Novel Particle Swarm Optimization Algorithm Based on President Election: Applied to a Renewable Hybrid Power System Controller
Author(s) -
Meisam Yahyazadeh,
Majid Safar Johari,
S. Hassan HosseinNia
Publication year - 2021
Publication title -
international journal of engineering
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.213
H-Index - 17
ISSN - 1728-1431
DOI - 10.5829/ije.2021.34.01a.12
Subject(s) - particle swarm optimization , premature convergence , convergence (economics) , heuristic , controller (irrigation) , computer science , mathematical optimization , swarm behaviour , algorithm , power (physics) , multi swarm optimization , mathematics , economics , biology , physics , quantum mechanics , agronomy , economic growth
Particle swarm optimization has been a popular and common met heuristic algorithm from its genesis time. However, some problems such as premature convergence, weak exploration ability and great number of iterations have been accompanied with the nature of this algorithm. Therefore, in this paper we proposed a novel classification for particles to organize them in a different way. This new method which is inspired from president election is called President Election Particle Swarm Optimization (PEPSO). This algorithm is trying to choose useful particles and omit functionless ones at initial steps of algorithm besides considering the effects of all generated particles to get a directed and fast convergence. Some preparations are also done to escape from premature convergence. To validate the applicability of our proposed PEPSO, it is compared with the other met heuristic algorithm including GAPSO, Logistic PSO, Tent PSO, and PSO to estimate the parameters of the controller for a hybrid power system. Results verify that PEPSO has a better reaction in worst conditions in finding parameters of the controller.
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