Here, we report the dynamic fracture toughness as well as the cohesive parameters of a bicontinuously nanostructured copolymer, polyurea, under an extremely high crack-tip loading rate, from a deep-learning analysis of a dynamic big-data-generating experiment. We first invented a novel Dynamic Line-Image Shearing Interferometer (DL-ISI), which can generate the displacement-gradient - time profiles along a line on a sample's back surface projectively covering the crack initiation and growth process in a single plate impact experiment. Then, we proposed a convolutional neural network (CNN) based deep-learning framework that can inversely determine the accurate cohesive parameters from DL-ISI fringe images. Plate-impact experiments on a polyurea sample with a mid-plane crack have been performed, and the generated DL-ISI fringe image has been inpainted by a Conditional Generative Adversarial Networks (cGAN). For the first time, the dynamic cohesive parameters of polyurea have been successfully obtained by the pre-trained CNN architecture with the computational dataset, which is consistent with the correlation method and the linear fracture mechanics estimation. Apparent dynamic toughening is found in polyurea, where the cohesive strength is found to be nearly three times higher than the spall strength under the symmetric impact with the same impact speed. These experimental results fill the gap in the current understanding of copolymer's cooperative-failure strength under extreme local loading conditions near the crack tip. This experiment also demonstrates the advantages of big-data-generating experiments, which combine innovative high-throughput experimental techniques with state-of-the-art machine learning algorithms.
翻译:在这里,我们通过对动态大数据生成实验进行深层学习分析,报告动态断裂强度以及一个双向纳米结构共聚物(聚氨酯)的聚合物(聚氨酯)的聚合物(聚氨酯)的聚合物(聚氨酯)具有凝聚力。我们首先从动态大数据生成实验的深层学习分析中,发明了一个新的动态线-图像剪切干涉仪(DL-ISI),它可以在一个样本的后表层上生成离位-梯度-时间分布图,覆盖一个单一板块撞击实验中的裂痕启动和增长过程。然后,我们建议建立一个基于极深层学习率框架(CNN)的共振动神经网络(CNN),它可以反向地确定DL-ISI边缘图像生成的准确一致性参数。我们首先发明了一个具有中平板裂裂裂缝的多极样本样本样本实验, 生成的DL- ISI 边际图象图像被一个Contial General Aversarial 网络(cal) 的精度。第一次, 以精密的超高度神经化神经化的神经结构模型模型模型模型获得了化模型获得了成功, 和直径直径分析中, 的直径直流的直径直径直径直系的直流数据也以直立的直立的直立的直系的直系的直系的直径直系的直系数据。