This paper presents a hybrid method to solve hard multiobjective problems. The proposed approach adopts an epsilon-constraint method which uses a Particle Swarm Optimizer to get points near of the true Pareto front. In this approach, only few points will be generated and then, new intermediate points will be calculated using an interpolation method, to increase the among of points in the output Pareto front. The proposed approach is validated using two difficult multiobjective test problems and the results are compared with those obtained by a multiobjective evolutionary algorithm representative of the state of the art: NSGA-II.Facultad de Informátic
Engineering design often involves the optimization of different competing objectives. The aim is to ...
International audienceTwo techniques for the numerical treatment of multi-objective optimization pro...
Abstract- A new algorithm is proposed to solve constrained multi-objective problems in this paper. T...
This paper presents a hybrid method to solve hard multiobjective problems. The proposed approach ado...
This paper presents a hybrid method to solve hard multi- objective problems. The proposed approach a...
In this paper, a hybrid particle swarm evolutionary algorithm is proposed for solving constrained mu...
We discuss methods for generating or approximating the Pareto set of multiobjective optimization pro...
This paper proposes a hybrid particle swarm approach called Simple Multi-Objective Particle Swarm Op...
In many real-world applications, various optimization problems with conflicting objectives are very ...
Evolutionary multi-objective optimization algorithms are commonly used to obtain a set of non-domina...
Handling multi-objective optimization problems using evolutionary computations represents a promisin...
In the few last years, among other tools a multiobjective evolutionary algorithm (MOBEA) for succe...
A hybrid framework combining the branch and bound method with multiobjective evolutionary algorithms...
Multi-objective evolutionary algorithms are widely used by researchers and practitioners to solve mu...
This paper presents a multi-objective constraint handling method incorporating the particle swarm op...
Engineering design often involves the optimization of different competing objectives. The aim is to ...
International audienceTwo techniques for the numerical treatment of multi-objective optimization pro...
Abstract- A new algorithm is proposed to solve constrained multi-objective problems in this paper. T...
This paper presents a hybrid method to solve hard multiobjective problems. The proposed approach ado...
This paper presents a hybrid method to solve hard multi- objective problems. The proposed approach a...
In this paper, a hybrid particle swarm evolutionary algorithm is proposed for solving constrained mu...
We discuss methods for generating or approximating the Pareto set of multiobjective optimization pro...
This paper proposes a hybrid particle swarm approach called Simple Multi-Objective Particle Swarm Op...
In many real-world applications, various optimization problems with conflicting objectives are very ...
Evolutionary multi-objective optimization algorithms are commonly used to obtain a set of non-domina...
Handling multi-objective optimization problems using evolutionary computations represents a promisin...
In the few last years, among other tools a multiobjective evolutionary algorithm (MOBEA) for succe...
A hybrid framework combining the branch and bound method with multiobjective evolutionary algorithms...
Multi-objective evolutionary algorithms are widely used by researchers and practitioners to solve mu...
This paper presents a multi-objective constraint handling method incorporating the particle swarm op...
Engineering design often involves the optimization of different competing objectives. The aim is to ...
International audienceTwo techniques for the numerical treatment of multi-objective optimization pro...
Abstract- A new algorithm is proposed to solve constrained multi-objective problems in this paper. T...