Machine-Learning-Enabled Thermochemistry Estimator

被引:1
|
作者
Xie, Tianjun [1 ]
Wittreich, Gerhard R. [2 ]
Curnan, Matthew T. [3 ]
Gu, Geun Ho [3 ]
Seals, Kayla N. [1 ]
Tolbert, Justin S. [1 ]
机构
[1] North Carolina A&T State Univ, Dept Chem Biol & Bioengn, Greensboro, NC 27411 USA
[2] Univ Delaware, Dept Chem & Biomol Engn, Newark, DE 19716 USA
[3] Korea Inst Energy Technol KENTECH, Dept Energy Engn, Naju 58330, South Korea
基金
新加坡国家研究基金会;
关键词
DENSITY-FUNCTIONAL THEORY; TOTAL-ENERGY CALCULATIONS; ULTRASOFT PSEUDOPOTENTIALS; GROUP ADDITIVITY; MOLECULES; 1ST-PRINCIPLES; PREDICTION; MECHANISM; ACCURATE; LANGUAGE;
D O I
10.1021/acs.jcim.4c00989
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Modeling adsorbates on single-crystal metals is critical in rational catalyst design and other research that requires detailed thermochemistry. First-principles simulations via density functional theory (DFT) are among the prevalent tools to acquire such information about surface species. While they are highly dependable, DFT calculations often require intensive computational resources and runtime. These limiting factors become particularly pronounced when investigating large sets of complex molecules on heavy noble metals. Consequently, our ability to explore these species and their corresponding energetics is limited. In this work, we establish a novel framework that utilizes techniques including molecular encoding, descriptor synthesis, and machine learning to overcome the limitation of costly DFT simulations. Simultaneously, we estimate thermochemical information efficiently at the DFT accuracy level. More specifically, we translated our training molecules into text-based identifiers through a simplified molecular-input line-entry system. Following that, we parametrize our training matrices with sets of short-range descriptors based on group methods, applying first the nearest neighbors to account for linear contributions. This is coupled with the long-range descriptors characterizing second nearest neighbors to account for nonlinear corrections. Finally, we use linear regression and machine learning techniques, such as Gaussian process regressions to regress over the linear and nonlinear matrix systems, respectively. This is the first work to our knowledge that encompasses both the first and second nearest neighbors based on the group theory throughout the featurization, training, and deployment stages. We trained and validated our models with 459 surface species on Pt(111), Ru(0001), and Ir(111) surfaces. Results exhibit robust performance to reproduce the energetics of interest, such as enthalpies, entropies, and heat capacities, at various temperatures. Notably, the mean absolute errors can be reduced by 48% during training and 19% during prediction at a minimum, when compared to the classical group method. Leveraging the novel framework, our machine-learning-enabled thermochemistry estimator significantly empowers us to research the thermochemistry of complex species on metal catalysts.
引用
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页数:9
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