2024
DOI: 10.28991/hij-2024-05-02-02
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An Adaptive Differential Evolution with Multiple Crossover Strategies for Optimization Problems

Irfan Farda,
Arit Thammano

Abstract: The efficiency of a Differential Evolution (DE) algorithm largely depends on the control parameters of the mutation strategy. However, fixed-value control parameters are not effective for all types of optimization problems. Furthermore, DE search capability is often restricted, leading to limited exploration and poor exploitation when relying on a single strategy. These limitations cause DE algorithms to potentially miss promising regions, converge slowly, and stagnate in local optima. To address these drawbac… Show more

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