유전자 알고리즘에 의한 드릴싱 머신의 설계 최적화 연구

The Optimization of Sizing and Topology Design for Drilling Machine by Genetic Algorithms

  • 백운태 (기아정기 기술연구소) ;
  • 성활경 (창원대학교 기계공학과)
  • Baek, Woon-Tae ;
  • Seong, Hwal-Gyeong
  • 발행 : 1997.12.01

초록

Recently, Genetic Algorithm(GA), which is a stochastic direct search strategy that mimics the process of genetic evolution, is widely adapted into a search procedure for structural optimization. Contrast to traditional optimal design techniques which use design sensitivity analysis results, GA is very simple in their algorithms and there is no need of continuity of functions(or functionals) any more in GA. So, they can be easily applicable to wide area of design optimization problems. Also, owing to multi-point search procedure, they have higher porbability of convergence to global optimum compared to traditional techniques which take one-point search method. The methods consist of three genetics opera- tions named selection, crossover and mutation. In this study, a method of finding the omtimum size and topology of drilling machine is proposed by using the GA, For rapid converge to optimum, elitist survival model,roulette wheel selection with limited candidates, and multi-point shuffle cross-over method are adapted. And pseudo object function, which is the combined form of object function and penalty function, is used to include constraints into fitness function. GA shows good results of weight reducing effect and convergency in optimal design of drilling machine.

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