Network-based hybrid genetic algorithm for scheduling in FMS environments

被引:0
|
作者
KwanWoo Kim
Genji Yamazaki
Lin Lin
Mitsuo Gen
机构
[1] Tokyo Metropolitan Institute of Technology,Department of Intelligent Systems
[2] Waseda University,Graduate School of Industrial, Production and Systems Engineering
关键词
Flexible manufacturing systems (FMS); Genetic algorithms (GA); Scheduling;
D O I
10.1007/s10015-004-0291-y
中图分类号
学科分类号
摘要
Scheduling in flexible manufacturing systems (FMS) must take account of the shorter lead-time, the multiprocessing environment, the flexibility of alternative workstations with different processing times, and the dynamically changing states. The best scheduling approach, as described here, is to minimize makespan tM, total flow time tF, and total tardiness penalty pT. However, in the case of manufacturing system problems, it is difficult for those with traditional optimization techniques to cope with this. This article presents a new flow network-based hybrid genetic algorithm (hGA) approach for generating static schedules in a FMS environment. The proposed method is combined with the neighborhood search technique in a mutation operation to improve the solution of the FMS problem, and to enhance the performance of the genetic search process. We update the change in swap mutation and the local search-based mutation ration. Numerical experiments show that the proposed flow network-based hGA is both effective and efficient for FMS problems.
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页码:67 / 76
页数:9
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