SIMULTANEOUS ALLOCATION OF MULTIPLE DISTRIBUTED GENERATION AND CAPACITORS IN RADIAL NETWORK USING GENETIC-SALP SWARM ALGORITHM

Purpose. In recent years, the problem of allocation of distributed generation and capacitors banks has received special attention from many utilities and researchers. The present paper deals with single and simultaneous placement of dispersed generation and capacitors banks in radial distribution ne...

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Published inElectronics and electromechanics no. 4; pp. 59 - 66
Main Authors Djabali, Chabane, Bouktir, Tarek
Format Journal Article
LanguageEnglish
Published Kharkiv Department of Electrical Apparatus of National Technical University, Kharkiv Polytechnic Institute 01.01.2020
National Technical University, Ukraine
National Technical University "Kharkiv Polytechnic Institute"
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ISSN2074-272X
2309-3404
2309-3404
DOI10.20998/2074-272X.2020.4.08

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Summary:Purpose. In recent years, the problem of allocation of distributed generation and capacitors banks has received special attention from many utilities and researchers. The present paper deals with single and simultaneous placement of dispersed generation and capacitors banks in radial distribution network with different load levels: light, medium and peak using genetic-salp swarm algorithm. The developed genetic-salp swarm algorithm (GA-SSA) hybrid optimization takes the system input variables of radial distribution network to find the optimal solutions to maximize the benefits of their installation with minimum cost to minimize the active and reactive power losses and improve the voltage profile. The validation of the proposed hybrid genetic-salp swarm algorithm was carried out on IEEE 34-bus test systems and real Algerian distributed network of Djanet (far south of Algeria) with 112-bus. The numerical results endorse the ability of the proposed algorithm to achieve a better results with higher accuracy compared to the result obtained by salp swarm algorithm, genetic algorithm, particle swarm optimization and the hybrid particle swarm optimization algorithms.
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ISSN:2074-272X
2309-3404
2309-3404
DOI:10.20998/2074-272X.2020.4.08