Correlation between surface texture and internal defects in laser powder-bed fusion additive manufacturing

被引:0
作者
Makiko Yonehara
Chika Kato
Toshi-Taka Ikeshoji
Koki Takeshita
Hideki Kyogoku
机构
[1] Kindai University,Fundamental Technology for Next Generation Research Institute
[2] Kindai University Hiroshima Branch,Technology Research Association for Future Additive Manufacturing
[3] Nikon Corporation,undefined
来源
Scientific Reports | / 11卷
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摘要
The availability of an in-situ monitoring and feedback control system during the implementation of metal additive manufacturing technology ensures that high-quality finished parts are manufactured. This study aims to investigate the correlation between the surface texture and internal defects or density of laser-beam powder-bed fusion (LB-PBF) parts. In this study, 120 cubic specimens were fabricated via application of the LB-PBF process to the IN 718 Ni alloy powder. The density and 35 areal surface-texture parameters of manufactured specimens were determined based on the ISO 25,178–2 standard. Using a statistical method, a strong correlation was observed between the areal surface-texture parameters and density or internal defects within specimens. In particular, the areal surface-texture parameters of reduced dale height, core height, root-mean-square height, and root-mean-square gradient demonstrate a strong correlation with specimen density. Therefore, in-situ monitoring of these areal surface-texture parameters can facilitate their use as control variables in the feedback system.
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