Academic Journals Database
Disseminating quality controlled scientific knowledge

An Effective Adaptive Multi-objective Particle Swarm for Multimodal Constrained Function Optimization

ADD TO MY LIST
 
Author(s): Yongquan Zhou | Shengyu Pei

Journal: Journal of Computers
ISSN 1796-203X

Volume: 5;
Issue: 8;
Start page: 1144;
Date: 2010;
Original page

Keywords: Particle Swarm Optimization algorithm | Adaptability Multi-objective Optimization | Constrained optimization | Test functions

ABSTRACT
This paper presents a novel adaptive multi-objective particle swarm optimization algorithm and with adaptive multi-objective particle swarm algorithm for solving constrained function optimization problems, in which Pareto non-dominated ranking, tournament selection, crowding distance method were introduced, simultaneously the rate of crowding distance changing were integrated into the algorithm. Finally, ten standard functions are used to  test the performance of the algorithm, experimental results show that the proposed approach is an effecient, and achieve a high-quality performance.
Why do you need a reservation system?      Save time & money - Smart Internet Solutions