Function optimization using metaheuristics
Abstract
The paper presents the results of comparison of three metaheuristics that currently exist in the problem of function optimization. The first algorithm is Particle Swarm Optimization (PSO) - the algorithm has recently emerged. The next one is based on a paradigm of Artificial Immune System (AIS). Both algorithms are compared with Genetic Algorithm (GA). The algorithms are applied to optimize a set of functions well known in the area of evolutionary computation. Experimental results show that it is difficult to unambiguously select one best algorithm which outperforms other tested metaheuristics.
Downloads
Download data is not yet available.
Downloads
Published
15.12.2006
Issue
Section
Article
How to Cite
Pilski, M., & Seredyński, F. (2006). Function optimization using metaheuristics. Studia Informatica. System and Information Technology, 7(1-2), 77-91. https://czasopisma.uws.edu.pl/studiainformatica/article/view/2852