Blarr Juliane, Klinder Steffen, Liebig Wilfried V, Inal Kaan, Kärger Luise, Weidenmann Kay A
Institute for Applied Materials - Materials Science and Engineering, Karlsruhe Institute of Technology (KIT), Kaiserstraße 12, 76131, Karlsruhe, Baden-Württemberg, Germany.
Fraunhofer-Institut für Chemische Technologie ICT, Joseph-von-Fraunhofer Straße 7, 76327, Pfinztal, Baden-Württemberg, Germany.
Sci Rep. 2024 Apr 26;14(1):9641. doi: 10.1038/s41598-024-59252-8.
Computed tomography images are of utmost importance when characterizing the heterogeneous and complex microstructure of discontinuously fiber reinforced polymers. However, the devices are expensive and the scans are time- and energy-intensive. Through recent advances in generative adversarial networks, the instantaneous generation of endless numbers of images that are representative of the input images and hold physical significance becomes possible. Hence, this work presents a deep convolutional generative adversarial network trained on approximately 30,000 input images from carbon fiber reinforced polyamide 6 computed tomography scans. The challenge lies in the low contrast between the two constituents caused by the close proximity of the density of polyamide 6 and carbon fibers as well as the small fiber diameter compared to the necessary resolution of the images. In addition, the stochastic, heterogeneous microstructure does not follow any logical or predictable rules exacerbating their generation. The quality of the images generated by the trained network of 256 pixel 256 pixel was investigated through the Fréchet inception distance and nearest neighbor considerations based on Euclidean distance and structural similarity index measure. Additional visual qualitative assessment ensured the realistic depiction of the complex mixed single fiber and fiber bundle structure alongside flow-related physically feasible positioning of the fibers in the polymer. The authors foresee additionally huge potential in creating three-dimensional representative volume elements typically used in composites homogenization.
在表征不连续纤维增强聚合物的非均质和复杂微观结构时,计算机断层扫描图像至关重要。然而,这些设备价格昂贵,扫描过程耗时且耗能。随着生成对抗网络的最新进展,即时生成无数代表输入图像并具有物理意义的图像成为可能。因此,这项工作提出了一种深度卷积生成对抗网络,该网络基于约30000张来自碳纤维增强聚酰胺6计算机断层扫描的输入图像进行训练。挑战在于,聚酰胺6和碳纤维的密度相近,且与所需图像分辨率相比纤维直径较小,导致两种成分之间对比度较低。此外,随机的非均质微观结构不遵循任何逻辑或可预测规则,这加剧了图像生成的难度。通过基于欧几里得距离和结构相似性指数度量的弗雷歇初始距离和最近邻考虑,研究了由训练后的256像素×256像素网络生成的图像质量。额外的视觉定性评估确保了对复杂的混合单纤维和纤维束结构进行逼真描绘,以及纤维在聚合物中与流动相关的物理可行定位。作者还预见到,在创建复合材料均匀化中常用的三维代表性体积单元方面具有巨大潜力。