Physics-Informed Machine Learning for Smart Additive Manufacturing
Sharma, Rahul, Raissi, Maziar, Guo, Y. B.
–arXiv.org Artificial Intelligence
Compared to physics-based computational manufacturing, data-driven models such as machine learning (ML) are alternative approaches to achieve smart manufacturing. However, the data-driven ML's "black box" nature has presented a challenge to interpreting its outcomes. On the other hand, governing physical laws are not effectively utilized to develop data-efficient ML algorithms. To leverage the advantages of ML and physical laws of advanced manufacturing, this paper focuses on the development of a physics-informed machine learning (PIML) model by integrating neural networks and physical laws to improve model accuracy, transparency, and generalization with case studies in laser metal deposition (LMD).
arXiv.org Artificial Intelligence
Jul-15-2024
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