Parallel genetic algorithms: a survey and problem state of the art

被引:0
|
作者
D. S. Knysh
V. M. Kureichik
机构
[1] Southern Federal University,Taganrog Institute of Technology
来源
Journal of Computer and Systems Sciences International | 2010年 / 49卷
关键词
Genetic Algorithm; Parallel Computing; Buffer Size; System Science International; Island Model;
D O I
暂无
中图分类号
学科分类号
摘要
In relation with development of computer capabilities and the appearance of multicore processors, parallel computing made it possible to reduce the time for solution of optimization problems. At present of interest are methods of parallel computing for genetic algorithms using the evolutionary model of development in which the main component is the population of species (set of alternative solutions to the problem). In this case, the algorithm efficiency increases due to parallel development of several populations. The survey of basic parallelization strategies and the most interesting models of their implementation are presented. Theoretical ideas on improvement of existing parallelization mechanisms for genetic algorithms are described. A modified model of parallel genetic algorithm is developed. Since genetic algorithms are used for solution of optimization problems, the proposed model was studied for the problem of optimization of a multicriteria function. The algorithm capabilities of getting out of local optima and the influence of algorithm parameters on the deep extremum search dynamics were studied. The conclusion on efficiency of application of dynamic connections of processes, rather than static connections, is made. New mechanisms for implementation and analysis of efficiency of dynamic connections for distributed computing in genetic algorithms are necessary.
引用
收藏
页码:579 / 589
页数:10
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