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Photo of Axel Eriksson

Axel Eriksson

Associate senior lecturer

Photo of Axel Eriksson

On-line compositional measurements of AuAg aerosol nanoparticles generated by spark ablation using optical emission spectroscopy

Author

  • Markus Snellman
  • Per Samuelsson
  • Axel Eriksson
  • Zhongshan Li
  • Knut Deppert

Summary, in English

Spark ablation is an established technique for generating aerosol nanoparticles. Recent demonstrations of compositional tuning of bimetallic aerosols have led to a demand for on-line stoichiometry measurements. In this work, we present a simple, non-intrusive method to determine the composition of a binary AuAg nanoparticle aerosol on-line using the optical emission from the electrical discharges. Machine learning models based on the least absolute shrinkage and selection operator (LASSO) were trained on optical spectra datasets collected during aerosol generation and labelled with X-ray fluorescence spectroscopy (XRF) compositional measurements. Models trained for varying discharge energies demonstrated good predictability of nanoparticle stoichiometry with mean absolute errors <10 at. %. While the models utilized the emission spectra at different wavelengths in the predictions, a combined model using spectra from all discharge energies made accurate predictions of the AuAg nanoparticle composition, showing the method's robustness under variable synthesis conditions.

Department/s

  • NanoLund: Center for Nanoscience
  • Solid State Physics
  • Combustion Physics
  • Ergonomics and Aerosol Technology

Publishing year

2022-09

Language

English

Publication/Series

Journal of Aerosol Science

Volume

165

Document type

Journal article

Publisher

Elsevier

Topic

  • Nano Technology
  • Atom and Molecular Physics and Optics

Keywords

  • Bimetallic nanoparticles
  • Machine learning
  • Optical diagnostics
  • Plasma spectroscopy
  • Spark ablation

Status

Published

ISBN/ISSN/Other

  • ISSN: 0021-8502