机器学习加速丙酸加氢脱氧第一原理研究

IF 11.3 1区 化学 Q1 CHEMISTRY, PHYSICAL
Wenqiang Yang, Kareem E. Abdelfatah, Subrata Kumar Kundu, Biplab Rajbanshi, Gabriel A. Terejanu* and Andreas Heyden*, 
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引用次数: 0

摘要

催化生物质转化的复杂反应网络通常涉及数百个表面中间体和数千个反应步骤,这极大地阻碍了用于这些转化的金属催化剂的合理设计。在此,我们提出了一个机器学习(ML)加速的第一原理研究框架,用于过渡金属表面丙酸的加氢脱氧反应(HDO)。微动力学模型(MKM)最初由 ML 预测的能量参数化,然后通过识别决定速率的物种和步骤(RDS)、用密度泛函理论(DFT)计算它们的能量以及重新参数化 MKM 直到所有的 RDS 都用 DFT 计算出来来迭代改进。在预测吸附自由能和过渡态自由能方面,高斯过程(GP)模型的表现明显优于线性回归模型。利用 GP 模型的能量参数,只需通过 DFT 计算 5-20% 的完整反应网络,MKM 就能在 TOF 和主要反应途径方面达到 DFT 水平的精度。虽然线性脊回归模型的性能比 GP 模型差,但当回归模型只预测过渡态而用 DFT 计算吸附能时,其性能就会大大提高。总之,我们发现,对于可靠的 MKM 而言,吸附自由能的高精度比 TS 自由能的高精度更为重要。最后,基于以 GOH 和 GCHCHCO 为催化剂描述符的 GP 模型,我们绘制了活性和选择性的二维火山图,这有助于设计有前途的合金催化剂,用于有机酸的 HDO 反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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

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

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

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.

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来源期刊
ACS Catalysis
ACS Catalysis CHEMISTRY, PHYSICAL-
CiteScore
20.80
自引率
6.20%
发文量
1253
审稿时长
1.5 months
期刊介绍: ACS Catalysis is an esteemed journal that publishes original research in the fields of heterogeneous catalysis, molecular catalysis, and biocatalysis. It offers broad coverage across diverse areas such as life sciences, organometallics and synthesis, photochemistry and electrochemistry, drug discovery and synthesis, materials science, environmental protection, polymer discovery and synthesis, and energy and fuels. The scope of the journal is to showcase innovative work in various aspects of catalysis. This includes new reactions and novel synthetic approaches utilizing known catalysts, the discovery or modification of new catalysts, elucidation of catalytic mechanisms through cutting-edge investigations, practical enhancements of existing processes, as well as conceptual advances in the field. Contributions to ACS Catalysis can encompass both experimental and theoretical research focused on catalytic molecules, macromolecules, and materials that exhibit catalytic turnover.
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