Nature Communications (Sep 2024)

Machine learning-assisted dual-atom sites design with interpretable descriptors unifying electrocatalytic reactions

  • Xiaoyun Lin,
  • Xiaowei Du,
  • Shican Wu,
  • Shiyu Zhen,
  • Wei Liu,
  • Chunlei Pei,
  • Peng Zhang,
  • Zhi-Jian Zhao,
  • Jinlong Gong

DOI
https://doi.org/10.1038/s41467-024-52519-8
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 13

Abstract

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Abstract Low-cost, efficient catalyst high-throughput screening is crucial for future renewable energy technology. Interpretable machine learning is a powerful method for accelerating catalyst design by extracting physical meaning but faces huge challenges. This paper describes an interpretable descriptor model to unify activity and selectivity prediction for multiple electrocatalytic reactions (i.e., O2/CO2/N2 reduction and O2 evolution reactions), utilizing only easily accessible intrinsic properties. This descriptor, named ARSC, successfully decouples the atomic property (A), reactant (R), synergistic (S), and coordination effects (C) on the d-band shape of dual-atom sites, which is built upon our developed physically meaningful feature engineering and feature selection/sparsification (PFESS) method. Driven by this descriptor, we can rapidly locate optimal catalysts for various products instead of over 50,000 density functional theory calculations. The model’s universality has been validated by abundant reported works and subsequent experiments, where Co-Co/Ir-Qv3 are identified as optimal bifunctional oxygen reduction and evolution electrocatalysts. This work opens the avenue for intelligent catalyst design in high-dimensional systems linked with physical insights.