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神经网络加速研究SnO表面电化学CO还原的动态结构-性能关系

Neural Network Accelerated Investigation of the Dynamic Structure-Performance Relations of Electrochemical CO Reduction over SnO Surfaces.

作者信息

Li Lulu, Zhao Zhi-Jian, Zhang Gong, Cheng Dongfang, Chang Xin, Yuan Xintong, Wang Tuo, Gong Jinlong

机构信息

School of Chemical Engineering and Technology, Key Laboratory for Green Chemical Technology of Ministry of Education, Tianjin University, Tianjin 300072, China.

Collaborative Innovation Center for Chemical Science and Engineering (Tianjin), Tianjin 300072, China.

出版信息

Research (Wash D C). 2023;6:0067. doi: 10.34133/research.0067. Epub 2023 Mar 14.

Abstract

Heterogeneous catalysts, especially metal oxides, play a curial role in improving energy conversion efficiency and production of valuable chemicals. However, the surface structure at the atomic level and the nature of active sites are still ambiguous due to the dynamism of surface structure and difficulty in structure characterization under electrochemical conditions. This paper describes a strategy of the multiscale simulation to investigate the SnO reduction process and to build a structure-performance relation of SnO for CO electroreduction. Employing high-dimensional neural network potential accelerated molecular dynamics and stochastic surface walking global optimization, coupled with density functional theory calculations, we propose that SnO reduction is accompanied by surface reconstruction and charge density redistribution of active sites. A regulatory factor, the net charge, is identified to predict the adsorption capability for key intermediates on active sites. Systematic electronic analyses reveal the origin of the interaction between the adsorbates and the active sites. These findings uncover the quantitative correlation between electronic structure properties and the catalytic performance of SnO so that Sn sites with moderate charge could achieve the optimally catalytic performance of the CO electroreduction to formate.

摘要

多相催化剂,尤其是金属氧化物,在提高能量转换效率和生产有价值的化学品方面起着至关重要的作用。然而,由于表面结构的动态性以及在电化学条件下结构表征的困难,原子水平的表面结构和活性位点的性质仍然不明确。本文描述了一种多尺度模拟策略,用于研究SnO的还原过程,并建立SnO用于CO电还原的结构-性能关系。利用高维神经网络势加速分子动力学和随机表面行走全局优化,并结合密度泛函理论计算,我们提出SnO还原伴随着表面重构和活性位点的电荷密度重新分布。确定了一个调节因子——净电荷,以预测活性位点上关键中间体的吸附能力。系统的电子分析揭示了吸附质与活性位点之间相互作用的起源。这些发现揭示了电子结构性质与SnO催化性能之间的定量相关性,使得具有适度电荷的Sn位点能够实现CO电还原为甲酸盐的最佳催化性能。

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