Evaluation and optimisation of a slurry-based layer casting process in additive manufacturing using multiphase simulations and spatial reconstruction

被引:0
|
作者
P. Erhard
A. Seidel
J. Vogt
W. Volk
D. Günther
机构
[1] Fraunhofer IGCV,
[2] Technical University of Munich,undefined
[3] Fraunhofer ISC/ Center for High-Temperature Materials and Design,undefined
来源
Production Engineering | 2022年 / 16卷
关键词
Additive manufacturing; 3D printing; Ceramics; Slurry casting; CFD; Simulation; Multiphase; VOF; Spatial reconstruction;
D O I
暂无
中图分类号
学科分类号
摘要
Slurry-based 3D printing allows ceramic green bodies to be fabricated at high packing densities. In contrast to powder-based binder jetting, full densification of printed parts can be achieved in a subsequent sintering step as fine particles dispersed in a suspension are cast and compacted. Slurry-based 3D printing is thus expected to overcome the application limits of the powder-based alternative in metal casting in terms of unfavorable properties like high surface roughness, low density and low mechanical strength. To ensure stress-free drying and therefore high qualities of the compounds made in layers, it is crucial to fabricate single layers with a high level of homogeneity. This paper presents a CFD model based on the open-source simulation environment OpenFOAM to predict the resulting homogeneity of a cast slurry layer with defined parameter sets or coater geometries using the Volume-Of-Fluid method. Moreover, a novel method of spatial reconstruction is proposed to evaluate the surface quality of layers on a minimised computional demand. By comparing the results of the simulation with the real macroscopic behaviour determined in experiments, the approach is found to be a useful tool for suggesting suitable parameters and coater geometries for processing slurries. A precise reconstruction of the outline of the coating area with different process parameters and an approximate prediction of the effect on surface roughness was achieved.
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页码:43 / 54
页数:11
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