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首页> 外文期刊>Journal of Computing in Civil Engineering >Estimating Compressive Strength of Concrete Using Deep Convolutional Neural Networks with Digital Microscope Images
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Estimating Compressive Strength of Concrete Using Deep Convolutional Neural Networks with Digital Microscope Images

机译:用数字显微镜图像使用深卷积神经网络估算混凝土的抗压强度

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摘要

Compressive strength is a critical indicator of concrete quality for ensuring the safety of existing concrete structures. As an alternative to existing nondestructive testing methods, image-based concrete compressive strength estimation models using three deep convolutional neural networks (DCNNs), namely AlexNet, GoogLeNet, and ResNet, were developed for this study. Images of the surfaces of specially produced specimens were obtained using a portable digital microscope, after which the samples were subjected to destructive tests to evaluate their compressive strength. The results were used to create a dataset linking the experimentally determined compressive strength with the image data recorded for each. The results of training, validation, and testing showed that DCNN models largely outperformed the recently proposed image processing-based ANN model. Overall, the ResNet-based model exhibited greater compressive strength estimation accuracy than either the AlexNet-or GoogLeNet-based models. These finding indicate that image data obtained using a portable digital microscope contain patterns that can be correlated with the concrete's compressive strength, enabling the proposed DCNN models to use these patterns to estimate compressive strength. The results of this study demonstrate the applicability of DCNN models using microstructure images as an auxiliary method for the nondestructive evaluation of concrete compressive strength. (C) 2019 American Society of Civil Engineers.
机译:抗压强度是确保现有混凝土结构安全的混凝土质量的关键指标。作为现有非破坏性测试方法的替代方案,为本研究开发了使用三个深卷积神经网络(DCNN),即AlexNet,Googlenet和Reset的图像的混凝土压缩强度估计模型。使用便携式数字显微镜获得专用产生的样品的表面,之后将样品进行破坏性测试以评估它们的抗压强度。结果用于创建将实验确定的压缩强度链接的数据集与每个记录的图像数据连接。培训,验证和测试的结果表明,DCNN模型在很大程度上超越了最近提出的基于图像处理的ANN模型。总的来说,基于Reset的模型表现出比基于AlexNet或Googlenet的模型更大的压缩强度估计精度。这些发现表明使用便携式数字显微镜获得的图像数据包含可以与混凝土的抗压强度相关的图案,使得所提出的DCNN模型能够使用这些模式来估计抗压强度。该研究的结果证明了DCNN模型使用微结构图像作为混凝土抗压强度非破坏性评估的辅助方法的适用性。 (c)2019年美国土木工程学会。

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