Fang Zhaolin, Li Shuyuan, Zhang Yunjiang, Wang Yaxin, Meng Kong, Huang Chenyu, Sun Shaorui
Beijing Key Laboratory for Green Catalysis and Separation, Faculty of Environment and Life, Beijing University of Technology, Beijing 100124, China.
J Phys Chem Lett. 2024 Jan 11;15(1):281-289. doi: 10.1021/acs.jpclett.3c02938. Epub 2024 Jan 2.
The oxygen reduction reaction (ORR) and the oxygen evolution reaction (OER) are crucial for the conversion of clean energy. Recently, dual-metal-site catalysts (DMSCs) have gained much attention due to their high atom utilization, stronger stability, and better catalytic performance. An advanced method that combines density functional theory (DFT) and machine learning (ML) has been employed in this study to investigate the adsorption free energies of adsorbates on hundreds of potential catalysts, with the aim of screening for catalysts that are highly active for the ORR and OER. The result of this study is that 30 DMSCs with ORR activity superior to Pt, 10 DMSCs with OER activity superior to RuO, and 4 bifunctional catalysts for the OER and ORR are identified. This work provides guidance for the rational selection of metals on DMSCs to prepare catalysts with a high electrocatalytic performance for renewable energy applications.
氧还原反应(ORR)和析氧反应(OER)对于清洁能源的转换至关重要。近年来,双金属位点催化剂(DMSC)因其高原子利用率、更强的稳定性和更好的催化性能而备受关注。本研究采用了一种将密度泛函理论(DFT)和机器学习(ML)相结合的先进方法,来研究数百种潜在催化剂上吸附质的吸附自由能,目的是筛选出对ORR和OER具有高活性的催化剂。该研究的结果是,鉴定出了30种ORR活性优于Pt的DMSC、10种OER活性优于RuO的DMSC以及4种用于OER和ORR的双功能催化剂。这项工作为在DMSC上合理选择金属以制备具有高电催化性能的可再生能源应用催化剂提供了指导。