Genetic algorithms to solve a single machine multiple orders per job scheduling problem

Winter Simulation Conference(2010)

引用 19|浏览4
暂无评分
摘要
This research is motivated by a scheduling problem found in 300-mm semiconductor wafer fabrication facilities (wafer fabs). Front opening unified pods (FOUPs) are used to transfer wafers in wafer fabs. The number of FOUPs is kept limited because of the potential overload of the automated material handling system (AMHS). Different orders are grouped into one FOUP because orders of an individual customer very often fill only a portion of a FOUP. We study the case of lot processing and single item processing. The total weighted completion time objective is considered. In this paper, we propose a grouping genetic algorithm (GGA) to form the content of the FOUPs and sequence them. The GGA is hybridized with local search. Furthermore, we also study a random key genetic algorithm (RKGA) to sequence the orders and assign the orders to FOUPs by a heuristic. We compare the performance of the two GAs based on randomly generated problem instances with simple heuristics and other GAs from the literature. It turns out that GGA only slightly outperforms the previous genetic GAs but it is faster when a lot processing environment is considered. The RKGA behaves similar to the best performing GAs described in the literature with respect to solution quality and computing time.
更多
查看译文
关键词
computing time,previous genetic gas,job scheduling problem,problem instance,300-mm semiconductor wafer fabrication,multiple order,single machine,lot processing,random key genetic algorithm,lot processing environment,single item processing,wafer fabs,grouping genetic algorithm,genetic algorithms,scheduling problem,job scheduling,bioinformatics,genetic algorithm,genetics,genomics,job shop scheduling,local search
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要