Kumar Pravesh, Ali Musrrat
REC Bijnor, Chandpur 246725, India.
Department of Basic Sciences, PYD, King Faisal University, Al Ahsa 31982, Saudi Arabia.
Biomimetics (Basel). 2023 Oct 18;8(6):494. doi: 10.3390/biomimetics8060494.
Differential evolution (DE) is a proficient optimizer and has been broadly implemented in real life applications of various fields. Several mutation based adaptive approaches have been suggested to improve the algorithm efficiency in recent years. In this paper, a novel self-adaptive method called SaMDE has been designed and implemented on the mutation-based modified DE variants such as modified randomized localization-based DE (MRLDE), donor mutation based DE (DNDE), and sequential parabolic interpolation based DE (SPIDE), which were proposed by the authors in previous research. Using the proposed adaptive technique, an appropriate mutation strategy from DNDE and SPIDE can be selected automatically for the MRLDE algorithm. The experimental results on 50 benchmark problems taken of various test suits and a real-world application of minimization of the potential molecular energy problem validate the superiority of SaMDE over other DE variations.
差分进化(DE)是一种高效的优化器,已在各个领域的实际应用中广泛应用。近年来,人们提出了几种基于变异的自适应方法来提高算法效率。本文设计并实现了一种名为SaMDE的新型自适应方法,该方法应用于基于变异的改进DE变体,如作者在先前研究中提出的基于改进随机定位的DE(MRLDE)、基于供体变异的DE(DNDE)和基于顺序抛物线插值的DE(SPIDE)。使用所提出的自适应技术,可以为MRLDE算法自动选择来自DNDE和SPIDE的合适变异策略。在各种测试集的50个基准问题上的实验结果以及最小化潜在分子能量问题的实际应用验证了SaMDE相对于其他DE变体的优越性。