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首页> 外文期刊>International Journal of Information Technology & Decision Making >An Ensemble Differential Evolution for Numerical Optimization
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An Ensemble Differential Evolution for Numerical Optimization

机译:整体微分演化的数值优化

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摘要

The success of differential evolution (DE) in solving a specific problem crucially depends on appropriately choosing generation strategies and control parameter values. The mutation strategies of DE are classified into two groups: DE/rand/k without best solution and DE/best/k with best solution. The proposed algorithm utilizes two mutation strategies. The first one is from DE/rand/k and the second one is from DE/best/k. The proposed algorithm uses two control parameter settings. It randomly combines them to generate trial vectors. The novel mechanism improves the convergence rate of DE and maintains diversity of the population. The performance of the proposed algorithm is extensively evaluated on all the CEC2005 test functions and compares favorably with the several DE variants.
机译:差分进化(DE)能否成功解决特定问题,关键取决于适当选择生成策略和控制参数值。 DE的突变策略分为两类:无最佳解的DE / rand / k和有最佳解的DE / best / k。该算法利用了两种变异策略。第一个来自DE / rand / k,第二个来自DE / best / k。所提出的算法使用两个控制参数设置。它随机组合它们以生成试验向量。该新机制提高了DE的收敛速度,并保持了种群的多样性。所提出算法的性能在所有CEC2005测试功能上得到了广泛评估,并与几种DE变体进行了比较。

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