High‐Throughput Screening of Electrocatalysts for Nitrogen Reduction Reactions Accelerated by Interpretable Intrinsic Descriptor

Author:

Lin Xiaoyun12,Wang Yongtao12,Chang Xin12,Zhen Shiyu12,Zhao Zhi‐Jian12,Gong Jinlong1234ORCID

Affiliation:

1. Key Laboratory for Green Chemical Technology of Ministry of Education School of Chemical Engineering and Technology Tianjin University Collaborative Innovation Center of Chemical Science and Engineering (Tianjin) Weijin Road 92 300072 Tianjin China

2. Haihe Laboratory of Sustainable Chemical Transformations 300192 Tianjin China

3. National Industry-Education Platform of Energy Storage Tianjin University 135 Yaguan Road 300350 Tianjin China

4. Joint School of National University of Singapore Tianjin University International Campus of Tianjin University Binhai New City 350207 Fuzhou China

Abstract

AbstractDeveloping easily accessible descriptors is crucial but challenging to rationally design single‐atom catalysts (SACs). This paper describes a simple and interpretable activity descriptor, which is easily obtained from the atomic databases. The defined descriptor proves to accelerate high‐throughput screening of more than 700 graphene‐based SACs without computations, universal for 3–5d transition metals and C/N/P/B/O‐based coordination environments. Meanwhile, the analytical formula of this descriptor reveals the structure–activity relationship at the molecular orbital level. Using electrochemical nitrogen reduction as an example, this descriptor's guidance role has been experimentally validated by 13 previous reports as well as our synthesized 4 SACs. Orderly combining machine learning with physical insights, this work provides a new generalized strategy for low‐cost high‐throughput screening while comprehensive understanding the structure‐mechanism‐activity relationship.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

General Medicine

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