approach, but they still suffer from several drawbacks. As a result, much can still be done in coming up with new algorithms to improve the already existing ones so as to address this important issue more efficiently and effectively. The majority of the proposed algorithms emphasize real power losses only in their formulations. They ignore the reactive power losses which are the key to the operation of the power systems. Hence, there is an urgent need for an approach that will incorporate reactive power and voltage profile in the optimization process, such that the effect of high power losses and poor voltage profile can be mitigated. This research used Genetic Algorithm and Improved Particle Swarm Optimization (GA-IPSO) for optimal placement and sizing of DG for power loss reduction and improvement of voltage profile. GA-IPSO is used to optimize DG location and size while considering both real and reactive power losses. The real and reactive power as well as power loss sensitivity factors were utilized in identifying the candidate buses for DG allocation. The GA-IPSO algorithm was programmed in Matlab. This algorithm reduces the search space for the search process, increases its rate of convergence and also eliminates the possibility of being trapped in local minima. Also, the new approach will help in reducing power loss and improve the voltage profile via placement and sizing.
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id oai:open.uct.ac.za:11427/20578
institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:40:55.028Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2016
publishDateRange 2016
publishDateSort 2016
publisher Department of Electrical Engineering
publisherStr Department of Electrical Engineering
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source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/20578 Optimal allocation of distributed generation for power loss reduction and voltage profile improvement Oluwole, Osaloni Oluwafunso Awodele, Kehinde Folly, Komla A Electrical Engineering Distributed generation (DG) integration in a distribution system has increased to high penetration levels. There is a need to improve technical benefits of DG integration by optimal allocation in a power system network. These benefits include electrical power losses reduction and voltage profile improvement. Optimal DG location and sizing in a power system distribution network with the aim of reducing system power losses and improving the voltage profile still remain a major problem. Though much research has been done on optimal DG location and sizing in a power system distribution network with the aim of reducing system power losses and improving the voltage profile, most of the existing works in the literature use several techniques such as computation, artificial intelligence and an analytical approach, but they still suffer from several drawbacks. As a result, much can still be done in coming up with new algorithms to improve the already existing ones so as to address this important issue more efficiently and effectively. The majority of the proposed algorithms emphasize real power losses only in their formulations. They ignore the reactive power losses which are the key to the operation of the power systems. Hence, there is an urgent need for an approach that will incorporate reactive power and voltage profile in the optimization process, such that the effect of high power losses and poor voltage profile can be mitigated. This research used Genetic Algorithm and Improved Particle Swarm Optimization (GA-IPSO) for optimal placement and sizing of DG for power loss reduction and improvement of voltage profile. GA-IPSO is used to optimize DG location and size while considering both real and reactive power losses. The real and reactive power as well as power loss sensitivity factors were utilized in identifying the candidate buses for DG allocation. The GA-IPSO algorithm was programmed in Matlab. This algorithm reduces the search space for the search process, increases its rate of convergence and also eliminates the possibility of being trapped in local minima. Also, the new approach will help in reducing power loss and improve the voltage profile via placement and sizing. 2016-07-21T14:02:31Z 2016-07-21T14:02:31Z 2016 Master Thesis Masters MSc (Eng) http://hdl.handle.net/11427/20578 eng application/pdf Department of Electrical Engineering Faculty of Engineering and the Built Environment University of Cape Town
spellingShingle Electrical Engineering
Oluwole, Osaloni Oluwafunso
Optimal allocation of distributed generation for power loss reduction and voltage profile improvement
thesis_degree_str Master's
title Optimal allocation of distributed generation for power loss reduction and voltage profile improvement
title_full Optimal allocation of distributed generation for power loss reduction and voltage profile improvement
title_fullStr Optimal allocation of distributed generation for power loss reduction and voltage profile improvement
title_full_unstemmed Optimal allocation of distributed generation for power loss reduction and voltage profile improvement
title_short Optimal allocation of distributed generation for power loss reduction and voltage profile improvement
title_sort optimal allocation of distributed generation for power loss reduction and voltage profile improvement
topic Electrical Engineering
url http://hdl.handle.net/11427/20578
work_keys_str_mv AT oluwoleosalonioluwafunso optimalallocationofdistributedgenerationforpowerlossreductionandvoltageprofileimprovement