An improved genetic algorithm for job-shop scheduling problems using Taguchi-based crossover

被引:2
|
作者
Jinn-Tsong Tsai
Tung-Kuan Liu
Wen-Hsien Ho
Jyh-Horng Chou
机构
[1] National Pingtung University of Education,Department of Computer Science
[2] National Kaohsiung First University of Science and Technology,Institute of System Information and Control
[3] Kaohsiung Medical University,Department of Medical Information Management
关键词
Genetic algorithm; Job-shop scheduling problems; Taguchi method;
D O I
暂无
中图分类号
学科分类号
摘要
A Taguchi-based genetic algorithm (TBGA) is proposed as an improved genetic algorithm to solve the job-shop scheduling problems (JSP). The TBGA combines the powerful global exploration capabilities of conventional genetic algorithm (GA) with the Taguchi method that exploits optimal offspring. The latter method is used as a new crossover and is incorporated in the crossover operation of a GA. The reasoning ability of the Taguchi-based crossover can systematically select the better genes to achieve crossover and, consequently, enhance the GA. Furthermore, mutation is designed to have the neighbor search technique of performing the fine-tuning on the positions of jobs for the JSP. Therefore, the proposed TBGA approach possesses the merits of global exploration and robustness. The proposed TBGA approach is effectively applied to solve the famous Fisher-Thompson and Lawrence benchmarks of the JSP. In these studied problems, there are numerous local optima so that these studied problems are challenging enough for evaluating the performances of any proposed evolutionary approaches. The computational experiments show that the proposed TBGA approach can obtain both better and more robust results than those evolutionary methods reported recently.
引用
收藏
页码:987 / 994
页数:7
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