DocumentCode
2221693
Title
A comparison on the search of particle swarm optimization and differential evolution on multi-objective optimization
Author
Dominguez, J.S.H. ; Pulido, G.T.
Author_Institution
Inf. Technol. Lab., CINVESTAV-Tamaulipas, Ciudad Victoria, Mexico
fYear
2011
fDate
5-8 June 2011
Firstpage
1978
Lastpage
1985
Abstract
Particle swarm optimization (PSO) and differential evolution (DE) are meta-heuristics which have been found to be successful in a wide variety of optimization tasks. The high speed of convergence and the relative simplicity of PSO make it a highly viable candidate to be used in multi-objective optimization problems (MOPs). Therefore, several PSO approaches capable to handle MOPs (MOPSOs) have appeared in the past. There are some problems, however, where PSO-based algorithms have shown a premature convergence. On the other hand, multi- objective DEs (MODE) have shown lower speed of convergence than MOPSOs but they have been successfully used in problems where MOPSO have mistakenly converged. In this work, we have developed experiments to observe the convergence behavior, the online convergence, and the diversity of solutions of both meta-heuristics in order to have a better understanding about how particles and solutions move in the search space. To this end, MOPSO and MODE algorithms under (to our best effort) similar conditions were used. Moreover, the ZDT test suite was used on all experiments since it allows to observe Pareto fronts in two-dimensional scatter plots (more details on this are presented on the experiments section). Based on the observations found, modifications to two PSO-based algorithms from the state of the art were proposed resulting in a rise on their performance. It is concluded that MOPSO presents a poor distributed scheme that leads to a more aggressive search. This aggressiveness showed to be detrimental for the selected problems. On the other hand, MODE seemed to generate better distributed points on both decision and objective space allowing it to produce better results.
Keywords
evolutionary computation; particle swarm optimisation; MODE algorithms; PSO-based algorithms; ZDT test suite; differential evolution; multiobjective DE; multiobjective optimization problem; online convergence; particle swarm optimization; Bones; Convergence; Lead; Optimization; Particle swarm optimization; Proposals; Search engines;
fLanguage
English
Publisher
ieee
Conference_Titel
Evolutionary Computation (CEC), 2011 IEEE Congress on
Conference_Location
New Orleans, LA
ISSN
Pending
Print_ISBN
978-1-4244-7834-7
Type
conf
DOI
10.1109/CEC.2011.5949858
Filename
5949858
Link To Document