Two Enhanced Differential Evolution Algorithm Variants for Constrained Engineering Design Problems
نویسندگان
چکیده
Many engineering design problems can be formulated as optimization problems with constraints. In this paper we have proposed two modified variants of differential evolution (DE) for solving constrained engineering design problems. Paretoranking method is used to handle constrained with proposed approaches. The proposed variants named EDE-1 and EDE-2 are tested on 4 engineering design optimization problems taken from literature. Simulation results prove the efficiency of proposed approaches.
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