The paper introduces a machine learning framework to correlate in-situ two-color thermal images of the melt pool surface to the two-dimensional profile of the melt pool cross-section during laser powder bed fusion (L-PBF).
The key highlights are:
A hybrid CNN-Transformer architecture is employed, where a ResNet model embeds the spatial information from the thermal images into a latent vector, and a Transformer model correlates the sequence of embedded vectors to extract temporal information.
The framework is able to model the curvature of the subsurface melt pool structure, with improved performance in high energy density regimes compared to analytical melt pool models.
The performance of the model is evaluated through dimensional and geometric comparisons to the corresponding experimental melt pool observations. The model achieves high accuracy in predicting the melt pool area, depth, and contour shape.
Transfer learning from multiphysics simulation data to the experimental domain is explored to reduce the requirements for manual data collection.
The predicted melt pool contours are shown to accurately capture the overlap between successive melt tracks, demonstrating the potential for in-situ defect detection during multi-track printing.
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arxiv.org
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