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Predicting the effective mechanical property of heterogeneous materials by image based modeling and deep learning

机译:通过基于图像的建模和深度学习预测异质材料的有效力学性能

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In contrast to the composition uniformity of homogeneous materials, heterogeneous materials are normally composed of two or more distinctive constituents. It is usually recognized that the effective material property of a heterogeneous material is related to the mechanical property and the distribution pattern of each forming constituent. However, to establish an explicit relationship between the macroscale mechanical property and the microstructure appears to be complicated. On the other hand, machine learning methods are broadly employed to excavate inherent rules and correlations based on a significant amount of data samples. Specifically, deep neural networks are established to deal with situations where input-output mappings are extensively complex. In this paper, a method is proposed to establish the implicit mapping between the effective mechanical property and the mesoscale structure of heterogeneous materials. Shale is employed in this paper as an example to illustrate the method. At the mesoscale, a shale sample is a complex heterogeneous composite that consists of multiple mineral constituents. The mechanical properties of each mineral constituent vary significantly, and mineral constituents are distributed in an utterly random manner within shale samples. Large quantities of shale samples are generated based on mesoscale scanning electron microscopy images using a stochastic reconstruction algorithm. Image processing techniques are employed to transform the shale sample images to finite element models. Finite element analysis is utilized to evaluate the effective mechanical properties of the shale samples. A convolutional neural network is trained based on the images of stochastic shale samples and their effective moduli. The trained network is validated to be able to predict the effective moduli of real shale samples accurately and efficiently. Not limited to shale, the proposed method can be further extended to predict effective mechanical properties of other heterogeneous materials. (C) 2019 Elsevier B.V. All rights reserved.
机译:与均质材料的组成均匀性相反,异质材料通常由两个或多个不同的成分组成。通常认识到,异质材料的有效材料性能与每种成型成分的机械性能和分布方式有关。但是,要在宏观力学性能和微观结构之间建立明确的关系似乎很复杂。另一方面,基于大量数据样本,广泛采用了机器学习方法来挖掘固有规则和相关性。特别是,建立了深度神经网络来处理输入输出映射非常复杂的情况。本文提出了一种在异质材料的有效力学性能和中尺度结构之间建立隐式映射的方法。本文以页岩为例来说明该方法。在中尺度上,页岩样品是由多种矿物成分组成的复杂的非均质复合物。每种矿物成分的机械性能差异很大,并且矿物成分以完全随机的方式分布在页岩样品中。基于中尺度扫描电子显微镜图像,使用随机重建算法生成了大量的页岩样品。采用图像处理技术将页岩样品图像转换为有限元模型。利用有限元分析来评估页岩样品的有效机械性能。基于随机页岩样本的图像及其有效模量来训练卷积神经网络。经过培训的网络经过验证,能够准确,高效地预测实际页岩样品的有效模量。不限于页岩,所提出的方法可以进一步扩展以预测其他非均质材料的有效机械性能。 (C)2019 Elsevier B.V.保留所有权利。

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