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Particle-based simulation of powder application in additive manufacturing

机译:基于粉末的粉末模拟在增材制造中的应用

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摘要

The development of reliable strategies to optimize part production in additive manufacturing technologies hinges, to a large extent, on the quantitative understanding of the mechanical behavior of the powder particles during the application process. Since it is difficult to acquire this understanding based on experiments alone, a particle-based numerical tool for the simulation of powder application is required. In the present work, we develop such a numerical tool and apply it to investigate the characteristics of the powder layer deposited onto the part using a roller as the coating system. In our simulations, the complex geometric shapes of the powder particles are taken explicitly into account. Our results show that increasing the coating speed leads to an increase in the surface roughness of the powder bed, which is known to affect part quality. We also find that, surprisingly, powders with broader size distributions may lead to larger values of surface roughness as the smallest particles are most prone to form large agglomerates thus increasing the packing's porosity. Moreover, we find that the load on the part may vary over an order of magnitude during the coating process owing to the strong inhomogeneity of inter-particle forces in the granular packing. Our numerical tool can be used to assist - and partially replace - experimental investigations of the flowability and packing behavior of different powder systems as a function of material and process parameters. (C) 2015 Elsevier B.V. All rights reserved.
机译:在增材制造技术中优化零件生产的可靠策略的发展很大程度上取决于对喷涂过程中粉末颗粒机械性能的定量了解。由于仅凭实验很难获得这种理解,因此需要用于模拟粉末应用的基于粒子的数值工具。在目前的工作中,我们开发了一种数值工具,并将其用于研究使用辊作为涂层系统沉积在零件上的粉末层的特性。在我们的模拟中,明确考虑了粉末颗粒的复杂几何形状。我们的结果表明,增加涂覆速度会导致粉末床表面粗糙度的增加,这已知会影响零件质量。我们还惊奇地发现,具有更宽尺寸分布的粉末可能会导致较大的表面粗糙度值,因为最小的颗粒最容易形成大的团聚物,从而增加了填料的孔隙率。此外,我们发现,由于颗粒填充中颗粒间力的强烈不均匀性,在涂层过程中零件的负载可能会变化一个数量级。我们的数值工具可用于辅助(部分替代)根据材料和工艺参数对不同粉末系统的流动性和填充行为进行的实验研究。 (C)2015 Elsevier B.V.保留所有权利。

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