一种具有新颖突变和交叉策略的全局数值优化自适应差分进化算法。

Sk Minhazul Islam, Swagatam Das, Saurav Ghosh, Subhrajit Roy, Ponnuthurai Nagaratnam Suganthan
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引用次数: 568

摘要

差分进化(DE)是目前最强大的随机实参数优化器之一。在本文中,我们提出了一种新的突变策略,即二项杂交的适应度诱导亲本选择方案,以及一种简单而有效的方案,该方案通过调整其两个最重要的控制参数来达到提高性能的目的。新的变异算子,我们称之为DE/current-to-gr_best/1,是经典DE/current-to-best/1方案的变体。它使用当前代随机选择的一组(其大小为总体大小的q%)解决方案中的最佳解决方案来扰动父(目标)向量,而不像DE/current-to-best/1总是选择整个总体中的最佳向量来扰动目标向量。在我们改进的重组框架中,我们采用了一种偏亲本选择方案,即让每个突变体与当前种群中排名靠前的p个个体中的一个进行二项交叉,而不是与所有DE变体中使用的具有相同索引的目标载体进行二项交叉。在2005年IEEE进化计算大会竞赛和实参数优化特别会议上,将经典DE框架(1995年开发)的参数自适应策略与两个经典和四个最先进的自适应DE变体进行了比较。我们的比较研究表明,所提出的方案在很大程度上提高了DE的性能,使得它能够在各种测试问题上比最先进的DE变体享有统计优势。最后,我们通过实验证明,如果我们提出的一个或多个策略与现有的功能强大的DE变体(如jDE和JADE)集成,它们的性能也可以得到增强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An adaptive differential evolution algorithm with novel mutation and crossover strategies for global numerical optimization.

Differential evolution (DE) is one of the most powerful stochastic real parameter optimizers of current interest. In this paper, we propose a new mutation strategy, a fitness-induced parent selection scheme for the binomial crossover of DE, and a simple but effective scheme of adapting two of its most important control parameters with an objective of achieving improved performance. The new mutation operator, which we call DE/current-to-gr_best/1, is a variant of the classical DE/current-to-best/1 scheme. It uses the best of a group (whose size is q% of the population size) of randomly selected solutions from current generation to perturb the parent (target) vector, unlike DE/current-to-best/1 that always picks the best vector of the entire population to perturb the target vector. In our modified framework of recombination, a biased parent selection scheme has been incorporated by letting each mutant undergo the usual binomial crossover with one of the p top-ranked individuals from the current population and not with the target vector with the same index as used in all variants of DE. A DE variant obtained by integrating the proposed mutation, crossover, and parameter adaptation strategies with the classical DE framework (developed in 1995) is compared with two classical and four state-of-the-art adaptive DE variants over 25 standard numerical benchmarks taken from the IEEE Congress on Evolutionary Computation 2005 competition and special session on real parameter optimization. Our comparative study indicates that the proposed schemes improve the performance of DE by a large magnitude such that it becomes capable of enjoying statistical superiority over the state-of-the-art DE variants for a wide variety of test problems. Finally, we experimentally demonstrate that, if one or more of our proposed strategies are integrated with existing powerful DE variants such as jDE and JADE, their performances can also be enhanced.

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