进化算法
突变
高斯分布
进化计算
算法
莱维航班
计算机科学
数学
进化规划
适应性突变
遗传算法
数学优化
统计
生物
遗传学
随机游动
物理
量子力学
基因
作者
Chang‐Yong Lee,Xin Yao
标识
DOI:10.1109/cec.2001.934442
摘要
An evolutionary programming algorithm with adaptive mutation operators based on Levy probability distribution is studied. Levy stable distribution has an infinite second moment. Because of this, Levy mutation is more likely to generate an offspring that is farther away from its parent than Gaussian mutation, which is often used in evolutionary algorithms. Such likelihood depends on a parameter /spl alpha/ in the distribution. Based on this, we propose an adaptive Levy mutation in which four different candidate offspring are generated by each parent, according to /spl alpha/=1.0, 1.3, 1.7, and 2.0, and the best one is chosen as the offspring for the next generation. The proposed algorithm was applied to several multivariate function optimization problems. We show empirically that the performance of the proposed algorithm was better than that of classical evolutionary algorithms using Gaussian mutation.
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