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Department of Electrical Engineering and Computer Science
CSI(Cyber-Physical Systems Integration) Lab
1. Journal Articles
Learning-enabled flexible job-shop scheduling for scalable smart manufacturing
Moon, Sihoon
;
Lee, Sanghoon
;
Park, Kyung-Joon
Department of Electrical Engineering and Computer Science
CSI(Cyber-Physical Systems Integration) Lab
1. Journal Articles
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Title
Learning-enabled flexible job-shop scheduling for scalable smart manufacturing
Issued Date
2024-12
Citation
Moon, Sihoon. (2024-12). Learning-enabled flexible job-shop scheduling for scalable smart manufacturing. Journal of Manufacturing Systems, 77, 356–367. doi: 10.1016/j.jmsy.2024.09.011
Type
Article
Author Keywords
Flexible job-shop scheduling
;
Transportation constraints
;
Reinforcement learning
;
Scale generalization
;
Smart manufacturing systems
ISSN
0278-6125
Abstract
In smart manufacturing systems (SMSs), flexible job-shop scheduling with transportation constraints (FJSPT) is essential to optimize solutions for maximizing productivity, considering production flexibility based on automated guided vehicles (AGVs). Recent developments in deep reinforcement learning (DRL)-based methods for FJSPT have encountered a scale generalization challenge. We propose the Heterogeneous Graph Scheduler (HGS), a novel DRL-based method that provides near-optimal solutions regardless of the scale of operations, machines, and vehicles. HGS modifies the disjunctive graph to model FJSPT as a heterogeneous graph of operations, machines, and vehicles, dynamically representing processes and transportation. It involves a structure-aware heterogeneous graph encoder to enhance scale generalization, using multi-head attention to aggregate messages locally and integrate them globally. A three-stage decoder for end-to-end decision-making outputs the scheduling solution by selecting nodes with the highest likelihood of minimizing makespan. Our evaluation with benchmark datasets shows HGS outperforms traditional dispatching rules, metaheuristics, and existing DRL-based methods, demonstrating superior makespan performance and scale generalization. Moreover, as the scale increases, HGS achieves the best solutions across all instances. © 2024 The Society of Manufacturing Engineers
URI
http://hdl.handle.net/20.500.11750/57205
DOI
10.1016/j.jmsy.2024.09.011
Publisher
Elsevier
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