Wu Lianping, Guo Tian, Li Teng
Department of Mechanical Engineering, University of Maryland, College Park, MD, USA 20742.
iScience. 2021 Apr 3;24(5):102398. doi: 10.1016/j.isci.2021.102398. eCollection 2021 May 21.
The oxygen evolution reaction (OER) is a critical reaction for energy-related applications, yet suffers from its slow kinetics and large overpotential. It is desirable to develop effective OER electrocatalysts, such as single-atom catalysts (SACs). Here, we demonstrate machine learning (ML)-accelerated prediction of OER overpotential of all transition metals. Based on density functional theory (DFT) calculations of 15 species of SACs, we design a topological information-based ML model to map the OER overpotentials with atomic properties of the corresponding SACs. The trained ML model not only yields remarkable prediction precision (relative error of 6.49%) but also enables a 130,000-fold reduction of prediction time in comparison with pure DFT calculation. Furthermore, an intrinsic descriptor that correlates the overpotential of an SAC with its atomic properties is revealed. The approach and results from this study can be readily applicable to screen other SACs and significantly accelerate the design of high-performance catalysts for many other reactions.
析氧反应(OER)是与能源相关应用中的关键反应,但其动力学缓慢且过电位较大。开发有效的OER电催化剂,如单原子催化剂(SAC)是很有必要的。在此,我们展示了机器学习(ML)加速预测所有过渡金属的OER过电位。基于对15种SAC的密度泛函理论(DFT)计算,我们设计了一种基于拓扑信息的ML模型,以将OER过电位与相应SAC的原子性质进行映射。训练后的ML模型不仅具有显著的预测精度(相对误差为6.49%),而且与纯DFT计算相比,预测时间减少了130000倍。此外,还揭示了一个将SAC的过电位与其原子性质相关联的本征描述符。本研究的方法和结果可很容易地应用于筛选其他SAC,并显著加速许多其他反应的高性能催化剂的设计。