From Data to Discovery: Recent Trends of Machine Learning in Metal-Organic Frameworks

被引:5
|
作者
Park, Junkil [1 ]
Kim, Honghui [1 ]
Kang, Yeonghun [1 ]
Lim, Yunsung [1 ]
Kim, Jihan [1 ]
机构
[1] Korea Adv Inst Sci & Technol KAIST, Dept Chem & Biomol Engn, Daejeon 34141, South Korea
来源
JACS AU | 2024年 / 4卷 / 10期
基金
新加坡国家研究基金会;
关键词
Machine Learning; Metal-Organic Frameworks; Data-Driven; Regression Models; GenerativeModels; Machine Learning Potentials; Data Mining; Autonomous Lab; STRUCTURE-PROPERTY RELATIONSHIPS; METHANE STORAGE; FORCE-FIELD; DESIGN; DYNAMICS;
D O I
10.1021/jacsau.4c00618
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Renowned for their high porosity and structural diversity, metal-organic frameworks (MOFs) are a promising class of materials for a wide range of applications. In recent decades, with the development of large-scale databases, the MOF community has witnessed innovations brought by data-driven machine learning methods, which have enabled a deeper understanding of the chemical nature of MOFs and led to the development of novel structures. Notably, machine learning is continuously and rapidly advancing as new methodologies, architectures, and data representations are actively being investigated, and their implementation in materials discovery is vigorously pursued. Under these circumstances, it is important to closely monitor recent research trends and identify the technologies that are being introduced. In this Perspective, we focus on emerging trends of machine learning within the field of MOFs, the challenges they face, and the future directions of their development.
引用
收藏
页码:3727 / 3743
页数:17
相关论文
共 50 条
  • [1] Machine learning improves metal-organic frameworks design and discovery
    Tamakloe, Senam
    MRS BULLETIN, 2022, 47 (09) : 886 - 886
  • [2] Accelerating Discovery of Water Stable Metal-Organic Frameworks by Machine Learning
    Zhang, Zhiming
    Pan, Fusheng
    Mohamed, Saad Aldin
    Ji, Chengxin
    Zhang, Kang
    Jiang, Jianwen
    Jiang, Zhongyi
    SMALL, 2024, 20 (42)
  • [3] Machine learning and descriptor selection for the computational discovery of metal-organic frameworks
    Mukherjee, Krishnendu
    Colon, Yamil J.
    MOLECULAR SIMULATION, 2021, 47 (10-11) : 857 - 877
  • [4] Applications of machine learning in metal-organic frameworks
    Chong, Sanggyu
    Lee, Sangwon
    Kim, Baekjun
    Kim, Jihan
    COORDINATION CHEMISTRY REVIEWS, 2020, 423
  • [5] Machine Learning-Assisted Discovery of Propane-Selective Metal-Organic Frameworks
    Wang, Ying
    Jiang, Zhi-Jie
    Wang, Dong-Rong
    Lu, Weigang
    Li, Dan
    JOURNAL OF THE AMERICAN CHEMICAL SOCIETY, 2024, 146 (10) : 6955 - 6961
  • [6] Interpretable machine learning for accelerating the discovery of metal-organic frameworks for ethane/ethylene separation
    Wang, Zihao
    Zhou, Teng
    Sundmacher, Kai
    CHEMICAL ENGINEERING JOURNAL, 2022, 444
  • [7] Recent trends in superhydrophobic metal-organic frameworks and their diverse applications
    Pal, Souvik
    Kulandaivel, Sivasankar
    Yeh, Yi-Chun
    Lin, Chia-Her
    COORDINATION CHEMISTRY REVIEWS, 2024, 518
  • [8] Leveraging Machine Learning for Metal-Organic Frameworks: A Perspective
    Tang, Hongjian
    Duan, Lunbo
    Jiang, Jianwen
    LANGMUIR, 2023, 39 (45) : 15849 - 15863
  • [9] Machine learning the quantum-chemical properties of metal-organic frameworks for accelerated materials discovery
    Rosen, Andrew S.
    Iyer, Shaelyn M.
    Ray, Debmalya
    Yao, Zhenpeng
    Aspuru-Guzik, Alan
    Gagliardi, Laura
    Notestein, Justin M.
    Snurr, Randall Q.
    MATTER, 2021, 4 (05) : 1578 - 1597
  • [10] Machine learning improves metal–organic frameworks design and discovery
    Senam Tamakloe
    MRS Bulletin, 2022, 47 : 886 - 886