Effect of parameter selection on different topological structures for Particle Swarm Optimization algorithm

Abstract
Particle Swarm Optimization is an evolutionary optimization algorithm, largely studied during the years: analysis of convergence, determination of the optimal coefficients, hybridization of the original algorithm and also the determination of the best relationship structure between the swarm elements (topology) have been investigated largely. Unfortunately, all these studies have been produced separately, and the same coefficients, derived for the original topology of the algorithm, have been always applied. The intent of this paper is to identify the best set of coefficients for different topological structures. A large suite of objective functions are considered and the best compromise coefficients are identified for each topology. Results are finally compared on the base of a practical ship design application.
Anno
2019
Autori IAC
Tipo pubblicazione
Altri Autori
Peri, D.
Editore
SIMAI
Rivista
Communications in Applied and Industrial Mathematics