Repair methods, which usually require feasible solutions as reference, have been employed by Evolutionary Algorithms to solve constrained optimization problems. In this work, a novel repair method, which does not require feasible solutions as reference and inspired by the differential mutation, is added to an algorithm which uses two variants of differential evolution to solve dynamic constrained optimization problems. The proposed repair method replaces a local search operator with the aim to improve the overall performance of the algorithm in different frequencies of change in the constrained space. The proposed approach is compared against other recently proposed algorithms in an also recently proposed benchmark. The results show that th...
Generally, evolutionary algorithms require a large num-ber of evaluations of the objective function ...
Abstract If the optimization problem is dynamic, the goal is no longer to find the extrema, but to t...
A modified differential evolution algorithm (MDE) is proposed to solve unconstrained optimization pr...
Also part of the Theoretical Computer Science and General Issues book sub series (LNTCS, volume 1078...
Abstract—Differential evolution (DE) has been shown to be a simple and effective evolutionary algori...
Differential evolution (DE) algorithm has been shown to be a simple and efficient evolutionary algor...
This work on constrained optimization problems presents preliminary results using Differential Evolu...
AbstractA novel modified differential evolution algorithm (NMDE) is proposed to solve constrained op...
At present, evolutionary optimization algorithms are increasingly used in the development of new tec...
Dynamic constrained optimization problems (DCOPs) have gained researchers attention in recent years ...
Solving Constrained Optimization Problems (COPs) has been an important research topic in the optimiz...
The purpose of this paper is to present a new and an alternative differential evolution (ADE) algori...
Differential evolution has shown success in solving different optimization problems. However, its pe...
AbstractThis paper introduces an Effective Differential Evolution (EDE) algorithm for solving real p...
Real life problems which deal with time varying landscape dynamics often pose serious challenge to t...
Generally, evolutionary algorithms require a large num-ber of evaluations of the objective function ...
Abstract If the optimization problem is dynamic, the goal is no longer to find the extrema, but to t...
A modified differential evolution algorithm (MDE) is proposed to solve unconstrained optimization pr...
Also part of the Theoretical Computer Science and General Issues book sub series (LNTCS, volume 1078...
Abstract—Differential evolution (DE) has been shown to be a simple and effective evolutionary algori...
Differential evolution (DE) algorithm has been shown to be a simple and efficient evolutionary algor...
This work on constrained optimization problems presents preliminary results using Differential Evolu...
AbstractA novel modified differential evolution algorithm (NMDE) is proposed to solve constrained op...
At present, evolutionary optimization algorithms are increasingly used in the development of new tec...
Dynamic constrained optimization problems (DCOPs) have gained researchers attention in recent years ...
Solving Constrained Optimization Problems (COPs) has been an important research topic in the optimiz...
The purpose of this paper is to present a new and an alternative differential evolution (ADE) algori...
Differential evolution has shown success in solving different optimization problems. However, its pe...
AbstractThis paper introduces an Effective Differential Evolution (EDE) algorithm for solving real p...
Real life problems which deal with time varying landscape dynamics often pose serious challenge to t...
Generally, evolutionary algorithms require a large num-ber of evaluations of the objective function ...
Abstract If the optimization problem is dynamic, the goal is no longer to find the extrema, but to t...
A modified differential evolution algorithm (MDE) is proposed to solve unconstrained optimization pr...