Artificial intelligence-driven unraveling of the critical factor of heteroatom-doped carbon-based ORR catalysts

Abstract

This work leverages artificial intelligence (AI) to explore the crucial factor in optimizing heteroatom-doped carbon-based ORR catalysts. A dataset of 3375 data points, 23 features, and 2 labels is analyzed using 8 AI algorithms, achieving over 72% accuracy. AI findings reveal graphitic-N content as the primary factor affecting the half-wave potential. Moreover, the pyrolysis holding time (23.8 to 27.2%) contributes more significantly to graphitic-N content than the pyrolysis temperature (13.3 to 14.7%), challenging prior studies that prioritize temperature as the main factor. AI uncovers a novel empirical observation, revealing that the pyrolysis holding time influences the half-wave potential by modulating graphitic-N content. To validate these findings, graphitic-N-doped carbon-based ORR catalysts are synthesized using urea and XC-72. A strong positive correlation between graphitic-N content and half-wave potential is confirmed, with a 1 h extension of pyrolysis time, leading to a more significant increase in graphitic-N content (0.25 to 0.60 at%) than a 100 °C increase in temperature (0.12 to 0.32 at%). AIMD and DFT calculations show that graphitic-N atoms are more thermally stable than pyrrolic-N and pyridinic-N, which explains the increase in graphitic-N content with longer pyrolysis times, while pyrrolic-N and pyridinic-N atoms volatilize. This work presents an innovative AI-driven experimental paradigm for ORR catalyst design.

Graphical abstract: Artificial intelligence-driven unraveling of the critical factor of heteroatom-doped carbon-based ORR catalysts

Supplementary files

Article information

Article type
Paper
Submitted
24 Jan 2026
Accepted
01 May 2026
First published
26 May 2026

J. Mater. Chem. A, 2026, Advance Article

Artificial intelligence-driven unraveling of the critical factor of heteroatom-doped carbon-based ORR catalysts

J. Zhang, J. Wang, Y. Fu, L. Cao, X. Peng, G. Huang, W. Peng, C. Wu, Y. Liang, W. Wei and J. Yang, J. Mater. Chem. A, 2026, Advance Article , DOI: 10.1039/D6TA00692B

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