催化作用
过渡金属
电催化剂
贵金属
合理设计
材料科学
金属
还原(数学)
化学
密度泛函理论
无机化学
电化学
纳米技术
计算化学
物理化学
数学
有机化学
几何学
电极
作者
Xuhao Wan,Zhaofu Zhang,Huan Niu,Yiheng Yin,Chunguang Kuai,Jun Wang,Chen Shao,Yuzheng Guo
标识
DOI:10.1021/acs.jpclett.1c01526
摘要
The highly active and selective carbon dioxide reduction reaction (CO2RR) can generate valuable products such as fuels and chemicals and reduce the emission of greenhouse gases. Single-atom catalysts (SACs) and dual-metal-sites catalysts (DMSCs) with high activity and selectivity are superior electrocatalysts for the CO2RR as they have higher active site utilization and lower cost than traditional noble metals. Herein, we explore a rational and creative density-functional-theory-based, machine-learning-accelerated (DFT-ML) method to investigate the CO2RR catalytic activity of hundreds of transition metal phthalocyanine (Pc) DMSCs. The gradient boosting regression (GBR) algorithm is verified to be the most desirable ML model and is used to construct catalytic activity prediction, with a root-mean-square error of only 0.08 eV. The results of ML prediction demonstrate Ag-MoPc as a promising CO2RR electrocatalyst with the limiting potential of only −0.33 V. The DFT-ML hybrid scheme accelerates the efficiency 6.87 times, while the prediction error is only 0.02 V, and it sheds light on the path to accelerate the rational design of efficient catalysts for energy conversion and conservation.
科研通智能强力驱动
Strongly Powered by AbleSci AI