High-throughput screening of bimetallic catalysts enabled by machine learning

被引:282
|
作者
Li, Zheng [1 ]
Wang, Siwen [1 ]
Chin, Wei Shan [1 ]
Achenie, Luke E. [1 ]
Xin, Hongliang [1 ]
机构
[1] Virginia Tech, Dept Chem Engn, 635 Prices Fork Rd, Blacksburg, VA 24061 USA
基金
美国国家科学基金会;
关键词
OXYGEN REDUCTION; TRANSITION-METALS; SCALING RELATIONSHIPS; METHANOL; OXIDATION; REACTIVITY; CHEMISORPTION; ADSORPTION; PLATINUM; CO;
D O I
10.1039/c7ta01812f
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
We present a holistic machine-learning framework for rapid screening of bimetallic catalysts with the aid of the descriptor-based kinetic analysis. A catalyst database, which contains the adsorption energies of *CO and *OH on {111}-terminated model alloy surfaces and fingerprint features of active sites from density functional theory calculations with the semi-local generalized gradient approximation (GGA), is established and used in optimizing the structural and weight parameters of artificial neural networks. The fingerprint descriptors, rooted at the d-band chemisorption theory and its recent developments, include the sp-band and d-band characteristics of an adsorption site together with tabulated properties of host-metal atoms. Using methanol electro-oxidation as the model reaction, the machine-learning model trained with the existing dataset of similar to 1000 idealized alloy surfaces can capture complex, non-linear adsorbate/metal interactions with the RMSE similar to 0.2 eV and shows predictive power in exploring the immense chemical space of bimetallic catalysts. Feature importance analysis sheds light on the underlying factors that govern the adsorbate/metal interactions and provides the physical origin of bimetallics in breaking energy-scaling constraints of *CO and *OH, the two most commonly used reactivity descriptors in heterogeneous catalysis.
引用
收藏
页码:24131 / 24138
页数:8
相关论文
共 50 条
  • [21] Discovery of Graphene Growth Alloy Catalysts Using High-Throughput Machine Learning
    Li, Xinyu
    Shi, Javen Qinfeng
    Page, Alister J.
    NANO LETTERS, 2023, 23 (21) : 9796 - 9802
  • [22] Machine Learning (ML)-Enabled Automation for High-Throughput Data Processing in Flow Cytometry
    Kamysheva, Anna L.
    Fastovets, Dmitrii V.
    Kruglikov, Roman N.
    Sokolov, Arseniy A.
    Fefler, Anastasiya S.
    Bolshakova, Anastasiia A.
    Radko, Anastasia
    Krauz, Ilya E.
    Yong, Sheila T.
    Goldberg, Michael
    Ataullakhanov, Ravshan
    Zaitsev, Aleksandr
    BLOOD, 2023, 142
  • [23] Machine Learning Interatomic Potential for High-Throughput Screening of High-Entropy Alloys
    Anup Pandey
    Jonathan Gigax
    Reeju Pokharel
    JOM, 2022, 74 : 2908 - 2920
  • [24] Machine Learning Interatomic Potential for High-Throughput Screening of High-Entropy Alloys
    Pandey, Anup
    Gigax, Jonathan
    Pokharel, Reeju
    JOM, 2022, 74 (08) : 2908 - 2920
  • [25] Machine Learning-Based High-Throughput Screening for High-Stability Polyimides
    Luo, Gaoyang
    Huan, Feicheng
    Sun, Yuwei
    Shi, Feng
    Deng, Shengwei
    Wang, Jian-guo
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2024, 63 (48) : 21110 - 21122
  • [26] Exploration of the nanomedicine-design space with high-throughput screening and machine learning
    Mirkin, Chad
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2019, 258
  • [27] Machine Learning-Assisted High-Throughput Screening of Nanozymes for Ulcerative Colitis
    Zhao, Xianguang
    Yu, Yixin
    Xu, Xudong
    Zhang, Ziqi
    Chen, Zhen
    Gao, Yubo
    Zhong, Liang
    Chen, Jiajie
    Huang, Jiaxin
    Qin, Jie
    Zhang, Qingyun
    Tang, Xuemei
    Yang, Dongqin
    Zhu, Zhiling
    ADVANCED MATERIALS, 2025, 37 (09)
  • [28] Novel Approaches to Fluorescent Sensor Design: High-Throughput Screening, and Machine Learning
    Berndt, Andre
    Lee, Justin
    Wait, Sarah
    Torp, Lily
    Moghadasi, Aida
    Lin, Sophia
    Jin, Zheyu Ruby
    Amanda Nguyen
    Gibbs, Chelsea E.
    Boyle, Patrick
    Kim, Christina
    Chavkin, Charles
    PROTEIN SCIENCE, 2024, 33 : 164 - 164
  • [29] Modeling, virtual high-throughput screening, and machine learning of deep eutectic solvents
    Hachmann, Johannes
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2019, 257
  • [30] Exploration of the nanomedicine-design space with high-throughput screening and machine learning
    Yamankurt, Gokay
    Berns, Eric J.
    Xue, Albert
    Lee, Andrew
    Bagheri, Neda
    Mrksich, Milan
    Mirkin, Chad A.
    NATURE BIOMEDICAL ENGINEERING, 2019, 3 (04) : 318 - 327