Improvement of Particle Swarm Optimization Using Personal Best Adaptive Weight


Authors : Emmanuel Obuobi Addo; Elvis Twumasi; Daniel Kwegyir

Volume/Issue : Volume 6 - 2021, Issue 9 - September

Google Scholar : http://bitly.ws/gu88

Scribd : https://bit.ly/3lx7J9T

Improvement of the particle swarm optimization algorithm has become increasingly important to deliver it out of local optima trapping and increase its convergence rate. In this paper a personal best adaptive weight is proposed as a new PSO variant named personal best adaptive weight particle swarm optimization (PBAW-PSO) to choose different inertia weight for different particles in the swarm to update their velocity. The proposed variant was compared with three other inertia weight improved variants on six benchmark functions. The comparison was done based on the best cost, mean cost, simulation time, standard deviation and convergence rate. The overall results showed that the PBAW-PSO variant had a better performance than the other variants.

Keywords : Metaheuristic; Inertia Weight; Evolutionary; Particle Swarm Optimization; Convergence.

CALL FOR PAPERS


Paper Submission Last Date
31 - March - 2024

Paper Review Notification
In 1-2 Days

Paper Publishing
In 2-3 Days

Video Explanation for Published paper

Never miss an update from Papermashup

Get notified about the latest tutorials and downloads.

Subscribe by Email

Get alerts directly into your inbox after each post and stay updated.
Subscribe
OR

Subscribe by RSS

Add our RSS to your feedreader to get regular updates from us.
Subscribe