Recoater crashes during powder bed fusion of metal with laser beam: simulative prediction of interference and experimental evaluation of resulting part quality

被引:0
作者
Stefan Brenner
Martin Moser
Lea Strauß
Vesna Nedeljkovic-Groha
Günther Löwisch
机构
[1] Institute for Design and Production Engineering,Department of Mechanical Engineering
[2] Institute for Weapons Technology and Materials Science,undefined
[3] University of the Bundeswehr Munich,undefined
来源
Progress in Additive Manufacturing | 2023年 / 8卷
关键词
Powder bed fusion of metal with laser beam; AlSi10Mg; Recoater crash; Powder bed irregularity; Part quality;
D O I
暂无
中图分类号
学科分类号
摘要
In powder bed fusion of metal with laser beam (PBF-LB/M), repetitive melting and solidification of newly added layers lead to thermal stresses and distortions during part build-up. Particularly at critical component features such as unsupported overhangs, super-elevated edges pose a risk in terms of crashes with the recoating system during powder spreading. Damaged recoater lips lead to irregularities in the form of stripes in the powder bed. These local inhomogeneities cause lack-of-fusion porosity and geometric defects on the part surface. However, quantitative information on important quality aspects, such as tensile properties, dimensional accuracy, roughness, and hardness of parts printed under irregular powder bed conditions is scarce. Here, we show that samples from build jobs with recoater crashes maintain their elastic tensile properties and hardness, but lose elongation at break. Finite-element simulations of in-process distortions are used to design an artifact that intentionally damages the silicone rubber lip of the recoater but does not cause machine breakdown. The lowest mean yield strength of the damage-affected samples is 243 MPa, which is still within the material data sheet limits for AlSi10Mg. Therefore, recoater crashes do not necessarily result in rejects, but users must consider the likely presence of porosity.
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页码:759 / 768
页数:9
相关论文
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