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Article(43)
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machine learning (49)
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Keyword: machine learning
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49 records found.
Data-driven approaches for designing thermal insulating materials
Presentation
Creator
Yen-Ju Wu
;
Yibin Xu
Keyword
Interfacial thermal resistance
,
machine learning
,
thermal insulator
,
data-driven technique
Date published
Updated at
2024-12-25 16:30:37 +0900
Accelerating Materials Discovery of Novel Europium(II)-Activated Phosphors through Machine Learning Classification of Europium Valences
Article
Creator
Yukinori Koyama
;
Yukako Kohriki
;
Masamichi Harada
;
Naoto Hirosaki
;
Takashi Takeda
Keyword
phosphor
,
machine learning
,
europium
,
oxidation state
Date published
2024-12-10
Updated at
2025-11-25 08:30:03 +0900
Deep Learning Enables Rapid Identification of a New Quasicrystal from Multiphase Powder Diffraction Patterns
Article
Creator
Hirotaka Uryu ; Tsunetomo Yamada ; Koichi Kitahara ;
Alok Singh
;
Yutaka Iwasaki
;
Kaoru Kimura
; Kanta Hiroki ; Naoki Miyao ; Asuka Ishikawa ; Ryuji Tamura ; Satoshi Ohhashi ; Chang Liu ; Ryo Yoshida
Keyword
deep learning
,
x-ray powder diffraction
,
quasicrystal
,
phase identification
,
machine learning
Date published
2023-11-14
Updated at
2024-12-13 12:30:39 +0900
Black-box optimization technique for investigation of surface phase diagram
Article
Creator
Makoto Urushihara ;
Kenji Yamaguchi
;
Ryo Tamura
Keyword
surface phase diagram
,
machine learning
Date published
2024-12-01
Updated at
2024-12-10 16:55:25 +0900
機械学習高速自動スペクトル解析ソフト“EMPeaks”について
Article
Creator
永村 直佳
; 安藤 康伸
Keyword
spectroscopy
,
peak fitting
,
data analysis
,
machine learning
Date published
2024-10-10
Updated at
2025-01-10 16:31:04 +0900
Machine-learning-assisted discovery of polymers with high thermal conductivity using a molecular design algorithm
Article
Creator
Stephen Wu ; Yukiko Kondo ; Masa-aki Kakimoto ; Bin Yang ; Hironao Yamada ;
Isao Kuwajima
;
Guillaume Lambard
; Kenta Hongo ;
Yibin Xu
; Junichiro Shiomi ; Christoph Schick ; Junko Morikawa ; Ryo Yoshida
Keyword
machine learning
,
polymer
,
thermal conductivity
,
molecular design
Date published
2019-06-21
Updated at
2024-11-21 16:31:23 +0900
Atomic descriptors generated from coordination polyhedra in crystal structures
Article
Creator
Yuki Inada ;
Yukari Katsura
; Masaya Kumagai ; Kaoru Kimura
Keyword
Materials informatics
,
machine learning
,
atomic descriptors
,
coordination polyhedra
,
formation energy prediction
,
band gap prediction
Date published
2021-01-01
Updated at
2024-11-21 16:35:29 +0900
Predicting the surface roughness of an electrodeposited copper film using a machine learning technique
Article
Creator
Ryo Tamura
; Ryuichi Inaba ; Mami Watanabe ; Yutaro Mori ; Makoto Urushihara ; Kenji Yamaguchi ;
Shoichi Matsuda
Keyword
electrodeposited copper film
,
surface roughness
,
machine learning
Date published
2024-12-31
Updated at
2024-10-31 16:30:15 +0900
Theoretical investigation of oxidation mechanism in Ti and its alloys
Proceedings
Creator
Ryoji Sahara
; Somesh Kr. Bhattacharya ; Kanika Kohli ; Prasenjit Ghosh ; Kyosuke Ueda ; Takayuki Narushima
Keyword
high temperature oxidation
,
parabolic rate constant
,
first principles calculations
,
machine learning
,
electronegativity
Date published
Updated at
2024-10-18 16:30:37 +0900
Computational discovery of stable Na-ion sulfide solid electrolytes with high conductivity at room temperature
Article
Creator
Seong-Hoon Jang
;
Randy Jalem
;
Yoshitaka Tateyama
Keyword
all solid state batteries
,
solid electrolytes
,
high-throughput first-principles calculation
,
computational materials search
,
machine learning
,
sodium ion conductors
Date published
2024-08-05
Updated at
2024-10-10 16:30:52 +0900
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