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AI-accelerated discovery of defect-engineered heteroatom-doped carbon electrocatalysts for electrochemical CO₂ reduction to C₂⁺ products

Mohammad Fazle Rabbi · Elsevier · 2026

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Selective electrochemical CO₂ reduction to multi-carbon products remains a central bottleneck for carbon-neutral chemical manufacturing, with most catalysts achieving C₂⁺ Faradaic efficiencies below 75%. This investigation integrates high-throughput density functional theory with ensemble machine learning to screen 8000 heteroatom-doped carbon configurations. Ensemble models combining Random Forest, Gradient Boosting, and XGBoost achieve cross-validated R2=0.8760±0.0274 with Gaussian residuals, enabling prediction of C₂⁺ Faradaic efficiency from electronic, geometric, and adsorption descriptors. Computational optimization identifies ternary N–S–P–doped architectures with Stone–Wales defects (7.3 at%, 4.6% defect density) predicted to exhibit C–C coupling barriers of 0.61 eV within the thermodynamically favorable 0.5–0.75 eV window. DFT-optimized atomic configurations reveal three synergistic mechanistic pathways; nitrogen substitution lowers the local work function from 4.5 to 4.2 eV, reducing the onset overpotential by 0.18 V; complementary S–P electronegativity contrast establishes a Bader charge asymmetry of Δq=0.31 at adjacent carbon sites, preferentially stabilizing the *COCO transition state; and Stone–Wales rearrangement elongates C–C bonds to 1.44 Å, collectively reducing the coupling barrier by ΔΔG‡=0.30 eV relative to pristine graphene, confirmed by CI-NEB calculations on 12 representative ternary configurations. *COCO adsorption energy as the dominant descriptor (importance = 0.1471). Multi-objective Pareto optimization yields 301 configurations, with the highest-performing candidate CAT06928 predicted to achieve 89.5 ± 1.7% C₂⁺ Faradaic efficiency, 301 ± 9 mA cm⁻² current density, and C₂⁺/CO selectivity ratio of 15.71. Techno-economic modeling projects costs below $0.50 per kg and 51.4% life-cycle carbon footprint reduction relative to fossil-fueled thermal CO₂ conversion, providing quantitative design principles for metal-free electrocatalysts requiring experimental validation.

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APA 7

Rabbi, M. F. (2026). AI-accelerated discovery of defect-engineered heteroatom-doped carbon electrocatalysts for electrochemical CO₂ reduction to C₂⁺ products. https://doi.org/10.1016/j.jcou.2026.103432

MLA

Rabbi, Mohammad Fazle. "AI-accelerated discovery of defect-engineered heteroatom-doped carbon electrocatalysts for electrochemical CO₂ reduction to C₂⁺ products." 2026. https://doi.org/10.1016/j.jcou.2026.103432.

Chicago

Rabbi, Mohammad Fazle. 2026. "AI-accelerated discovery of defect-engineered heteroatom-doped carbon electrocatalysts for electrochemical CO₂ reduction to C₂⁺ products.". https://doi.org/10.1016/j.jcou.2026.103432.

Harvard

Rabbi, M. F. 2026, AI-accelerated discovery of defect-engineered heteroatom-doped carbon electrocatalysts for electrochemical CO₂ reduction to C₂⁺ products, Elsevier, available at: https://doi.org/10.1016/j.jcou.2026.103432 [Accessed 28 Jun. 2026].

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Título
AI-accelerated discovery of defect-engineered heteroatom-doped carbon electrocatalysts for electrochemical CO₂ reduction to C₂⁺ products
Autor / colaboradores
Mohammad Fazle Rabbi
Editorial
Elsevier
Año de publicación
2026
ISSN
2212-9839
ISSN
2212-9839
Idioma
eng

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