Super-resolving material microstructure image via deep learning for microstructure characterization and mechanical behavior analysis
Abstract The digitized format of microstructures, or digital microstructures, plays a crucial role in modern-day materials research. Unfortunately, the acquisition of digital microstructures through experimental means can be unsuccessful in delivering sufficient resolution that is necessary to captu...
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doaj-6bbe639d1e2f45d6a9cfc4f5f009486b2021-06-27T11:19:31ZengNature Publishing Groupnpj Computational Materials2057-39602021-06-017111110.1038/s41524-021-00568-8Super-resolving material microstructure image via deep learning for microstructure characterization and mechanical behavior analysisJaimyun Jung0Juwon Na1Hyung Keun Park2Jeong Min Park3Gyuwon Kim4Seungchul Lee5Hyoung Seop Kim6Department of Materials AI & Big-Data, Korea Institute of Materials Science (KIMS)Department of Mechanical Engineering, Pohang University of Science and Technology (POSTECH)Department of Materials Science and Engineering, Pohrepresent the average grainang University of Science and Technology (POSTECH)Department of Materials Science and Engineering, Pohrepresent the average grainang University of Science and Technology (POSTECH)Department of Mechanical Engineering, Pohang University of Science and Technology (POSTECH)Department of Mechanical Engineering, Pohang University of Science and Technology (POSTECH)Graduate Institute of Ferrous Technology, Pohang University of Science and Technology (POSTECH)Abstract The digitized format of microstructures, or digital microstructures, plays a crucial role in modern-day materials research. Unfortunately, the acquisition of digital microstructures through experimental means can be unsuccessful in delivering sufficient resolution that is necessary to capture all relevant geometric features of the microstructures. The resolution-sensitive microstructural features overlooked due to insufficient resolution may limit one’s ability to conduct a thorough microstructure characterization and material behavior analysis such as mechanical analysis based on numerical modeling. Here, a highly efficient super-resolution imaging based on deep learning is developed using a deep super-resolution residual network to super-resolved low-resolution (LR) microstructure data for microstructure characterization and finite element (FE) mechanical analysis. Microstructure characterization and FE model based mechanical analysis using the super-resolved microstructure data not only proved to be as accurate as those based on high-resolution (HR) data but also provided insights on local microstructural features such as grain boundary normal and local stress distribution, which can be only partially considered or entirely disregarded in LR data-based analysis.https://doi.org/10.1038/s41524-021-00568-8 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jaimyun Jung Juwon Na Hyung Keun Park Jeong Min Park Gyuwon Kim Seungchul Lee Hyoung Seop Kim |
spellingShingle |
Jaimyun Jung Juwon Na Hyung Keun Park Jeong Min Park Gyuwon Kim Seungchul Lee Hyoung Seop Kim Super-resolving material microstructure image via deep learning for microstructure characterization and mechanical behavior analysis npj Computational Materials |
author_facet |
Jaimyun Jung Juwon Na Hyung Keun Park Jeong Min Park Gyuwon Kim Seungchul Lee Hyoung Seop Kim |
author_sort |
Jaimyun Jung |
title |
Super-resolving material microstructure image via deep learning for microstructure characterization and mechanical behavior analysis |
title_short |
Super-resolving material microstructure image via deep learning for microstructure characterization and mechanical behavior analysis |
title_full |
Super-resolving material microstructure image via deep learning for microstructure characterization and mechanical behavior analysis |
title_fullStr |
Super-resolving material microstructure image via deep learning for microstructure characterization and mechanical behavior analysis |
title_full_unstemmed |
Super-resolving material microstructure image via deep learning for microstructure characterization and mechanical behavior analysis |
title_sort |
super-resolving material microstructure image via deep learning for microstructure characterization and mechanical behavior analysis |
publisher |
Nature Publishing Group |
series |
npj Computational Materials |
issn |
2057-3960 |
publishDate |
2021-06-01 |
description |
Abstract The digitized format of microstructures, or digital microstructures, plays a crucial role in modern-day materials research. Unfortunately, the acquisition of digital microstructures through experimental means can be unsuccessful in delivering sufficient resolution that is necessary to capture all relevant geometric features of the microstructures. The resolution-sensitive microstructural features overlooked due to insufficient resolution may limit one’s ability to conduct a thorough microstructure characterization and material behavior analysis such as mechanical analysis based on numerical modeling. Here, a highly efficient super-resolution imaging based on deep learning is developed using a deep super-resolution residual network to super-resolved low-resolution (LR) microstructure data for microstructure characterization and finite element (FE) mechanical analysis. Microstructure characterization and FE model based mechanical analysis using the super-resolved microstructure data not only proved to be as accurate as those based on high-resolution (HR) data but also provided insights on local microstructural features such as grain boundary normal and local stress distribution, which can be only partially considered or entirely disregarded in LR data-based analysis. |
url |
https://doi.org/10.1038/s41524-021-00568-8 |
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