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Data analytics approach for melt-pool geometries in metal additive manufacturing

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journal contribution
posted on 2019-10-16, 09:16 authored by Seulbi Lee, Jian Peng, Dongwon Shin, Yoon Suk Choi

Modern data analytics was employed to understand and predict physics-based melt-pool formation by fabricating Ni alloy single tracks using powder bed fusion. An extensive database of melt-pool geometries was created, including processing parameters and material characteristics as input features. Correlation analysis provided insight for relationships between process parameters and melt-pools, and enabled the development of meaningful machine learning models via the use of highly correlated features. We successfully demonstrated that data analytics facilitates understanding of the inherent physics and reliable prediction of melt-pool geometries. This approach can serve as a basis for the melt-pool control and process optimization.

Funding

This research was supported by the Industrial Strategic Technology Development Program [10077677] and the Technology Innovation Program [20000201] funded by the Ministry of Trade, Industry and Energy (MOTIE, Korea).

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