论文标题
金属添加剂制造过程中产生的孔隙率分布的深度学习发电机
Deep-Learned Generators of Porosity Distributions Produced During Metal Additive Manufacturing
论文作者
论文摘要
激光粉末床融合已成为金属添加剂制造(AM)的一种广泛采用的方法,因为它能够大量产生具有局部控制增加的复杂零件。但是,AM生产的零件可能会受到不良的孔隙度的影响,从而对印刷组件的性质产生负面影响。因此,控制孔隙率是创建有效零件的重要组成部分。对孔隙率分布的精确理解对于准确模拟潜在的疲劳和故障区域至关重要。先前关于生成合成多孔微观结构的研究已经成功地产生了具有高密度,各向同性孔隙度分布的部分,但通常不适用于具有较少,边界依赖性孔隙分布的情况。我们的工作通过提供一种通过将生成问题解构为本构零件来考虑这些约束的方法来弥合这一差距。引入了一个框架,将生成性对抗网络与基于Mallat散射转换的自相关方法相结合,以构建单个孔几何形状和表面粗糙度的新颖实现,然后随机地重构它们以形成多孔印刷部分的实现。将生成的零件与基于统计和尺寸指标的现有实验孔隙率分布进行比较,例如最近的邻居距离,孔隙体积,毛孔各向异性和基于散射转换的自动相关。
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.