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Please use this identifier to cite or link to this item:
http://hdl.handle.net/10174/28832
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Title: | Reinforcement Learning for Dual-Resource Constrained Scheduling |
Authors: | Martins, M. Viegas, J. Coito, T. Firme, B. Sousa, J. Figueiredo, Joao Vieira, S. |
Editors: | 21st IFAC World Congress, Berlin |
Keywords: | Production planning and control Job and activity scheduling Intelligent manufacturing systems |
Issue Date: | 2020 |
Publisher: | 21st IFAC World Congress, Berlin |
Citation: | MARTINS, M., VIEGAS, J., COITO, T., FIRME, B., SOUSA, J., FIGUEIREDO, J., VIEIRA, S. [2020] “Reinforcement Learning for Dual-Resource Constrained Scheduling”, 21st IFAC World Congress, subm.nr. 3468, Berlin, Germany, July 2020. |
Abstract: | This paper proposes using reinforcement learning to solve scheduling problems where
two types of resources of limited availability must be allocated. The goal is to minimize the
makespan of a dual-resource constrained flexible job shop scheduling problem. Efficient practical
implementation is very valuable to industry, yet it is often only solved combining heuristics
and expert knowledge. A framework for training a reinforcement learning agent to schedule
diverse dual-resource constrained job shops is presented. Comparison with other state-of-theart approaches is done on both simpler and more complex instances that the ones used for
training. Results show the agent produces competitive solutions for small instances that can
outperform the implemented heuristic if given enough time. Other extensions are needed before
real-world deployment, such as deadlines and constraining resources to work shifts. |
URI: | http://hdl.handle.net/10174/28832 |
Type: | article |
Appears in Collections: | CEM - Artigos em Livros de Actas/Proceedings
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