Login / Signup

Atomic-Scale 3D Structure of a Supported Pd Nanoparticle Revealed by Electron Tomography with Convolution Neural Network-Based Image Inpainting.

Hiroki IwaiFumiya NishinoTomokazu YamamotoMasaki KudoMasayuki TsushidaHiroshi YoshidaMasato MachidaJunya Ohyama
Published in: Small methods (2023)
Electron tomography based on scanning transmission electron microscopy (STEM) is used to analyze 3D structures of metal nanoparticles on the atomic scale. However, in the case of supported metal nanoparticle catalysts, the supporting material may interfere with the 3D reconstruction of metal nanoparticles. In this study, a deep learning-based image inpainting method is applied to high-angle annular dark field (HAADF)-STEM images of a supported metal nanoparticle to predict and remove the background image of the support. The inpainting method can separate an 11 nm Pd nanoparticle from the θ-Al 2 O 3 support in HAADF-STEM images of the θ-Al 2 O 3 -supported Pd catalyst. 3D reconstruction of the extracted images of the Pd nanoparticle reveals that the Pd nanoparticle adopts a deformed structure of the cuboctahedron model particle, resulting in high index surfaces, which account for the high catalytic activity for methane combustion. Using the xyz coordinate of each Pd atom, the local Pd-Pd bond distance and its variance in a real supported Pd nanoparticle are visualized, showing large strain and disorder at the Pd-Al 2 O 3 interface. The results demonstrate that 3D atomic-scale analysis enables atomic structure-based understanding and design of supported metal catalysts.
Keyphrases
  • deep learning
  • electron microscopy
  • convolutional neural network
  • neural network
  • high resolution
  • iron oxide
  • artificial intelligence
  • machine learning
  • highly efficient
  • molecular dynamics
  • data analysis