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Prediction of Electrical Conductivity of Fiber-Reinforced Cement-Based Composites by Deep Neural Networks

机译:深度神经网络预测纤维增强水泥基复合材料的电导率

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摘要

This study presents a deep-learning method for characterizing carbon fiber (CF) distribution and predicting electrical conductivity of CF-reinforced cement-based composites (CFRCs) using scanning electron microscopy (SEM) images. First, SEM images were collected from CFRC specimens with different CF contents. Second, a fully convolutional network (FCN) was utilized to extract carbon fiber components from the SEM images. Then, and were used to evaluate the distribution of CFs. and reflected the real CF distribution in an SEM observation area and a specimen, respectively. Finally, a radial basis neural network was used to predict the electrical conductivity of the CFRC specimens, and its weights ( ) were used to evaluate the effects of CF distribution on electrical conductivity. The results showed that the FCN could accurately segment CFs in SEM images with different magnifications. could accurately reflect the morphological distribution of CFs in CFRC. The electrical conductivity prediction errors were less than 6.58%. In addition, could quantitatively evaluate the effect of CF distribution on CFRC conductivity.
机译:这项研究提出了一种深度学习方法,用于表征碳纤维(CF)分布并使用扫描电子显微镜(SEM)图像预测CF增强水泥基复合材料(CFRC)的电导率。首先,从具有不同CF含量的CFRC标本中收集SEM图像。其次,利用全卷积网络(FCN)从SEM图像中提取碳纤维成分。然后,用于评估CF的分布。并分别反映了SEM观察区域和样本中的实际CF分布。最后,使用径向基神经网络预测CFRC标本的电导率,并使用其权重()评估CF分布对电导率的影响。结果表明,FCN可以准确地分割不同放大倍数的SEM图像中的CF。可以准确反映CFRC中CF的形态分布。电导率预测误差小于6.58%。此外,可以定量评估CF分布对CFRC电导率的影响。

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