Publication | Closed Access
Scalable multi-objective optimization test problems
1.6K
Citations
9
References
2003
Year
Unknown Venue
Large-scale Global OptimizationEngineeringIntelligent OptimizationSoftware TestingGenetic AlgorithmMulti-objective Evolutionary AlgorithmsSystems EngineeringHybrid Optimization TechniqueEvolutionary AlgorithmsComputer ScienceParallel ComputingTest ProblemsPareto-optimal FrontEvolutionary Multimodal OptimizationEvolutionary ProgrammingOperations Research
After adequately demonstrating the ability to solve different two-objective optimization problems, multi-objective evolutionary algorithms (MOEAs) must show their efficacy in handling problems having more than two objectives. In this paper, we suggest three different approaches for systematically designing test problems for this purpose. The simplicity of construction, scalability to any number of decision variables and objectives, knowledge of exact shape and location of the resulting Pareto-optimal front, and ability to control difficulties in both converging to the true Pareto-optimal front and maintaining a widely distributed set of solutions are the main features of the suggested test problems. Because of these features, they should be useful in various research activities on MOEAs, such as testing the performance of a new MOEA, comparing different MOEAs, and having a better understanding of the working principles of MOEAs.
| Year | Citations | |
|---|---|---|
Page 1
Page 1