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Semantic segmentation of the micro-structure of strain-hardening cement-based composites (SHCC) by applying deep learning on micro-computed tomography scans

机译:通过对微计算断层扫描的深度学习进行菌株硬化水泥基复合材料(SHCC)微结构的语义分割

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摘要

Considering the multi-phase constitutive nature of strain-hardening cement-based composites (SHCC) and the decided influence of their micromechanics on overall material behavior, appropriate analytical methods are necessary for the representation of their microstructure and micro-kinematics. In this respect, micro-computed tomography (microCT) is an efficient, nondestructive technique, which can couple experimental testing with scale-linking numerical simulations. However, for a detailed analysis of microstructure, appropriate segmentation techniques must be applied which can accurately differentiate and represent the individual material phases and other features of interest. Given the small scale of analysis, the typical resolution of common computed tomography, and the small differences among the material constituents in terms of density and x ray absorption as well, the application of common segmentation techniques to SHCC is ineffective. In this work, a Deep Learning technique was applied to the microCT images of two different SHCC. The Deep Learning network parameters were analyzed and optimized on a high-strength SHCC and applied to the automatic segmentation of a typical normal-strength SHCC. The results obtained are highly promising and quantitatively in accordance with the composition of the samples analyzed. It was possible to segment the polymer fibers and the air voids from the cementitious matrices accurately, while the accuracy of the quartz-sand particles' segmentation imposed additional challenges and proved dependent on the properties of the surrounding hydrated phase.
机译:考虑到应变硬化水泥基复合材料(SHCC)的多相组成型性质及其微观机械对整体材料行为的判定影响,适当的分析方法对于其微观结构和微观运动学的表示是必需的。在这方面,微计算机断层摄影(MicroCT)是一种有效的非破坏性技术,可以通过比例连接数值模拟来耦合实验测试。然而,对于微观结构的详细分析,必须应用适当的分段技术,其可以准确地区分并代表个人材料阶段和其他感兴趣的特征。鉴于分析规模小,常用计算断层扫描的典型分辨率以及材料成分在密度和X射线吸收方面的小差异,也是常见的分段技术对SHCC的应用无效。在这项工作中,将深度学习技术应用于两个不同SHCC的MicroCT图像。在高强度SHCC上分析并优化了深度学习网络参数,并应用于典型正常强度SHCC的自动分割。根据分析的样品的组成,所获得的结果是高度承诺和定量的。可以精确地将聚合物纤维和空隙分段,而石英 - 砂颗粒分割的精度施加了额外的挑战并取决于周围水合相的性质。

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