4.8 Article

Inverting X-ray Absorption Spectra of Catalysts by Machine Learning in Search for Activity Descriptors

Journal

ACS CATALYSIS
Volume 9, Issue 11, Pages 10192-10211

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acscatal.9b03599

Keywords

X-ray absorption spectroscopy; heterogeneous catalysis; machine learning; neural networks; principal component analysis; clustering; multivariate curve resolution

Funding

  1. Laboratory Directed Research and Development Program through Brookhaven National Laboratory under U.S. Department of Energy [LDRD 18-047, DESC0012704]
  2. U.S. Department of Energy, Office of Basic Energy Sciences [DE-FG02-03ER15476]
  3. Integrated Mesoscale Architectures for Sustainable Catalysis (IMASC), an Energy Frontier Research Center - U.S. Department of Energy, Office of Science, Basic Energy Sciences [DE-SC0012573]
  4. European Research Council (ERC) under,the European Union [725915]
  5. European Research Council (ERC) [725915] Funding Source: European Research Council (ERC)

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The rapid growth of methods emerging in the past decade for synthesis of designer catalysts-ranging from the size and shape-selected nanoparticles to mass-selected clusters, to precisely engineered bimetallic surfaces, to single site and pair site catalysts-has opened opportunities for tailoring the catalyst structure for the desired activity and selectivity. It has also sharpened the need for developing approaches to the operando characterization, ones that identify the catalytic active sites and follow their evolutions in reaction conditions. Commonly used methods for determination of the activity descriptors in the nanocatalysts, based on the correlation between the changes in catalyst performance and evolution of its structural and electronic properties, are hampered by the paucity of experimental techniques that can detect such properties with high accuracy and in reaction conditions. Out of many such techniques, X-ray absorption spectroscopy (XAS) stands out as an element-specific method that is very sensitive to the local geometric and electronic properties of the metal atoms and their surroundings and, therefore, is able to track catalyst structure modifications in operando conditions. Despite the vast amount of structure-specific information (such as, e.g., the charge states and radial distribution function of neighbors of selected atomic species) stored in the XAS data of catalysts, extracting it from the spectra is challenging, especially in the conditions of low metal weight loading, nanoscale dimensions, heterogeneous size and composition distributions, and harsh reaction environment. In this Perspective, we discuss the recent developments in XAS data analysis achieved by employing supervised and unsupervised machine learning (ML) methods for structural characterization of catalysts. By benefiting from the sensitivity of ML methods to subtle variations in experimental data, a previously hidden relationship between the X-ray absorption spectrum and descriptors of material's structure and/or composition can be found, as illustrated on representative examples of mono-, hetero-, and nonmetallic catalysts. In the case of supervised ML, the experimental spectra can be rapidly inverted, and the structure of the catalyst can be tracked in real time and in reaction conditions. Emerging opportunities for catalysis research that the ML methods enable, such as high-throughput data analysis, and their applications to other experimental probes of catalyst structure are discussed.

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