Data‐driven structural descriptor for predicting platinum‐based alloys as oxygen reduction electrocatalysts

Author:

Zhang Xue1ORCID,Wang Zhuo12,Lawan Adam Mukhtar1,Wang Jiahong13,Hsieh Chang‐Yu4,Duan Chenru5,Pang Cheng Heng2,Chu Paul. K.6,Yu Xue‐Feng13,Zhao Haitao12ORCID

Affiliation:

1. Shenzhen Engineering Center for the Fabrication of Two‐Dimensional Atomic Crystals, Shenzhen Institute of Advanced Technology Chinese Academy of Sciences Shenzhen the People's Republic of China

2. Department of Chemical and Environmental Engineering The University of Nottingham Ningbo China Ningbo the People's Republic of China

3. Hubei Three Gorges Laboratory Yichang Hubei the People's Republic of China

4. Innovation Institute for Artificial Intelligence in Medicine College of Pharmaceutical Sciences, Zhejiang University Hangzhou the People's Republic of China

5. Department of Chemical Engineering Massachusetts Institute of Technology Cambridge Massachusetts USA

6. Department of Physics, Department of Materials Science and Engineering, and Department of Biomedical Engineering City University of Hong Kong Kowloon, Hong Kong the People's Republic of China

Abstract

AbstractOwing to increasing global demand for carbon neutral and fossil‐free energy systems, extensive research is being conducted on efficient and inexpensive electrocatalysts for catalyzing the kinetically sluggish oxygen reduction reaction (ORR) at the cathode of fuel cells. Platinum (Pt)‐based alloys are considered promising candidates for replacing expensive Pt catalysts. However, the current screening process of Pt‐based alloys is time‐consuming and labor‐intensive, and the descriptor for predicting the activity of Pt‐based catalysts is generally inaccurate. This study proposed a strategy by combining high‐throughput first‐principles calculations and machine learning to explore the descriptor used for screening Pt‐based alloy catalysts with high Pt utilization and low Pt consumption. Among the 77 prescreened candidates, we identified 5 potential candidates for catalyzing ORR with low overpotential. Furthermore, during the second and third rounds of active learning, more Pt‐based alloys ORR candidates are identified based on the relationship between structural features of Pt‐based alloys and their activity. In addition, we highlighted the role of structural features in Pt‐based alloys and found that the difference between the electronegativity of Pt and heteroatom, the valence electrons number of the heteroatom, and the ratio of heteroatoms around Pt are the main factors that affect the activity of ORR. More importantly, the combination of those structural features can be used as structural descriptor for predicting the activity of Pt‐based alloys. We believe the findings of this study will provide new insight for predicting ORR activity and contribute to exploring Pt‐based electrocatalysts with high Pt utilization and low Pt consumption experimentally.image

Funder

National Natural Science Foundation of China

Natural Science Foundation of Guangdong Province

Publisher

Wiley

Subject

Materials Chemistry,Surfaces, Coatings and Films,Materials Science (miscellaneous),Electronic, Optical and Magnetic Materials

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