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Computer vision-based damage and stress state estimation for reinforced concrete and steel fiber-reinforced concrete panels

机译:基于计算机视觉钢筋混凝土钢纤维混凝土板的损伤与应力状态估计

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摘要

This article presents a computer vision damage assessment approach that relates surface crack patterns to damage levels and stress state characteristics in conventionally reinforced concrete and steel fiber–reinforced concrete panels. Previous studies have focused on crack patterns for specific structural element types such as beams and columns, but this study considers stress states in a more general framework. In particular, image data from previously published panel test specimens subjected to nominally constant stress have been collected to develop image-based estimation models capable of quantifying damage levels and stress components for full-panel crack patterns, and to investigate subimage sampling strategies to approximate full-panel results using partial-panel images. The objective here is to show that the analog of representative volume elements can be extended to image-based analysis contexts. The image datasets used in this article have been obtained from five different published studies, which provided 189 crack pattern images captured from 33 concrete and steel fiber–reinforced concrete shear panel specimens. Given the limited size of the dataset, a feature-based computer vision approach has been used, with various geometric attributes of surface crack patterns used to train the estimation models. Within the limits of the data available, the preliminary results presented here indicate that quantifiable correlations exist such that stress state and damage level estimation models are valid across a range of loadings (i.e. reverse cyclic and monotonic) and materials (reinforced concrete and steel fiber–reinforced concrete), and that with appropriate sampling techniques, it is possible for subsampled images to yield estimations similar to full-panel results. These localized correlations between crack patterns and stress states potentially could be used in broader contexts for damage assessment of more general reinforced concrete and steel fiber–reinforced concrete members.
机译:本文介绍了一种计算机视觉损伤评估方法,将表面裂纹图案与常规钢筋混凝土和钢纤维钢筋混凝土板中的损坏水平和应力状态特性相关。以前的研究专注于特定结构元素类型的裂纹模式,例如梁和列,但本研究考虑了更一般的框架中的应力状态。特别地,已经收集来自先前发布的面板测试样本的图像数据,以开发能够量化用于全面板裂纹模式的损伤水平和应力分量的基于图像的估计模型,并调查近似充分的子像采样策略-Panel使用部分面板图像的结果。这里的目的是表示代表卷元素的模拟可以扩展到基于图像的分析上下文。本文中使用的图像数据集已从五种不同公开的研究中获得,该研究提供了从33个混凝土和钢纤维钢筋混凝土剪切面板标本捕获的189个裂缝图案图像。鉴于数据集的有限尺寸,已经使用了一种基于特征的计算机视觉方法,具有用于训练估计模型的表面裂纹图案的各种几何属性。在可用数据的限制内,本文提出的初步结果表明,存在量化的相关性,使得应力状态和损坏电平估计模型在一系列载荷(即逆转循环和单调)和材料(钢筋混凝土和钢纤维)上有效钢筋混凝土),并且采用适当的采样技术,可以对数据采样图像产生类似于全面板结果的估计。这些裂纹图案和应力状态之间的局部相关性可能用于更广泛的背景下用于更普通钢筋混凝土和钢纤维钢筋混凝土构件的损伤评估。

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