现代制造工程 ›› 2025, Vol. 541 ›› Issue (10): 26-34.doi: 10.16731/j.cnki.1671-3133.2025.10.003

• 智能制造 • 上一篇    下一篇

基于深度强化学习的晶圆分拣系统实时调度研究

刘嘉成   

  1. 上海交通大学机械与动力工程学院,上海 200240
  • 收稿日期:2025-02-25 发布日期:2025-10-29
  • 作者简介:刘嘉成,硕士研究生,主要研究方向为系统架构与算法。E-mail:ljc879032479@sjtu.edu.cn

Deep reinforcement learning based wafer sorting system real-time scheduling

LIU Jiacheng   

  1. School of Mechanical Engineering, Shanghai Jiao Tong University, Shanghai 200240, China
  • Received:2025-02-25 Published:2025-10-29

摘要: 调度问题常见于各类系统中,然而其求解过程依赖于先验知识与人为设定的规则。为降低调度问题求解成本并保证调度效率,针对具有共享资源的晶圆分拣系统实时系统调度问题,定义了并行控制 Petri 网(PcPN)进行系统建模,并基于PcPN开展了强化学习(DRL)训练,成功获得了可根据PcPN状态实时生成有效调度动作的调度智能体。此外,为提升DRL训练的稳定性,构建了PcPN深度策略网络并验证了其有效性。在实机实验阶段,PcPN实时调度算法被部署至晶圆分拣系统生产实例中,实现了PcPN驱动的晶圆分拣实时调度,有力验证了该算法的可行性与高效性。

关键词: 深度强化学习, Petri网, 调度, 实时系统

Abstract: Scheduling problems are widespread in various systems. However,the solution of scheduling problems is costly. Taking the scheduling problem with shared resources of wafer sorting system as an object,the Parallel control Petri Net (PcPN) for system modeling was defined in order to reduce the cost of scheduling problem solving and ensure scheduling efficiency.Based on PcPN,Deep Reinforcement Learning (DRL) training was carried out to successfully construct a scheduling agent that can generate effective scheduling actions according to the state of PcPN in real-time,and the PcPN real-time scheduling algorithm was proposed accordingly. To further enhance the stability of DRL training, a deep policy network for PcPN was proposed and its validity was verified. In actual machine experiment stage,the scheduling algorithm was deployed in the wafer sorting system,realizing the real-time scheduling of wafer sorting driven by PcPN. The experimental result proves the feasibility and efficiency of the algorithm.

Key words: Deep Reinforcement Learning(DRL), Petri Net(PN), scheduling, real-time system

中图分类号: 

版权所有 © 《现代制造工程》编辑部 
地址:北京市东城区东四块玉南街28号 邮编:100061 电话:010-67126028 电子信箱:2645173083@qq.com
本系统由北京玛格泰克科技发展有限公司设计开发 技术支持:support@magtech.com.cn