- Turkish Journal of Electrical Engineering and Computer Science
- Volume:22 Issue:5
- Comparative learning global particle swarm optimization for optimal distributed generations` output
Comparative learning global particle swarm optimization for optimal distributed generations` output
Authors : Jasrul Jamani JAMIAN, Hazlie MOKHLIS, Mohd Wazir MUSTAFA, Mohd Noor ABDULLAH, Muhammad Arif BAHARUDIN
Pages : 1323-1337
Doi:10.3906/elk-1212-173
View : 11 | Download : 5
Publication Date : 0000-00-00
Article Type : Research Paper
Abstract :The appropriate output of distributed generation insert ignore into journalissuearticles values(DG); in a distribution network is important for maximizing the benefit of the DG installation in the network. Therefore, most researchers have concentrated on the optimization technique to compute the optimal DG value. In this paper, the comparative learning in global particle swarm optimization insert ignore into journalissuearticles values(CLGPSO); method is introduced. The implementation of individual cognitive and social acceleration coefficient values for each particle and a new fourth term in the velocity formula make the process of convergence faster. This new algorithm is tested on 6 standard mathematical test functions and a 33-bus distribution system. The performance of the CLGPSO is compared with the inertia weight particle swarm optimization insert ignore into journalissuearticles values(PSO); and evolutionary PSO methods. Since the CLGPSO requires fewer iterations, less computing time, and a lower standard deviation value, it can be concluded that the CLGPSO is the superior algorithm in solving small-dimension mathematical and simple power system problems.Keywords : Distributed generator, particle swarm optimization, power loss reduction, standard mathematical test function