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Deep-learned generators of porosity distributions produced during metal Additive Manufacturing

机译:金属增材制造过程中产生的孔隙率分布的深度学习生成器

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摘要

Laser Powder Bed Fusion has become a widely adopted method for metal Additive Manufacturing (AM) due to its ability to mass produce complex parts with increased local control. However, AM produced parts can be subject to undesirable porosity, negatively influencing the properties of printed components. Thus, controlling porosity is integral for creating effective parts. A precise understanding of the porosity distribution is crucial for accurately simulating potential fatigue and failure zones. Previous research on generating synthetic porous microstructures have succeeded in generating parts with high density, isotropic porosity distributions but are often inapplicable to cases with sparser, boundary-dependent pore distributions. Our work bridges this gap by providing a method that considers these constraints by deconstructing the generation problem into its constitutive parts. A framework is introduced that combines Generative Adversarial Networks with Mallat Scattering Transform-based autocorrelation methods to construct novel realizations of the individual pore geometries and surface roughness, then stochastically reconstruct them to form realizations of a porous printed part. The generated parts are compared to the existing experimental porosity distributions based on statistical and dimensional metrics, such as nearest neighbor distances, pore volumes, pore anisotropies and scattering transform based auto-correlations.
机译:激光粉末床融合已成为广泛方法采用金属添加剂制造(AM)由于其大规模生产复杂的能力与局部控制增加部分。生产部分可以不受欢迎的孔隙度、负面影响的属性打印组件。是积分来创建有效的部分。孔隙度的准确理解分布是准确模拟的关键潜在的疲劳和故障区域。研究生成合成多孔微观结构已经成功地生成部分与高密度各向同性孔隙度分布但往往不适用的情况下稀疏的,boundary-dependent孔隙分布。提供一个方法,认为这些约束通过解构的一代问题转化为其组成部分。介绍了结合生成对抗网络Mallat散射Transform-based自相关的方法个人的构造新颖的实现孔隙几何形状和表面粗糙度随机重组形式多孔印刷部分的实现。相比现有的生成部分实验基于孔隙度分布统计和维指标,如最近邻距离,孔隙体积、孔隙基于各向异性散射变换自相关。

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