基于灰狼优化器的混合差分进化算法

Duangjai Jitkongchuen
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引用次数: 39

摘要

针对连续全局优化问题,提出了一种带有灰狼优化器的混合差分进化算法。该算法引入了一种新的改进的突变方案。在该算法中,控制参数通过学习先前的进化搜索自适应。采用灰狼优化算法增强交叉策略。在9个知名基准函数上对该算法进行了性能评价,并与粒子群算法、传统差分进化算法和自适应差分进化算法(jDE)进行了比较。实验结果表明,该算法能够有效地解决复杂的优化问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid differential evolution with grey wolf optimizer for continuous global optimization
This paper proposes a hybrid differential evolution algorithm with grey wolf optimizer for solving continuous global optimization problems. The proposed algorithm introduces a new improved mutation schemes. In this algorithm, the control parameters are self-adapted by learning from previous evolutionary search. Beside, the grey wolf optimizer algorithm is used to enhance the crossover strategy. The performance of the proposed algorithm was evaluated on nine well-known benchmark functions and it was compared to particle swarm optimization, the traditional differential evolution algorithm and the self-adaptive differential evolution algorithm (jDE). The experimental results suggested that the proposed algorithm performed effectively to solving complex optimization problems.
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