2023
DOI: 10.1038/s41467-023-42319-x
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Material-agnostic machine learning approach enables high relative density in powder bed fusion products

Jaemin Wang,
Sang Guk Jeong,
Eun Seong Kim
et al.

Abstract: This study introduces a method that is applicable across various powder materials to predict process conditions that yield a product with a relative density greater than 98% by laser powder bed fusion. We develop an XGBoost model using a dataset comprising material properties of powder and process conditions, and its output, relative density, undergoes a transformation using a sigmoid function to increase accuracy. We deeply examine the relationships between input features and the target value using Shapley ad… Show more

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