論文 Classification of EBSD Kikuchi patterns for stainless steel by unsupervised learning methods to investigate grain boundaries

Satoka Aoyagi ; Daisuke Hayashi ; Yoshiharu Murase SAMURAI ORCID (National Institute for Materials ScienceROR) ; Naoya Miyauchi SAMURAI ORCID (National Institute for Materials ScienceROR) ; Akiko N. Itakura SAMURAI ORCID (National Institute for Materials ScienceROR)

コレクション

引用
Satoka Aoyagi, Daisuke Hayashi, Yoshiharu Murase, Naoya Miyauchi, Akiko N. Itakura. Classification of EBSD Kikuchi patterns for stainless steel by unsupervised learning methods to investigate grain boundaries. e-Journal of Surface Science and Nanotechnology. 2023, 21 (3), 128-131. https://doi.org/10.1380/ejssnt.2023-023
SAMURAI

説明:

(abstract)

EBSD indexing based on Kikuchi diffraction patterns, which indicate the types and orientation of the crystal lattice, is generally effective for characterizing crystals. Most regions in a sample can be indexed owing to the simulation of diffraction patterns of possible crystal types, orientations, and angles. However, indexing some of the complex regions related to the grain boundaries, dislocations, and strain areas is difficult.
By analyzing all the Kikuchi patterns, subtle information from mixed crystal conditions can be extracted. In this study, all Kikuchi patterns at all pixels in a measurement area of stainless steel were analyzed simultaneously using unsupervised learning methods, such as principal component analysis and multivariate curve resolution, and the pixels of the measurement area were classified based on the Kikuchi patterns to investigate the grain boundaries and dislocations in detail.

権利情報:

キーワード: hydrogen permeation, EBSD, stainless steel, unsupervised learning

刊行年月日: 2023-02-25

出版者: Surface Science Society Japan

掲載誌:

  • e-Journal of Surface Science and Nanotechnology (ISSN: 13480391) vol. 21 issue. 3 p. 128-131

研究助成金:

  • JSPS 18H03849

原稿種別: 出版者版 (Version of record)

MDR DOI:

公開URL: https://doi.org/10.1380/ejssnt.2023-023

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更新時刻: 2024-01-05 22:11:33 +0900

MDRでの公開時刻: 2023-10-23 13:30:06 +0900

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