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Estimating cement compressive strength from microstructure images using convolutional neural network

机译:使用卷积神经网络从微结构图像估计水泥抗压强度

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The estimation of cement compressive strength (CCS) plays an important role in the quality inspection of cement. Physical experiment using cement compressive strength testing machine measures cement strength exactly, but is destructive for the cement specimen, and is unable to realize the estimation of one specimen repeatedly and continuously. Therefore, various computational intelligence methods are proposed to estimate cement strength, in order to achieve non-destructive and continuous estimation. In these methods, a large amount of experimental data and micro-components need to be measured and the error is also unavoidable. However, different gray values in the cement microstructure images represent different substances during the hydration and include the structure features of micro-components. Therefore, microstructure images reflect the relation between micro-components and CCS, and using these images avoid the measurement of micro-components. In addition, convolutional neural network (CNN) has recently shown a powerful advantage in classification and recognition of images. This study proposes a method to estimate CCS from microstructure images directly using CNN. The method extracts the abstract features of cement image is helpful in reducing measurement error of parameters and accomplishing non-destructive estimation. Furthermore, it provides a solution for simulated microstructure to estimate its strength. Experimental results show that the proposed method has favorable estimation accuracy.
机译:水泥抗压强度(CCS)的估计在水泥质量检查中起着重要作用。使用水泥抗压强度试验机进行的物理实验可以准确地测量水泥强度,但对水泥试样具有破坏性,无法反复,连续地实现对一个试样的估算。因此,提出了各种计算智能方法来估计水泥强度,以实现无损连续估计。在这些方法中,需要测量大量的实验数据和微量成分,误差也是不可避免的。但是,水泥微结构图像中不同的灰度值表示水合过程中的不同物质,并且包括微组分的结构特征。因此,微结构图像反映了微成分和CCS之间的关系,并且使用这些图像避免了微成分的测量。此外,卷积神经网络(CNN)最近在图像分类和识别方面显示出强大的优势。这项研究提出了一种直接使用CNN从微结构图像估计CCS的方法。该方法提取水泥图像的抽象特征,有助于减少参数的测量误差,实现无损估计。此外,它为模拟的微观结构提供了一种估算其强度的解决方案。实验结果表明,该方法具有良好的估计精度。

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