プロシーディングス論文 Synthesis of Electrochromic Supramolecular Polymers Driven by Data Science
Aiwei Zhao (author) (この著者で検索)
ORCID https://orcid.org/0009-0000-3322-2476
National Institute for Materials Science / Graduate School of Information Science and Technology 高分子・バイオ材料研究センター/高分子材料分野/電子機能高分子グループ
SAMURAI NIMS Researchers Directory SAMURAI
ORCID SAMURAI ;
Dines Chandra Santra (author) (この著者で検索)
National Institute for Materials Science 高分子・バイオ材料研究センター/高分子材料分野/電子機能高分子グループ
;
Kenji Nagata (author) (この著者で検索)
ORCID https://orcid.org/0000-0001-9894-4461
National Institute for Materials Science マテリアル基盤研究センター/材料設計分野/データ駆動型材料設計グループ
SAMURAI NIMS Researchers Directory SAMURAI
ORCID SAMURAI ;
Junya Sakurai (author) (この著者で検索)
National Institute for Materials Science 技術開発・共用部門/材料データプラットフォーム/データ活用ユニット
;
Masahiko Demura (author) (この著者で検索)
ORCID https://orcid.org/0000-0002-7308-3041
National Institute for Materials Science 外部連携部門/構造材料DXマテリアルズオープンプラットフォーム
SAMURAI NIMS Researchers Directory SAMURAI
ORCID SAMURAI ;
Masayoshi Higuchi (author) (この著者で検索)
ORCID https://orcid.org/0000-0001-9877-1134
National Institute for Materials Science / Graduate School of Information Science and Technology 高分子・バイオ材料研究センター/高分子材料分野/電子機能高分子グループ
SAMURAI NIMS Researchers Directory SAMURAI
ORCID SAMURAI
コレクション

引用
Aiwei Zhao, Dines Chandra Santra, Kenji Nagata, Junya Sakurai, Masahiko Demura, Masayoshi Higuchi. Synthesis of Electrochromic Supramolecular Polymers Driven by Data Science. https://pub.confit.atlas.jp/en/event/idw2024

説明:

(abstract)

Materials informatics has recently garnered significant attention as a potent tool for the development of a wide array of functional materials. The successful integration of materials informatics into polymer design holds the promise of streamlining the synthesis of polymers with tailored properties, thereby enhancing efficiency and specificity in material engineering. Machine learning is a subset of artificial intelligence (AI), which involves algorithms learning from data to make predictions or decisions. The machine learning, especially Bayesian optimization method is widely used in materials science.
In this paper, we report our recent approach on the search of electrochromic (EC) metallo-supramolecular polymers (MSPs) with the help of materials informatics. Four components were selected among many components of MSPs. Among all the combination of the variations, the selected number of the corresponding MSPs according to an orthogonal table were synthesized. A coloration efficiency (CE) of 1281 cm2/C was obtained compared to our previous work. We found that this method with statistics was useful to find the polymers with better EC properties quickly.

権利情報:

  • In Copyright

    ©The Institute of Image Information and Television Engineers and The Society for Information Display

キーワード: electrochromic, coloration efficiency, data-science

刊行年月日: [2024年]

出版者: International Display Workshops General Incorporated Association

掲載誌:

  • PROCEEDINGS OF THE INTERNATIONAL DISPLAY WORKSHOPS (ISSN: 18832490) vol. 31 p. 1050-1052

会議: IDW'24 (2024-12-04 - 2024-12-06)

研究助成金:

原稿種別: 出版者版 (Version of record)

MDR DOI:

公開URL: https://pub.confit.atlas.jp/en/event/idw2024

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更新時刻: 2025-06-01 08:30:20 +0900

MDRでの公開時刻: 2025-06-01 08:24:32 +0900

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