Satoka AOYAGI
;
Tomomi AKIYAMA
;
Natsumi SUZUKI
;
Naoya MIYAUCHI
(National Institute for Materials Science
)
;
Akiko N. ITAKURA
(National Institute for Materials Science
)
Alternative title: Multimodal Data Analysis for Evaluating Hydrogen Diffusion in Steel
Description:
(abstract)Multimodal data analysis provides useful information that is not generally obtained from one of the analysis methods. In this study, time-course images of hydrogen distribution on a steel sample measured using electron stimulated desorption (ESD), scanning electron microscopy (SEM) images and electron backscatter diffraction (EBSD) images were fused to create a multimodal image data set. The fused multimodal images were analyzed by principal component analysis, least absolute shrinkage and selection operator (LASSO) and autoencoder. Each method is one of the most popular methods in each field, multivariate analysis, sparse modeling, and unsupervised learning based on artificial neural networks, respectively. The results of PCA, LASSO and autoencoder were consistent, and each method provides different aspects of the sample data information.
Rights:
Keyword: hydrogen permeation, multimodal data analysis, hydrogen visualization, EBSD
Date published: 2021-10-10
Publisher: Surface Science Society Japan
Journal:
Funding:
Manuscript type: Publisher's version (Version of record)
MDR DOI:
First published URL: https://doi.org/10.1380/vss.64.472
Related item:
Other identifier(s):
Contact agent:
Updated at: 2024-01-05 22:12:57 +0900
Published on MDR: 2023-12-26 16:30:49 +0900
| Filename | Size | |||
|---|---|---|---|---|
| Filename |
2021_Aoyagi_表面と真空64_20180785.pdf
(Thumbnail)
application/pdf |
Size | 2.53 MB | Detail |