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  4. Enhancing Sample Efficiency for Temperature Control in DED with Reinforcement Learning and MOOSE Framework
 
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2023
Conference Paper
Title

Enhancing Sample Efficiency for Temperature Control in DED with Reinforcement Learning and MOOSE Framework

Abstract
Directed Energy Deposition (DED) is crucial in additive manufacturing for various industries like aerospace, automotive, and biomedical. Precise temperature control is essential due to high-power lasers and dynamic environmental changes. Employing Reinforcement Learning (RL) can help with temperature control, but challenges arise from standardization and sample efficiency. In this study, a model-based Reinforcement Learning (MBRL) approach is used to train a DED model, improving control and efficiency. Computational models evaluate melt pool geometry and temporal characteristics during the process. The study employs the Allen-Cahn phase field (AC-PF) model using the Finite Element Method (FEM) with the Multi-physics Object-Oriented Simulation Environment (MOOSE). MBRL, specifically Dyna-Q+, outperforms traditional Q-learning, requiring fewer samples. Insights from this research aid in advancing RL techniques for laser metal additive manufacturing.
Author(s)
Sousa, Joao
INEGI / INESC TEC
Darabi, Roya
Institute of Science and Innovation in Mechanical and Industrial Engineering, INEGI
Sousa, Armando
University of Porto  
Reis, Luís
University of Porto  
Brückner, Frank  
Fraunhofer-Institut für Werkstoff- und Strahltechnik IWS  
Reis, Ana Isabel
INEGI  
Sá, José César de
INEGI  
Mainwork
ASME International Mechanical Engineering Congress and Exposition, IMECE 2023. Proceedings. Vol.3: Advanced Manufacturing  
Conference
International Mechanical Engineering Congress and Exposition 2023  
DOI
10.1115/IMECE2023-113629
Language
English
Fraunhofer-Institut für Werkstoff- und Strahltechnik IWS  
Keyword(s)
  • MOOSE

  • DED

  • reinforcement learning

  • model-based

  • Q-learning

  • Dyna-Q

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