Handling variable string lengths in GA-based structural topology optimization

被引:0
|
作者
J. Ryoo
P. Hajela
机构
[1] Mechanical,Rensselaer Polytechnic Institute
[2] Aerospace and Nuclear Engineering,undefined
关键词
topology optimization; stuructural optimization; genetic algorithm; crossover mechanism ;
D O I
暂无
中图分类号
学科分类号
摘要
Binary coded genetic algorithms (GA’s) have been used effectively in topological design of discrete structural systems. In a majority of such applications, the structural topology is extracted from a pre-defined ‘structural universe’, a set of all permissible joints and elements that can be used in the development of the optimal design. In the presence of a dense ‘structural universe’, the GA search process must contend with very long string lengths, with the attendant degradation in the effectiveness of the search process. The present paper presents a novel approach for handling variable string lengths in GA-based topological design. Varying string lengths in a population requires a redefinition of the crossover process, and both inter- and intra-species crossover mechanisms are explored in the present paper. The use of micro-GA’s is proposed as an approach to increasing the search efficiency in problems involving a large number of candidate topologies. The proposed strategies are implemented in representative algebraic problems, truss topology design, and the layout of a stiffened composite panel.
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页码:318 / 325
页数:7
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