Clustering Analysis of Acoustic Emission Signals during Compression Tests in Mille-Feuille Structure Materials
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- Liu Hanqing
- Department of Materials Engineering, The University of Tokyo
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- Briffod Fabien
- Department of Materials Engineering, The University of Tokyo
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- Shiraiwa Takayuki
- Department of Materials Engineering, The University of Tokyo
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- Enoki Manabu
- Department of Materials Engineering, The University of Tokyo
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- Emura Satoshi
- Research Center for Structural Materials, National Institute for Materials Science
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Abstract
<p>Acoustic emission (AE) methods with supervised and unsupervised machine learning were applied to investigate deformation behaviors of Mg–Y–Zn alloys and Ti–12Mo alloy with mille-feuille-like structure. In the supervised learning process, AE signals received from compression tests with pure magnesium and directionally solidified (DS) Mg85Zn6Y9 alloy with long-period stacking ordered (LPSO) structure were used as the training data to build a classification model for classifying AE sources from α-Mg phase and LPSO phase in Mg–Y–Zn alloys. In the unsupervised learning process, AE signals data from Ti–12Mo alloy were divided into two clusters according to the frequency spectrum features, and digital image correlation (DIC) was carried out to study those clusters and deformation behaviors. Deformation behavior of Mg–Y–Zn alloys and Ti–12Mo alloy were compared and discussed, and the method of applying AE with supervised and unsupervised machine learning was evaluated.</p>
Journal
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- MATERIALS TRANSACTIONS
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MATERIALS TRANSACTIONS 63 (3), 319-328, 2022-03-01
The Japan Institute of Metals and Materials
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Details 詳細情報について
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- CRID
- 1390291189501737344
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- NII Article ID
- 130008163673
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- NII Book ID
- AA1151294X
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- ISSN
- 13475320
- 13459678
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- NDL BIB ID
- 032007359
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- Text Lang
- en
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- Data Source
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- JaLC
- NDL
- Crossref
- CiNii Articles
- KAKEN
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- Abstract License Flag
- Disallowed