AI Article Synopsis

  • Transition-metal nitrogen-doped carbons (TM-N-C) are promising catalysts for electrocatalytic processes like the CO reduction reaction (CORR) due to their unique metal sites.
  • The dynamic and fluctuating nature of these catalysts makes it hard to determine their actual active structures, limited by current experimental techniques.
  • This study utilizes operando X-ray absorption spectroscopy (XAS) and advanced data analysis to investigate the local structure of the Co-N-C catalyst, improving understanding of CORR mechanisms and aiding in the optimization of TM-N-C catalysts.

Article Abstract

Transition-metal nitrogen-doped carbons (TM-N-C) are emerging as a highly promising catalyst class for several important electrocatalytic processes, including the electrocatalytic CO reduction reaction (CORR). The unique local environment around the singly dispersed metal site in TM-N-C catalysts is likely to be responsible for their catalytic properties, which differ significantly from those of bulk or nanostructured catalysts. However, the identification of the actual working structure of the main active units in TM-N-C remains a challenging task due to the fluctional, dynamic nature of these catalysts, and scarcity of experimental techniques that could probe the structure of these materials under realistic working conditions. This issue is addressed in this work and the local atomistic and electronic structure of the metal site in a Co-N-C catalyst for CORR is investigated by employing time-resolved operando X-ray absorption spectroscopy (XAS) combined with advanced data analysis techniques. This multi-step approach, based on principal component analysis, spectral decomposition and supervised machine learning methods, allows the contributions of several co-existing species in the working Co-N-C catalysts to be decoupled, and their XAS spectra deciphered, paving the way for understanding the CORR mechanisms in the Co-N-C catalysts, and further optimization of this class of electrocatalytic systems.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11226159PMC
http://dx.doi.org/10.1107/S1600577524004739DOI Listing

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