4.6 Article

Solving the structure of single-atom catalysts using machine learning - assisted XANES analysis

Journal

PHYSICAL CHEMISTRY CHEMICAL PHYSICS
Volume 24, Issue 8, Pages 5116-5124

Publisher

ROYAL SOC CHEMISTRY
DOI: 10.1039/d1cp05513e

Keywords

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Funding

  1. National Science Foundation [CHE 2102299, CHE-2102655]
  2. Department of Energy (DOE) Office of Science User Facility [DE-SC0012704]
  3. DOE Office of Basic Energy Sciences [DE-SC0012335]
  4. Scientific Data and Computing Center, a component of the Computational Science Initiative, at Brookhaven National Laboratory [DE-SC0012704]

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This study utilized machine learning methods to analyze the structural information of single-atom catalysts (SAC) in photocatalysis, and obtained quantitative structural information of the nearest atomic environment of SAC using XANES spectra.
Single-atom catalysts (SACs) have demonstrated excellent activity and selectivity in challenging chemical transformations such as photocatalytic CO2 reduction. For heterogeneous photocatalytic SAC systems, it is essential to obtain sufficient information of their structure at the atomic level in order to understand reaction mechanisms. In this work, a SAC was prepared by grafting a molecular cobalt catalyst on a light-absorbing carbon nitride surface. Due to the sensitivity of the X-ray absorption near edge structure (XANES) spectra to subtle variances in the Co SAC structure in reaction conditions, different machine learning (ML) methods, including principal component analysis, K-means clustering, and neural network (NN), were utilized for in situ Co XANES data analysis. As a result, we obtained quantitative structural information of the SAC nearest atomic environment, thereby extending the NN-XANES approach previously demonstrated for nanoparticles and size-selective clusters.

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