Estimating the phase volume fraction of multi-phase steel via unsupervised deep learning

Abstract Advanced high strength steel (AHSS) is a steel of multi-phase microstructure that is processed under several conditions to meet the current high-performance requirements from the industry. Deep neural network (DNN) has emerged as a promising tool in materials science for the task of estimat...

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Main Authors: Sung Wook Kim, Seong-Hoon Kang, Se-Jong Kim, Seungchul Lee
Format: Article
Language:English
Published: Nature Publishing Group 2021-03-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-85407-y
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spelling doaj-dcbc6a1fd009497aa6d565446bece42c2021-03-21T12:33:06ZengNature Publishing GroupScientific Reports2045-23222021-03-0111111410.1038/s41598-021-85407-yEstimating the phase volume fraction of multi-phase steel via unsupervised deep learningSung Wook Kim0Seong-Hoon Kang1Se-Jong Kim2Seungchul Lee3Department of Mechanical Engineering, Pohang University of Science and TechnologyKorea Institute of Materials ScienceKorea Institute of Materials ScienceDepartment of Mechanical Engineering, Pohang University of Science and TechnologyAbstract Advanced high strength steel (AHSS) is a steel of multi-phase microstructure that is processed under several conditions to meet the current high-performance requirements from the industry. Deep neural network (DNN) has emerged as a promising tool in materials science for the task of estimating the phase volume fraction of these steels. Despite its advantages, one of its major drawbacks is its requirement of a sufficient amount of training data with correct labels to the network. This often comes as a challenge in many areas where obtaining data and labeling it is extremely labor-intensive. To overcome this challenge, an unsupervised way of learning DNN, which does not require any manual labeling, is proposed. Information maximizing generative adversarial network (InfoGAN) is used to learn the underlying probability distribution of each phase and generate realistic sample points with class labels. Then, the generated data is used for training an MLP classifier, which in turn predicts the labels for the original dataset. The result shows a mean relative error of 4.53% at most, while it can be as low as 0.73%, which implies the estimated phase fraction closely matches the true phase fraction. This presents the high feasibility of using the proposed methodology for fast and precise estimation of phase volume fraction in both industry and academia.https://doi.org/10.1038/s41598-021-85407-y
collection DOAJ
language English
format Article
sources DOAJ
author Sung Wook Kim
Seong-Hoon Kang
Se-Jong Kim
Seungchul Lee
spellingShingle Sung Wook Kim
Seong-Hoon Kang
Se-Jong Kim
Seungchul Lee
Estimating the phase volume fraction of multi-phase steel via unsupervised deep learning
Scientific Reports
author_facet Sung Wook Kim
Seong-Hoon Kang
Se-Jong Kim
Seungchul Lee
author_sort Sung Wook Kim
title Estimating the phase volume fraction of multi-phase steel via unsupervised deep learning
title_short Estimating the phase volume fraction of multi-phase steel via unsupervised deep learning
title_full Estimating the phase volume fraction of multi-phase steel via unsupervised deep learning
title_fullStr Estimating the phase volume fraction of multi-phase steel via unsupervised deep learning
title_full_unstemmed Estimating the phase volume fraction of multi-phase steel via unsupervised deep learning
title_sort estimating the phase volume fraction of multi-phase steel via unsupervised deep learning
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-03-01
description Abstract Advanced high strength steel (AHSS) is a steel of multi-phase microstructure that is processed under several conditions to meet the current high-performance requirements from the industry. Deep neural network (DNN) has emerged as a promising tool in materials science for the task of estimating the phase volume fraction of these steels. Despite its advantages, one of its major drawbacks is its requirement of a sufficient amount of training data with correct labels to the network. This often comes as a challenge in many areas where obtaining data and labeling it is extremely labor-intensive. To overcome this challenge, an unsupervised way of learning DNN, which does not require any manual labeling, is proposed. Information maximizing generative adversarial network (InfoGAN) is used to learn the underlying probability distribution of each phase and generate realistic sample points with class labels. Then, the generated data is used for training an MLP classifier, which in turn predicts the labels for the original dataset. The result shows a mean relative error of 4.53% at most, while it can be as low as 0.73%, which implies the estimated phase fraction closely matches the true phase fraction. This presents the high feasibility of using the proposed methodology for fast and precise estimation of phase volume fraction in both industry and academia.
url https://doi.org/10.1038/s41598-021-85407-y
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