基于层次学习机制的差异进化

Kangjia Qiao;Jing Liang;Boyang Qu;Kunjie Yu;Caitong Yue;Hui Song
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引用次数: 7

摘要

为了解决复杂的单目标全局优化问题,本文提出了一种新的基于层次的学习差分进化方法。在这种方法中,整个种群在每一代开始时从最好的到最差的排序。然后,将人口划分为多个层次,利用不同的层次发挥不同的功能。在每一层中,使用一个控制参数从上层中选择优秀的样本进行学习。在这种情况下,较差的个体可以选择更多的学习范例来提高自己的探索能力,优秀的个体可以直接向几个最优秀的个体学习,提高解决方案的质量。为了加快收敛速度,提出了一种基于层次的差分向量选择方法。此外,对最低水平的个体分配特定的交叉率,以保证种群在以后的进化过程中能够持续更新。组织并进行了全面的实验,以深入了解LBLDE,并与7种同类DE变体相比,证明了LBLDE的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differential Evolution with Level-Based Learning Mechanism
To address complex single objective global optimization problems, a new Level-Based Learning Differential Evolution (LBLDE) is developed in this study. In this approach, the whole population is sorted from the best to the worst at the beginning of each generation. Then, the population is partitioned into multiple levels, and different levels are used to exert different functions. In each level, a control parameter is used to select excellent exemplars from upper levels for learning. In this case, the poorer individuals can choose more learning exemplars to improve their exploration ability, and excellent individuals can directly learn from the several best individuals to improve the quality of solutions. To accelerate the convergence speed, a difference vector selection method based on the level is developed. Furthermore, specific crossover rates are assigned to individuals at the lowest level to guarantee that the population can continue to update during the later evolutionary process. A comprehensive experiment is organized and conducted to obtain a deep insight into LBLDE and demonstrates the superiority of LBLDE in comparison with seven peer DE variants.
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CiteScore
7.80
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