Mert PaldrakM. Fatih TasgetirenP. N. SuganthanQuan-Ke PanTasgetiren, M. FatihSuganthan, P. N.Paldrak, MertPan, Quan-Ke2025-10-062016978-1-5090-0622-9978150900622910.1109/CEC.2016.77441152-s2.0-85008244093https://gcris.yasar.edu.tr/handle/123456789/7514https://doi.org/10.1109/CEC.2016.7744115In this paper an ensemble of differential evolution algorithms based on a variable neighborhood search algorithm (EDE-VNS) is proposed so as to solve the constrained real parameter-optimization problems. The performance of DE algorithms heavily depends on the mutation strategies crossover operators and control parameters employed. The proposed EDEVNS algorithm employs multiple mutation operators and control parameters in its VNS loops to enhance the solution quality. In addition we utilize opposition-based learning (OBL) to take advantages of opposite solutions to find a candidate solution which might be close to the global optimum. In addition we also present an idea of injecting some good dimensional values from promising areas in the population to the trial individual through the injection procedure. The computational results show that the EDE-VNS algorithm is very competitive to some of the best performing algorithms from the literature.Englishinfo:eu-repo/semantics/closedAccessEnsemble of Differential Evolution, Real Parameter Optimization, Variable Neighborhood Search, Constraint HandlingPARAMETERSEnsemble of Differential EvolutionReal Parameter OptimizationVariable Neighborhood SearchConstraint HandlingAn Ensemble of Differential Evolution Algorithms with Variable Neighborhood Search for Constrained Function OptimizationConference Object