Adaptive mutation in genetic algorithms

被引:66
作者
S. Marsili Libelli
P. Alba
机构
[1] Department of Systems and Computer Science,
[2] University of Florence,undefined
[3] Via S. Marta,undefined
[4] 3-50139 Firenze,undefined
[5] Italy Tel./fax: ++39-55-47.96.264 e-mail: marsili@ingfi1.ing.unifi.it,undefined
关键词
Key words Genetic algorithms; optimization; numerical methods; search methods;
D O I
10.1007/s005000000042
中图分类号
学科分类号
摘要
 In Genetic Algorithms mutation probability is usually assigned a constant value, therefore all chromosome have the same likelihood of mutation irrespective of their fitness. It is shown in this paper that making mutation a function of fitness produces a more efficient search. This function is such that the least significant bits are more likely to be mutated in high-fitness chromosomes, thus improving their accuracy, whereas low-fitness chromosomes have an increased probability of mutation, enhancing their role in the search. In this way, the chance of disrupting a high-fitness chromosome is decreased and the exploratory role of low-fitness chromosomes is best exploited. The implications of this new mutation scheme are assessed with the aid of numerical examples.
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页码:76 / 80
页数:4
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