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Estimation of the Critical Flashover Voltage for Different Polluted Insulators by Particle Swarm Optimization


Affiliations
1 Faculty of Science and Technology, University of Ziane Achour Djelfa 17000 DZ, Algeria
2 Faculty of applied sciences, University of Kasdi Merbah Ouargla 30000, Algeria
3 Faculty of Technology, University of Saad Dahleb Blida1 9000 DZ, Algeria
4 Laboratory LGEER, Department of Electrotechnic, University of Hassiba BenBouali, Chlef, Algeria
 

This article presents an optimization method to determine the arc constants used in the mathematical model which concerns the critical flashover voltage of a polluted insulator. These constants must be standard for many insulators, hence the establishment of a model that very accurately simulates the experimental results. The optimization method based on Particle Swarm Optimization (PSO) that resolves a problem by iteratively trying to improve a candidate solution with regard to a given measure of validity. It can be seen that the calculated results by application of PSO has allowed to define the constants of the arc where the establishment of a model that simulates the experimental and analytical results of other researchers.

Keywords

High Voltage Insulators, Polluted Insulators, Critical Flashover Voltage, Particle Swarm Optimization (PSO), Equivalent Salt Density Deposition ESDD
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  • Estimation of the Critical Flashover Voltage for Different Polluted Insulators by Particle Swarm Optimization

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Authors

Samir Kherfane
Faculty of Science and Technology, University of Ziane Achour Djelfa 17000 DZ, Algeria
Riad Lakhdar Kherfane
Faculty of applied sciences, University of Kasdi Merbah Ouargla 30000, Algeria
Abderrahmane Amari
Faculty of Science and Technology, University of Ziane Achour Djelfa 17000 DZ, Algeria
Naas Kherfane
Faculty of Technology, University of Saad Dahleb Blida1 9000 DZ, Algeria
Fouad Khoudja
Faculty of Technology, University of Saad Dahleb Blida1 9000 DZ, Algeria
Belkacem Toual
Faculty of Science and Technology, University of Ziane Achour Djelfa 17000 DZ, Algeria
Mohamed Ali Moussa
Laboratory LGEER, Department of Electrotechnic, University of Hassiba BenBouali, Chlef, Algeria

Abstract


This article presents an optimization method to determine the arc constants used in the mathematical model which concerns the critical flashover voltage of a polluted insulator. These constants must be standard for many insulators, hence the establishment of a model that very accurately simulates the experimental results. The optimization method based on Particle Swarm Optimization (PSO) that resolves a problem by iteratively trying to improve a candidate solution with regard to a given measure of validity. It can be seen that the calculated results by application of PSO has allowed to define the constants of the arc where the establishment of a model that simulates the experimental and analytical results of other researchers.

Keywords


High Voltage Insulators, Polluted Insulators, Critical Flashover Voltage, Particle Swarm Optimization (PSO), Equivalent Salt Density Deposition ESDD

References