Machine Learning Accelerated First-Principles Study of the Hydrodeoxygenation of Propanoic Acid

被引:4
|
作者
Yang, Wenqiang [1 ]
Abdelfatah, Kareem E. [2 ]
Kundu, Subrata Kumar [1 ]
Rajbanshi, Biplab [1 ,3 ]
Terejanu, Gabriel A. [4 ]
Heyden, Andreas [1 ]
机构
[1] Univ South Carolina, Dept Chem Engn, Columbia, SC 29208 USA
[2] Univ South Carolina, Dept Comp Sci & Engn, Columbia, SC 29208 USA
[3] Visva Bharati Univ, Dept Chem, Santini Ketan 731235, India
[4] Univ N Carolina, Dept Comp Sci, Charlotte, NC 28262 USA
来源
ACS CATALYSIS | 2024年 / 14卷 / 13期
基金
美国国家科学基金会;
关键词
biomass conversion; largereaction network; density functional theory; machinelearning; iterativemicrokinetic model; volcano plot; BRONSTED-EVANS-POLANYI; FINDING SADDLE-POINTS; TRANSITION-METAL SURFACES; DENSITY-FUNCTIONAL THEORY; STATE SCALING RELATIONS; GROUP ADDITIVITY; CATALYTIC CONVERSION; MOLECULAR-PROPERTIES; ACTIVATION-ENERGIES; PROPIONIC-ACID;
D O I
10.1021/acscatal.4c01419
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
The complex reaction network of catalytic biomass conversions often involves hundreds of surface intermediates and thousands of reaction steps, greatly hindering the rational design of metal catalysts for these conversions. Here, we present a framework of machine learning (ML)-accelerated first-principles studies for the hydrodeoxygenation (HDO) of propanoic acid over transition metal surfaces. The microkinetic model (MKM) is initially parametrized by ML-predicted energies and iteratively improved by identifying the rate-determining species and steps (RDS), computing their energies by density functional theory (DFT), and reparameterizing the MKM until all the RDS are computed by DFT. The Gaussian process (GP) model performs significantly better than the linear ridge regression model for predicting both the adsorption free energies and transition state free energies. Parameterized with energies from the GP model, only 5-20% of the full reaction network has to be computed by DFT for the MKM to possess DFT-level accuracy for the TOF and dominant reaction pathway. While the linear ridge regression model performs worse than the GP model, its performance is greatly improved when only transition states are predicted by the regression model and adsorption energies are computed by DFT. Overall, we find that a high accuracy in adsorption free energies is more important for a reliable MKM than a high accuracy in TS free energies. Finally, based on the GP model with GOH and GCHCHCO as catalyst descriptors, we build two-dimensional volcano plots in activity and selectivity that can help design promising alloy catalysts for HDO reactions of organic acids.
引用
收藏
页码:10148 / 10163
页数:16
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