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Data augmentation and data mining towards microstructure and property relationship for composites

Ziyan Guo (School of Science, Harbin Institute of Technology, Shenzhen, China)
Xuhao Liu (School of Science, Harbin Institute of Technology, Shenzhen, China)
Zehua Pan (School of Science, Harbin Institute of Technology, Shenzhen, China)
Yexin Zhou (School of Science, Harbin Institute of Technology, Shenzhen, China)
Zheng Zhong (School of Science, Harbin Institute of Technology, Shenzhen, China)
Zilin Yan (School of Science, Harbin Institute of Technology, Shenzhen, China)

Engineering Computations

ISSN: 0264-4401

Article publication date: 9 August 2023

Issue publication date: 12 October 2023

200

Abstract

Purpose

In recent years, the convolutional neural network (CNN) based deep learning approach has succeeded in data-mining the relationship between microstructures and macroscopic properties of materials. However, such CNN models usually rely heavily on a large set of labeled images to ensure the accuracy and generalization ability of the predictive models. Unfortunately, in many fields, acquiring image data is expensive and inconvenient. This study aims to propose a data augmentation technique to enhance the performance of the CNN models for linking microstructural images to the macroscopic properties of composites.

Design/methodology/approach

Microstructures of composites are synthesized using discrete element simulations and Potts kinetic Monte Carlo simulations. Macroscopic properties such as the elastic modulus, Poisson's ratio, shear modulus, coefficient of thermal expansion, and triple-phase boundary length density are extracted on representative volume elements. The CNN model is trained using the 3D microstructural images as inputs and corresponding macroscopic properties as the labels. The comparison of the predictive performance of the CNN models with and without data augmentation treatment are compared.

Findings

The comparison between the prediction performance of CNN models with and without data augmentation showed that the former reduced the weighted mean absolute percentage error (WMAPE) for the prediction from 5.1627% to 1.7014%. This significant reduction signifies that the proposed data augmentation method can effectively enhance the generalization ability and robustness of CNN models.

Originality/value

This study demonstrates that data augmentation is beneficial for solving the problems of model overfitting, data scarcity, and sample imbalance for CNN-based deep learning tasks at a low cost. By developing more and advanced data augmentation techniques, deep learning accelerated homogenization will boost the multi-scale computational mechanics and materials.

Keywords

Acknowledgements

This work was supported by the National Natural Science Foundation of China (Nos. 12172104, 11932005, 52102226), the Talent Recruitment Project of Guangdong (2021QN02L892), Shenzhen Science and Technology Innovation Commission (JCYJ20200109113439837), and the program of Innovation Personnel in Universities and Colleges in Guangdong, China (2021KQNCX272).

Citation

Guo, Z., Liu, X., Pan, Z., Zhou, Y., Zhong, Z. and Yan, Z. (2023), "Data augmentation and data mining towards microstructure and property relationship for composites", Engineering Computations, Vol. 40 No. 7/8, pp. 1617-1632. https://doi.org/10.1108/EC-10-2022-0639

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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