使用较小种群的差异进化

Xuan Ren, Zhi-zhao Chen, Zhen Ma
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引用次数: 5

摘要

差分进化算法作为一种流行的进化算法,在连续优化问题上表现出优异的收敛速度。但是,当使用相对较小的种群时,经典DE仍然可能出现早产,本文对此进行了讨论。考虑到大种群可能会显著增加计算量,我们提出了一种使用较小种群的改进DE (DESP),通过在其突变操作中引入额外的干扰。此外,还设计了一种自适应调整方案,根据进化过程中的改进程度来控制扰动强度。为了测试DESP的性能,我们进行了两组实验。结果表明,DESP在收敛速度和准确率方面都优于DE。
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Differential Evolution Using Smaller Population
As one of the popular evolutionary algorithms, differential evolution (DE) shows outstanding convergence rate on continuous optimization problems. But prematurity probably still occurs in classical DE when using relatively small population, which is discussed in this paper. Considering that large population may significantly raise the computational effort, we propose a modified DE using smaller population (DESP) by introducing extra disturbance to its mutation operation. In addition, an adaptive adjustment scheme is designed to control the disturbance intensity according to the improvement during the evolution. To test the performance of DESP, two groups of experiments are conducted. The results show that DESP outperforms DE in terms of convergence rate and accuracy.
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