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  4. Reinforcement learning in real-time geometry assurance
 
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2018
Journal Article
Title

Reinforcement learning in real-time geometry assurance

Abstract
To improve the assembly quality during production, expert systems are often used. These experts typically use a system model as a basis for identifying improvements. However, since a model uses approximate dynamics or imperfect parameters, the expert advice is bound to be biased. This paper presents a reinforcement learning agent that can identify and limit systematic errors of an expert systems used for geometry assurance. By observing the resulting assembly quality over time, and understanding how different decisions affect the quality, the agent learns when and how to override the biased advice from the expert software.
Author(s)
Jorge, E.
Brynte, L.
Cronrath, C.
Wigström, O.
Bengtsson, K.
Gustavsson, E.
Lennartson, B.
Jirstrand, M.
Journal
Procedia CIRP  
Conference
Conference on Manufacturing Systems (CMS) 2018  
Open Access
DOI
10.1016/j.procir.2018.03.168
Additional link
Full text
Language
English
FCC  
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