Font-Clos Francesc, Zanchi Marco, Hiemer Stefan, Bonfanti Silvia, Guerra Roberto, Zaiser Michael, Zapperi Stefano
Center for Complexity and Biosystems, Department of Physics, University of Milan, via Celoria 16, 20133, Milan, Italy.
Institute of Materials Simulation, Department of Materials Science Science and Engineering, Friedrich-Alexander-University Erlangen-Nuremberg, Dr.-Mack-Str. 77, 90762, Fürth, Germany.
Nat Commun. 2022 May 20;13(1):2820. doi: 10.1038/s41467-022-30530-1.
Being able to predict the failure of materials based on structural information is a fundamental issue with enormous practical and industrial relevance for the monitoring of devices and components. Thanks to recent advances in deep learning, accurate failure predictions are becoming possible even for strongly disordered solids, but the sheer number of parameters used in the process renders a physical interpretation of the results impossible. Here we address this issue and use machine learning methods to predict the failure of simulated two dimensional silica glasses from their initial undeformed structure. We then exploit Gradient-weighted Class Activation Mapping (Grad-CAM) to build attention maps associated with the predictions, and we demonstrate that these maps are amenable to physical interpretation in terms of topological defects and local potential energies. We show that our predictions can be transferred to samples with different shape or size than those used in training, as well as to experimental images. Our strategy illustrates how artificial neural networks trained with numerical simulation results can provide interpretable predictions of the behavior of experimentally measured structures.
基于结构信息预测材料失效是一个具有重大实际和工业意义的基本问题,对设备和部件的监测至关重要。得益于深度学习的最新进展,即使对于强无序固体,准确的失效预测也变得可行,但该过程中使用的参数数量庞大,使得对结果进行物理解释变得不可能。在此,我们解决这一问题,并使用机器学习方法从模拟的二维二氧化硅玻璃的初始未变形结构预测其失效。然后,我们利用梯度加权类激活映射(Grad-CAM)构建与预测相关的注意力图,并证明这些图在拓扑缺陷和局部势能方面易于进行物理解释。我们表明,我们的预测可以转移到与训练中使用的形状或尺寸不同的样本,以及实验图像上。我们的策略说明了如何利用数值模拟结果训练的人工神经网络对实验测量结构的行为提供可解释的预测。