Classification of fracture characteristics and fracture mechanisms using deep learning and topography data

L. Schmies, B. Botsch, Q. Le, A. Yarysh, U. Sonntag, M. Hemmleb, D. Bettge
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引用次数: 3

Abstract

Abstract In failure analysis, micro-fractographic analysis of fracture surfaces is usually performed based on practical knowledge which is gained from available studies, own comparative tests, from the literature, as well as online databases. Based on comparisons with already existing images, fracture mechanisms are determined qualitatively. These images are mostly two-dimensional and obtained by light optical and scanning electron imaging techniques. So far, quantitative assessments have been limited to macroscopically determined percentages of fracture types or to the manual measurement of fatigue striations, for example. Recently, more and more approaches relying on computer algorithms have been taken, with algorithms capable of finding and classifying differently structured fracture characteristics. For the Industrial Collective Research (Industrielle Gemeinschaftsforschung, IGF) project “iFrakto” presented in this paper, electron-optical images are obtained, from which topographic information is calculated. This topographic information is analyzed together with the conventional 2D images. Analytical algorithms and deep learning are used to analyze and evaluate fracture characteristics and are linked to information from a fractography database. The most important aim is to provide software aiding in the application of fractography for failure analysis. This paper will present some first results of the project.
基于深度学习和地形数据的裂缝特征和断裂机制分类
在失效分析中,断口表面的微观断口分析通常是基于从现有研究、自己的比较试验、文献以及在线数据库中获得的实用知识进行的。基于与已有图像的比较,定性地确定了断裂机制。这些图像大多是二维的,通过光学和扫描电子成像技术获得。到目前为止,定量评估仅限于宏观确定的断裂类型百分比或手动测量疲劳条纹。近年来,越来越多的方法依赖于计算机算法,算法能够发现和分类不同结构的裂缝特征。对于工业集体研究(Industrielle Gemeinschaftsforschung, IGF)项目“iFrakto”,本文获得了电子光学图像,并从中计算地形信息。该地形信息与传统的二维图像一起进行分析。分析算法和深度学习用于分析和评估裂缝特征,并与断口数据库中的信息相关联。最重要的目标是提供帮助断口学应用于失效分析的软件。本文将介绍该项目的一些初步成果。
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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