作业车间调度
计算机科学
调度(生产过程)
流水车间调度
数学优化
强化学习
动态优先级调度
单调速率调度
公平份额计划
人工智能
数学
地铁列车时刻表
操作系统
作者
Thanaphut Khuntiyaporn,Pokpong Songmuang,Wasit Limprasert
标识
DOI:10.1109/isai-nlp54397.2021.9678152
摘要
Jobshop Scheduling Problem is a classic complex problem in every field, such as education, business, and daily life. This problem has been changed due to the changing of problem space. For this reason, JSP problems are categorized into many different types, which consist of The General Jobshop Scheduling (GJSP), The Flexible Jobshop Scheduling (FJSP) and The Multiple-routes Jobshop Scheduling (MrJSP). However, most of the research that tries to solve the JSP problem has focused on the shortest makespan scheduling. Still, sometimes the minimum makespan can be led to very high operating costs, which have a significant impact on operating results. Therefore, the Multiple-objectives Flexible Jobshop Scheduling Problem (M-FJSP) become the focused problem in this research. The proposed method is a Reinforcement Learning Model (RL) with a Q-Learning algorithm. The experimental dataset uses data from the OR-Library, which is the collection for a variety of Operation Research (OR) problems. Our proposed models will be compared between the three different states definition in which we expect the meta-heuristic model will be the best performance model.
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