Multi-Objective Particle Swarm Optimizers: An Experimental Comparison
EMO '09 Proceedings of the 5th International Conference on Evolutionary Multi-Criterion Optimization
Multiobjective Constriction Particle Swarm Optimization and Its Performance Evaluation
ICIC '07 Proceedings of the 3rd International Conference on Intelligent Computing: Advanced Intelligent Computing Theories and Applications. With Aspects of Artificial Intelligence
A parallel genetic algorithm in multi-objective optimization
CCDC'09 Proceedings of the 21st annual international conference on Chinese control and decision conference
Information Sciences: an International Journal
An parallel particle swarm optimization approach for multiobjective optimization problems
Proceedings of the 12th annual conference on Genetic and evolutionary computation
Multiobjective particle swarm optimization with nondominated local and global sets
Natural Computing: an international journal
A novel multi-objective optimization algorithm based on artificial bee colony
Proceedings of the 13th annual conference companion on Genetic and evolutionary computation
A hybrid particle swarm optimization algorithm for high-dimensional problems
Computers and Industrial Engineering
Multi-swarm co-evolutionary paradigm for dynamic multi-objective optimisation problems
International Journal of Intelligent Information and Database Systems
An adaptive multi-objective particle swarm optimization for color image fusion
SEAL'06 Proceedings of the 6th international conference on Simulated Evolution And Learning
Using computational intelligence for large scale air route networks design
Applied Soft Computing
Improved MOPSO based on ε-domination
ICIC'12 Proceedings of the 8th international conference on Intelligent Computing Theories and Applications
Hi-index | 0.00 |
This article presents an approach to integrate a Pareto dominance concept into a comprehensive learning particle swarm optimizer (CLPSO) to handle multiple objective optimization problems. The multiobjective comprehensive learning particle swarm optimizer (MOCLPSO) also integrates an external archive technique. Simulation results (obtained using the codes made available on the Web at http://www.ntu.edu.sg/home/EPNSugan) on six test problems show that the proposed MOCLPSO, for most problems, is able to find a much better spread of solutions and faster convergence to the true Pareto-optimal front compared to two other multiobjective optimization evolutionary algorithms. © 2006 Wiley Periodicals, Inc. Int J Int Syst 21: 209–226, 2006.