German Aerospace Center (DLR), Institute of Materials Research, Linder Hoehe, 51147, Cologne, Germany.
Metallic Structures and Materials Systems for Aerospace Engineering, RWTH Aachen University, 52062, Aachen, Germany.
Sci Rep. 2022 Jun 9;12(1):9513. doi: 10.1038/s41598-022-13275-1.
Data-driven models based on deep learning have led to tremendous breakthroughs in classical computer vision tasks and have recently made their way into natural sciences. However, the absence of domain knowledge in their inherent design significantly hinders the understanding and acceptance of these models. Nevertheless, explainability is crucial to justify the use of deep learning tools in safety-relevant applications such as aircraft component design, service and inspection. In this work, we train convolutional neural networks for crack tip detection in fatigue crack growth experiments using full-field displacement data obtained by digital image correlation. For this, we introduce the novel architecture ParallelNets-a network which combines segmentation and regression of the crack tip coordinates-and compare it with a classical U-Net-based architecture. Aiming for explainability, we use the Grad-CAM interpretability method to visualize the neural attention of several models. Attention heatmaps show that ParallelNets is able to focus on physically relevant areas like the crack tip field, which explains its superior performance in terms of accuracy, robustness, and stability.
基于深度学习的数据驱动模型在经典计算机视觉任务中取得了巨大突破,最近已进入自然科学领域。然而,其内在设计中缺乏领域知识极大地阻碍了人们对这些模型的理解和接受。尽管如此,可解释性对于证明深度学习工具在飞机部件设计、服务和检查等与安全相关的应用中的使用是至关重要的。在这项工作中,我们使用数字图像相关法获得的全场位移数据,针对疲劳裂纹扩展实验中的裂纹尖端检测来训练卷积神经网络。为此,我们引入了一种新的架构——ParallelNets,这是一种结合了裂纹尖端坐标分割和回归的网络,并将其与经典的基于 U-Net 的架构进行了比较。为了实现可解释性,我们使用 Grad-CAM 可解释性方法来可视化几个模型的神经注意力。注意力热图表明,ParallelNets 能够专注于物理上相关的区域,如裂纹尖端场,这解释了它在准确性、鲁棒性和稳定性方面的优越性能。