Thomas Akhil, Durmaz Ali Riza, Straub Thomas, Eberl Chris
Fraunhofer Institute for Mechanics of Materials, 79108 Freiburg im Breisgau, Germany.
Department of Microsystems Engineering, University of Freiburg, 79110 Freiburg, Germany.
Materials (Basel). 2020 Jul 24;13(15):3298. doi: 10.3390/ma13153298.
The digitization of materials is the prerequisite for accelerating product development. However, technologically, this is only beneficial when reliability is maintained. This requires comprehension of the microstructure-driven fatigue damage mechanisms across scales. A substantial fraction of the lifetime for high performance materials is attributed to surface damage accumulation at the microstructural scale (e.g., extrusions and micro crack formation). Although, its modeling is impeded by a lack of comprehensive understanding of the related mechanisms. This makes statistical validation at the same scale by micromechanical experimentation a fundamental requirement. Hence, a large quantity of processed experimental data, which can only be acquired by automated experiments and data analyses, is crucial. Surface damage evolution is often accessed by imaging and subsequent image post-processing. In this work, we evaluated deep learning (DL) methodologies for semantic segmentation and different image processing approaches for quantitative slip trace characterization. Due to limited annotated data, a U-Net architecture was utilized. Three data sets of damage locations observed in scanning electron microscope (SEM) images of ferritic steel, martensitic steel and copper specimens were prepared. In order to allow the developed models to cope with material-specific damage morphology and imaging-induced variance, a customized augmentation pipeline for the input images was developed. Material domain generalizability of ferritic steel and conjunct material trained models were tested successfully. Multiple image processing routines to detect slip trace orientation (STO) from the DL segmented extrusion areas were implemented and assessed. In conclusion, generalization to multiple materials has been achieved for the DL methodology, suggesting that extending it well beyond fatigue damage is feasible.
材料的数字化是加速产品开发的前提条件。然而,从技术角度来看,只有在保持可靠性的情况下这才有益。这需要理解跨尺度的微观结构驱动的疲劳损伤机制。高性能材料的很大一部分寿命归因于微观结构尺度上的表面损伤积累(例如,挤出和微裂纹形成)。尽管如此,由于对相关机制缺乏全面了解,其建模受到阻碍。这使得通过微观力学实验在相同尺度上进行统计验证成为一项基本要求。因此,大量只能通过自动化实验和数据分析获取的处理后实验数据至关重要。表面损伤演变通常通过成像和后续的图像后处理来获取。在这项工作中,我们评估了用于语义分割的深度学习(DL)方法以及用于定量滑移痕迹表征的不同图像处理方法。由于标注数据有限,采用了U-Net架构。制备了铁素体钢、马氏体钢和铜试样的扫描电子显微镜(SEM)图像中观察到的损伤位置的三个数据集。为了使开发的模型能够应对特定材料的损伤形态和成像引起的差异,开发了用于输入图像的定制增强管道。成功测试了铁素体钢和联合材料训练模型的材料领域通用性。实施并评估了从DL分割的挤出区域检测滑移痕迹方向(STO)的多个图像处理程序。总之,DL方法已实现对多种材料的通用性,这表明将其扩展到远远超出疲劳损伤的范围是可行的。