催化作用
法拉第效率
密度泛函理论
限制
氧化还原
化学空间
化学
电化学
缩放比例
材料科学
化学物理
物理化学
计算化学
数学
无机化学
工程类
几何学
机械工程
药物发现
生物化学
电极
作者
Myungjoon Kim,Byung Chul Yeo,Youngtae Park,Hyuck Mo Lee,Sang Soo Han,Dong-Hun Kim
标识
DOI:10.1021/acs.chemmater.9b03686
摘要
The development of catalysts for the electrochemical N2 reduction reaction (NRR) with a low limiting potential and high Faradaic efficiency is highly desirable but remains challenging. Here, to achieve acceleration, we develop and report a slab graph convolutional neural network (SGCNN), an accurate and flexible machine learning (ML) model that is suited for probing surface reactions in catalysis. With a self-accumulated database of 3040 surface calculations at the density-functional-theory (DFT) level, SGCNN predicted the binding energies, ranging over 8 eV, of five key adsorbates (H, N2, N2H, NH, NH2) related to NRR performance with a mean absolute error (MAE) of only 0.23 eV. SGCNN only requires the low-level inputs of elemental properties available in the periodic table of elements and connectivity information of constituent atoms; thus, accelerations can be realized. Via a combined process of SGCNN-driven predictions and DFT verifications, four novel catalysts in the L12 crystal space, including V3Ir(111), Tc3Hf(111), V3Ni(111), and Tc3Ta(111), are proposed as stable candidates that likely exhibit both a lower limiting potential and higher Faradaic efficiency in the NRR, relative to the reference Mo(110). The ML work combined with a statistical data analysis reveals that catalytic surfaces with an average d-orbital occupation between 4 and 6 could lower the limiting potential and potentially overcome the scaling relation in the NRR.
科研通智能强力驱动
Strongly Powered by AbleSci AI