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
  • [1] Machine learning-enabled high-throughput industry screening of edible oils
    Deng, Peishan
    Lin, Xiaomin
    Yu, Zifan
    Huang, Yuanding
    Yuan, Shijin
    Jiang, Xin
    Niu, Meng
    Peng, Weng Kung
    FOOD CHEMISTRY, 2024, 447
  • [2] Machine learning enabled high-throughput screening of hydrocarbon molecules for the design of next generation fuels
    Li, Guozhu
    Hu, Zheng
    Hou, Fang
    Li, Xinyu
    Wang, Li
    Zhang, Xiangwen
    FUEL, 2020, 265
  • [3] Machine Learning-Enabled Prediction and High-Throughput Screening of Polymer Membranes for Pervaporation Separation
    Wang, Mao
    Xu, Qisong
    Tang, Hongjian
    Jiang, Jianwen
    ACS Applied Materials and Interfaces, 2022, 14 (06):
  • [4] Machine Learning-Enabled Prediction and High-Throughput Screening of Polymer Membranes for Pervaporation Separation
    Wang, Mao
    Xu, Qisong
    Tang, Hongjian
    Jiang, Jianwen
    ACS APPLIED MATERIALS & INTERFACES, 2022, 14 (06) : 8427 - 8436
  • [5] High-throughput computational-experimental screening protocol for the discovery of bimetallic catalysts
    Byung Chul Yeo
    Hyunji Nam
    Hyobin Nam
    Min-Cheol Kim
    Hong Woo Lee
    Sung-Chul Kim
    Sung Ok Won
    Donghun Kim
    Kwan-Young Lee
    Seung Yong Lee
    Sang Soo Han
    npj Computational Materials, 7
  • [6] High-throughput computational-experimental screening protocol for the discovery of bimetallic catalysts
    Yeo, Byung Chul
    Nam, Hyunji
    Nam, Hyobin
    Kim, Min-Cheol
    Lee, Hong Woo
    Kim, Sung-Chul
    Won, Sung Ok
    Kim, Donghun
    Lee, Kwan-Young
    Lee, Seung Yong
    Han, Sang Soo
    NPJ COMPUTATIONAL MATERIALS, 2021, 7 (01)
  • [7] Utilizing machine learning for high throughput screening of bimetallic alloy catalysts for Fischer-Tropsch synthesis
    Mamun, Osman
    Bligaard, Thomas
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2019, 257
  • [8] High-throughput screening of MOF catalysts
    Palomba, Joseph
    Cohen, Seth
    Kalaj, Mark
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2019, 258
  • [9] Application of machine learning for high-throughput tumor marker screening
    Fu, Xingxing
    Ma, Wanting
    Zuo, Qi
    Qi, Yanfei
    Zhang, Shubiao
    Zhao, Yinan
    LIFE SCIENCES, 2024, 348
  • [10] Machine Learning-Enabled Framework for High-Throughput Screening of MOFs: Application in Radon/Indoor Air Separation
    Ren, Junyu
    Wang, Shihui
    Bi, Kexin
    Cheng, Min
    Liu, Chong
    Zhou, Li
    Xue, Xiaoyu
    Ji, Xu
    ACS APPLIED MATERIALS & INTERFACES, 2023, 15 (01) : 1305 - 1316