Real-time and concurrent optimization of scheduling and reconfiguration for dynamic reconfigurable flow shop using deep reinforcement learning
出版年份 2022 全文链接
标题
Real-time and concurrent optimization of scheduling and reconfiguration for dynamic reconfigurable flow shop using deep reinforcement learning
作者
关键词
-
出版物
CIRP Journal of Manufacturing Science and Technology
Volume 40, Issue -, Pages 243-252
出版商
Elsevier BV
发表日期
2022-12-16
DOI
10.1016/j.cirpj.2022.12.001
参考文献
相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。- Reinforcement learning approach to scheduling of precast concrete production
- (2022) Taehoon Kim et al. Journal of Cleaner Production
- Bilevel learning for large-scale flexible flow shop scheduling
- (2022) Longkang Li et al. COMPUTERS & INDUSTRIAL ENGINEERING
- Dynamic Job-shop Scheduling in Smart Manufacturing using Deep Reinforcement Learning
- (2021) Libing Wang et al. Computer Networks
- Learning to schedule job-shop problems: representation and policy learning using graph neural network and reinforcement learning
- (2021) Junyoung Park et al. INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH
- An integrated approach to optimize the configuration of mass-customized products and reconfigurable manufacturing systems
- (2021) Rachel Campos Sabioni et al. The International Journal of Advanced Manufacturing Technology
- Dynamic multi-objective scheduling for flexible job shop by deep reinforcement learning
- (2021) Shu Luo et al. COMPUTERS & INDUSTRIAL ENGINEERING
- NeuroEvolution of augmenting topologies for solving a two-stage hybrid flow shop scheduling problem: A comparison of different solution strategies
- (2021) Sebastian Lang et al. EXPERT SYSTEMS WITH APPLICATIONS
- A flexible configuration method of distributed manufacturing resources in the context of social manufacturing
- (2021) Yi Zhang et al. COMPUTERS IN INDUSTRY
- Network-based dynamic dispatching rule generation mechanism for real-time production scheduling problems with dynamic job arrivals
- (2021) Zilong Zhuang et al. ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING
- A new solution to distributed permutation flow shop scheduling problem based on NASH Q-Learning
- (2021) J.F. Ren et al. Advances in Production Engineering & Management
- Real-time data-driven dynamic scheduling for flexible job shop with insufficient transportation resources using hybrid deep Q network
- (2021) Yuxin Li et al. ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING
- Scalable Scheduling of Semiconductor Packaging Facilities Using Deep Reinforcement Learning
- (2021) In-Beom Park et al. IEEE Transactions on Cybernetics
- Dynamic scheduling for flexible job shop with new job insertions by deep reinforcement learning
- (2020) Shu Luo APPLIED SOFT COMPUTING
- The distributed assembly permutation flowshop scheduling problem with flexible assembly and batch delivery
- (2020) Shengluo Yang et al. INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH
- A multi-objective particle swarm optimisation for integrated configuration design and scheduling in reconfigurable manufacturing system
- (2020) Jianping Dou et al. INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH
- A control approach to scheduling flexibly configurable jobs with dynamic structural-logical constraints
- (2020) Dmitry Ivanov et al. IISE Transactions
- Adaptive scheduling for assembly job shop with uncertain assembly times based on dual Q-learning
- (2020) Haoxiang Wang et al. INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH
- Flexible job shop scheduling problem with reconfigurable machine tools: An improved differential evolution algorithm
- (2020) Mehdi Mahmoodjanloo et al. APPLIED SOFT COMPUTING
- A cooperative water wave optimization algorithm with reinforcement learning for the distributed assembly no-idle flowshop scheduling problem
- (2020) Fuqing Zhao et al. COMPUTERS & INDUSTRIAL ENGINEERING
- Smart Manufacturing Scheduling With Edge Computing Using Multiclass Deep Q Network
- (2019) Chun-Cheng Lin et al. IEEE Transactions on Industrial Informatics
- Reconfigurable manufacturing systems: Literature review and research trend
- (2018) Marco Bortolini et al. JOURNAL OF MANUFACTURING SYSTEMS
- The two stage assembly flow-shop scheduling problem with batching and delivery
- (2017) Hamed Kazemi et al. ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE
Discover Peeref hubs
Discuss science. Find collaborators. Network.
Join a conversationAsk a Question. Answer a Question.
Quickly pose questions to the entire community. Debate answers and get clarity on the most important issues facing researchers.
Get Started