In this work, two methodologies to reduce the computation time of expensive multi-objective optimization problems are compared. These methodologies consist of the hybridization of a multi-objective evolutionary algorithm (MOEA) with local search procedures. First, an inverse artificial neural network proposed previously, consisting of mapping the decision variables into the multiple objectives to be optimized in order to generate improved solutions on certain generations of the MOEA, is presented. Second, a new approach based on a pattern search filter method is proposed in order to perform a local search around certain solutions selected previously from the Pareto frontier. The results obtained, by the application of both methodologies ...
The term memetic algorithms (MAs) was introduced in the late 1980s to denote a family of metaheurist...
Abstract – Evolutionary Algorithms (EAs) represent an elegant class of solution paradigms that can e...
A local search method is often introduced in an evolutionary optimization technique to enhance its s...
In this work, two methodologies to reduce the computation time of expensive multi-objective optimiza...
A hybrid multi-objective evolutionary algorithm (MOEA) for solving nonlinear multi-objective opti- ...
Importance of multi-objective optimization problems has been rapidly increasing in the artificial in...
© 2016 Elsevier B.V. All rights reserved. A comparative study of the impacts of various local search...
In recent years, hybridization of multi-objective evolutionary algorithms (MOEAs) with traditional m...
This paper presents an evolutionary algorithm for solving multi-objective optimization problems-base...
Local search techniques have been applied in optimization methods. The effect of local search to the...
In this paper we propose a novel iterative search procedure for multi-objective optimization problem...
Abstract—In the last two decades, multiobjective optimization has become mainstream because of its w...
This paper proposes a multiclassification algorithm using multilayer perceptron neural network model...
A new neural network-based multiobjective optimization approach is presented, which performs an appr...
Nature-inspired algorithms are seen as potential tools to solve large-scale global optimization prob...
The term memetic algorithms (MAs) was introduced in the late 1980s to denote a family of metaheurist...
Abstract – Evolutionary Algorithms (EAs) represent an elegant class of solution paradigms that can e...
A local search method is often introduced in an evolutionary optimization technique to enhance its s...
In this work, two methodologies to reduce the computation time of expensive multi-objective optimiza...
A hybrid multi-objective evolutionary algorithm (MOEA) for solving nonlinear multi-objective opti- ...
Importance of multi-objective optimization problems has been rapidly increasing in the artificial in...
© 2016 Elsevier B.V. All rights reserved. A comparative study of the impacts of various local search...
In recent years, hybridization of multi-objective evolutionary algorithms (MOEAs) with traditional m...
This paper presents an evolutionary algorithm for solving multi-objective optimization problems-base...
Local search techniques have been applied in optimization methods. The effect of local search to the...
In this paper we propose a novel iterative search procedure for multi-objective optimization problem...
Abstract—In the last two decades, multiobjective optimization has become mainstream because of its w...
This paper proposes a multiclassification algorithm using multilayer perceptron neural network model...
A new neural network-based multiobjective optimization approach is presented, which performs an appr...
Nature-inspired algorithms are seen as potential tools to solve large-scale global optimization prob...
The term memetic algorithms (MAs) was introduced in the late 1980s to denote a family of metaheurist...
Abstract – Evolutionary Algorithms (EAs) represent an elegant class of solution paradigms that can e...
A local search method is often introduced in an evolutionary optimization technique to enhance its s...