Published December 1, 2021 | Version v1
Journal article Open

Using particle swarm optimization to solve test functions problems

  • 1. Southern Technical University

Description

In this paper the benchmarking functions are used to evaluate and check the particle swarm optimization (PSO) algorithm. However, the functions utilized have two dimension but they selected with different difficulty and with different models. In order to prove capability of PSO, it is compared with genetic algorithm (GA). Hence, the two algorithms are compared in terms of objective functions and the standard deviation. Different runs have been taken to get convincing results and the parameters are chosen properly where the Matlab software is used. Where the suggested algorithm can solve different engineering problems with different dimension and outperform the others in term of accuracy and speed of convergence.

Files

54 3244.pdf

Files (642.8 kB)

Name Size Download all
md5:61901cd187d4e61f46b2a349f8e47dc5
642.8 kB Preview Download