Image Analysis Using Convolutional Neural Networks for Modeling 2D Fracture Propagation

Robyn L. Miller, B. Moore, H. Viswanathan, G. Srinivasan
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引用次数: 6

Abstract

The primary failure mechanism in brittle materials such as ceramics, granite and some metal alloys is through the presence of defects which result in crack formation and propagation under the application of load. We are interested in studying this process of crack propagation, interaction and coalescence, which degrades the strength of the specimen. Traditionally, engineering applications that study these materials employ finite element mesh based methods that require hundreds of hours of processing time on multi-core high performance clusters. We have developed a graph-based reduced order model that captures key geometric and topological features of the dynamic fracture propagation network. We report here the early stages of our study in which deep neural networks will be applied to dynamic directed weighted graphs capturing various metrics of crack-pair interaction strength with the aim of predicting crack lengths, dynamic crack growth/coalescence properties, distributions of these properties over the entire material through time, failure paths and time to failure. Our graph-based representations allow us to consider detailed topology in conjunction with metric geometry to gain insights into the dominant mechanisms that drive the physics in these systems.
基于卷积神经网络的二维裂缝扩展图像分析
脆性材料(如陶瓷、花岗岩和某些金属合金)的主要破坏机制是在载荷作用下缺陷的存在导致裂纹的形成和扩展。我们有兴趣研究这种裂纹扩展、相互作用和合并的过程,这降低了试样的强度。传统上,研究这些材料的工程应用采用基于有限元网格的方法,需要在多核高性能集群上花费数百小时的处理时间。我们开发了一种基于图的降阶模型,可以捕获动态裂缝扩展网络的关键几何和拓扑特征。我们在这里报告了我们研究的早期阶段,其中深度神经网络将应用于动态有向加权图,捕获裂纹对相互作用强度的各种度量,目的是预测裂纹长度、动态裂纹扩展/合并特性、这些特性在整个材料上随时间的分布、失效路径和失效时间。我们基于图形的表示允许我们将详细的拓扑结构与度量几何结合起来,以深入了解驱动这些系统中物理的主要机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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