Tomoki Yamashita
;
Shinichi Kanehira
;
Nobuya Sato
;
Hiori Kino
(National Institute for Materials Science
)
;
Kei Terayama
;
Hikaru Sawahata
;
Takumi Sato
;
Futoshi Utsuno
;
Koji Tsuda
(National Institute for Materials Science
)
;
Takashi Miyake
(National Institute for Materials Science
)
;
Tamio Oguchi
説明:
(abstract)We have developed an open-source software called CrySPY, which is a crystal structure
prediction tool written in Python 3, and runs on Unix/Linux platforms. CrySPY enables anyone
to easily perform crystal structure prediction simulations for materials discovery and design,
and automates structure generation, structure optimization, energy evaluation, and efficiently
selecting candidates using machine learning. Several searching algorithms are available such
as random search, evolutionary algorithm, Bayesian optimization, and Look Ahead based on
Quadratic Approximation. Machine learning is employed to efficiently select candidates for
priority optimization. CrySPY does not require complex machine learning techniques for users.
In the latest version of CrySPY, both atomic and molecular random structures can be gener-
ated. CrySPY supports VASP, QUANTUM ESPRESSO, OpenMX, soiap, and LAMMPS for local
structure optimization and energy evaluation. CrySPY is distributed under the MIT license at
https://github.com/Tomoki-YAMASHITA/CrySPY. Documentation of CrySPY is also available at
https://Tomoki-YAMASHITA.github.io/CrySPY_doc.
権利情報:
キーワード: crystal structure prediction, Bayesian optimization, LAQA, first-principles calculations, evolutionary algorithm
刊行年月日: 2021-01-01
出版者: Informa UK Limited
掲載誌:
研究助成金:
原稿種別: 出版者版 (Version of record)
MDR DOI:
公開URL: https://doi.org/10.1080/27660400.2021.1943171
関連資料:
その他の識別子:
連絡先:
更新時刻: 2024-04-02 23:51:18 +0900
MDRでの公開時刻: 2023-02-10 10:31:36 +0900
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ファイル名 |
CrySPY a crystal structure prediction tool accelerated by machine learning.pdf
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サイズ | 5.08MB | 詳細 |