Q-learning-based route-guidance and vehicle assignment for OHT systems in semiconductor fabs

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We present a reinforcement learning-based algorithm for route guidance and vehicle assignment of an overhead hoist transport system, a typical form of automated material handling system in semiconductor fabrication facilities (fabs). As the size of the fab increases, so does the number of vehicles required to operate in the fab. The algorithm most commonly used in industry, a mathematical optimization-based algorithm that constantly seeks the shortest routes, has been proven ineffective in dealing with fabs operating around 1,000 vehicles or more. In this paper, we introduce Q-learning, a reinforcement learning-based algorithm for route guidance and vehicle assignment. Q-learning dynamically reroutes the vehicles based on the congestion and traffic conditions. It also assigns vehicles to tasks based on the overall congestion of the track. We show that the proposed algorithm is considerably more effective than the existing algorithm in an actual fab-scale experiment. Moreover, we illustrate that the Q-learning-based algorithm is more effective in designing the track layouts.
Publisher
Institute of Electrical and Electronics Engineers Inc.
Issue Date
2020-08
Language
English
Citation

31st Annual SEMI Advanced Semiconductor Manufacturing Conference, ASMC 2020

ISSN
1078-8743
DOI
10.1109/ASMC49169.2020.9185357
URI
http://hdl.handle.net/10203/288314
Appears in Collection
IE-Conference Papers(학술회의논문)
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