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Engineering graphyne-supported single-atom catalysts for efficient nitrogen reduction to ammonia: First-principles investigation.

作者信息

Teleb Nahed H, Abou El-Reash Yasmeen G, Elamin Nuha Y, Sakr Mahmoud A S, Saad Mohamed A, Abdelsalam Hazem

机构信息

Electron Microscope and Thin Films Department, National Research Centre, El-Buhouth Str., Dokki, 12622, Giza, Egypt.

Department of Chemistry, College of Science, Imam Mohammad Ibn Saud Islamic University (IMSIU), PO Box, 90950, Riyadh, 11623, Saudi Arabia.

出版信息

J Mol Graph Model. 2025 Nov;140:109136. doi: 10.1016/j.jmgm.2025.109136. Epub 2025 Aug 6.

DOI:10.1016/j.jmgm.2025.109136
PMID:40779834
Abstract

The electrochemical nitrogen reduction reaction (NRR) offers a sustainable route to ammonia production under ambient conditions but remains limited by inert N ≡ N bond activation and competitive hydrogen evolution reaction (HER). Herein, we employ first-principles density functional theory (DFT) to systematically investigate the NRR activity of graphyne (GY) doped with single-atom transition metals (Fe, Mo, Ru, W). Structural analysis reveals strong binding and minimal distortion of the TM dopants on the porous, π-conjugated GY scaffold, with Fe-GY and W-GY exhibiting the highest stability. TM doping induces substantial bandgap narrowing and introduces localized d-orbital states near the Fermi level, enhancing charge transfer and catalytic potential. Adsorption studies show that TM sites effectively activate N via π-backdonation, with W-GY inducing the greatest N ≡ N bond elongation. Free energy profiles demonstrate that TM-GY catalysts significantly lower the limiting potential for NRR compared to pristine GY, with Fe-Gy and W-GY achieving the most favorable limiting potential via the alternating mechanism. HER analysis reveals Ru-GY possesses near-optimal hydrogen adsorption energy (ΔG = -0.25 eV), suggesting high activity but possible competition with NRR. In contrast, Mo-GY and W-GY exhibit stronger H binding, potentially suppressing HER and improving NRR selectivity. This work identifies TM-doped GY as a versatile platform for single-atom catalysis and offers design principles for optimizing selectivity and efficiency in electrochemical nitrogen fixation.

摘要

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