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首页> 外文期刊>International Journal of Bio-Inspired Computation >Variable-grouping-based exponential crossover for differential evolution algorithm
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Variable-grouping-based exponential crossover for differential evolution algorithm

机译:基于可变分组的差分演进算法的指数交叉

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摘要

The performance of differential evolution (DE) algorithm largely depends on its crossover operator, whose substantive characteristics are to make the algorithm search in a subspace of the original search space. Different crossover operators use different subspace divisions, and how to choose a suitable crossover operator for a specific optimisation problem is still an open issue. This paper proposes variable-grouping-based exponential crossover (VGExp), where all variables are divided into multiple groups based on interaction information, and the variables that are mutated simultaneously have a high probability of coming from the same group. Moreover, the solutions can improve the accuracy of the variable grouping and provide initial guidance for optimisation. Therefore, the proposed VGExp seamlessly combines variables grouping technique and differential evolution. The experiment results based on 30 CEC2014 test problems show that VGExp can improve the performance of most DE variants, and it is also better than other well-developed crossover operators.
机译:差分演化(de)算法的性能很大程度上取决于其交叉运算符,其实质性特征是使算法在原始搜索空间的子空间中搜索。不同的交叉运算符使用不同的子空间划分,以及如何为特定优化问题选择合适的交叉运算符仍然是一个开放问题。本文提出了基于可变基于分组的指数交叉(VGExP),其中所有变量都基于交互信息分成多个组,并且同时突变的变量具有来自同一组的高概率。此外,解决方案可以提高可变分组的准确性,并提供优化的初始指导。因此,所提出的VGEXP无缝地结合了变量分组技术和差分演进。基于30 CEC2014测试问题的实验结果表明,VGEXP可以提高大多数DE变体的性能,也比其他开发的交叉运算符更好。

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