基于神经网络势能面的高效多相催化动力学计算策略——以CO表面化学吸附的温度相关热力学和动力学为例

Jun Chen, Tan Jin, Tonghao Shen, Mingjun Yang, Zhe-ning Chen
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摘要

作为实验技术的一种有利的替代和补充,从头计算之上的计算工具在揭示催化反应的分子细节、热力学和动力学方面发挥了不可或缺的作用。静态计算策略是理论催化中最流行的方法,它基于零温度下几个静止几何结构的计算和一些理想的统计力学模型来恢复反应热力学和动力学。相比之下,从头计算分子动力学(AIMD)是一种经过充分测试的方法,可以提供更精确的催化过程描述,然而,在势能和梯度的直接从头计算中,计算成本非常昂贵。在神经网络势能面(NN-PES)和MD模拟的基础上,我们提出了一种高效的动态计算策略,用于计算多相催化的热力学和动力学性质。以Ru(0001)表面的CO吸附质为说明性模型催化体系,我们证明了我们基于NN-PES的MD模拟可以在宽温度范围(300-900K)内有效地生成可靠的光滑二维平均力(2-DPMF)表面势,因此可以在对整个PMF表面的全面研究中获得与温度相关的热力学性质,而不是使用基于几个优化几何形状的理想模型进行粗略估计。此外,MD模拟提供了一种有效的方法来描述表面动力学,如表面运动中的CO吸附质,这超出了基于计算的自由能垒和过渡态理论(TST)的最流行的静态估计。通过比较动态和静态方法获得的结果,我们进一步表明,与谐波分析和TST等流行的理想统计力学方法相比,动态策略显著提高了对热力学和动力学性质的预测。预计这种准确而有效的动力学策略可以成为理解催化表面系统的反应机理和反应性的有力工具,并进一步指导多相催化剂的合理设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Dynamic Computational Strategy for Heterogeneous Catalysis Based on Neural Network Potential Energy Surface: A Case Study of Temperature-Dependent Thermodynamics and Kinetics for the Chemisorbed on-surface CO
As a favorable alternative and complement of experimental techniques, computational tools on top of ab initio calculations have played an indispensable role in revealing the molecular details, thermodynamics and kinetics in catalytic reactions. The static computational strategy, which recovers the reaction thermodynamics and kinetics based on the calculations of a few stationary geometries at zero temperature and some ideal statistic mechanics models, is the most popular approach in theoretical catalysis due to its simplicity. In comparison, the ab initio molecular dynamics (AIMD) is a well-tested approach to provide more precise descriptions of catalytic processes, however, experiencing a significantly expensive computational cost in the direct ab initio calculation of potential energy and gradients. Here we proposed a highly efficient dynamic computational strategy for the calculation of thermodynamic and kinetic properties in heterogeneous catalysis on the basis of neural network potential energy surface (NN PES) and MD simulations. Taking CO adsorbate on Ru(0001) surface as the illustrative model catalytic system, we demonstrated that our NN-PES-based MD simulations can efficiently generate the reliable smooth two-dimensional potential-of-mean-force (2-D PMF) surfaces in a wide range of temperatures (from 300 to 900 K), and thus temperature-dependent thermodynamic properties can be obtained in a comprehensive investigation on the whole PMF surface rather than a rough estimation using ideal models based on a few optimized geometries. Moreover, MD simulations offer an effective way to describe the surface kinetics such as the CO adsorbate on-surface movement, which goes beyond the most popular static estimation based on calculated free energy barrier and transition state theory (TST). By comparing the results obtained in the dynamic and static approaches, we further revealed that the dynamic strategy significantly improves the predictions of both thermodynamic and kinetic properties as compared to the popular ideal statistic mechanics approaches such as harmonic analysis and TST. It is expected that this accurate yet efficient dynamic strategy can be a powerful tool in understanding reaction mechanisms and reactivity of a catalytic surface system, and further guides the rational design of heterogeneous catalysts.
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