Traditional machine learning and deep learning for predicting melt-pool cross-sectional morphology of laser powder bed fusion additive manufacturing with thermographic monitoring
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DOI: 10.1007/s10845-024-02356-9
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Keywords
Laser powder bed fusion; Machine learning; Deep learning; Near-infrared imaging; Melt pool; Additive manufacturing;All these keywords.
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