Advanced Intelligent Systems (Jan 2022)

Quantification of the Properties of Organic Molecules Using Core‐Loss Spectra as Neural Network Descriptors

  • Kakeru Kikumasa,
  • Shin Kiyohara,
  • Kiyou Shibata,
  • Teruyasu Mizoguchi

DOI
https://doi.org/10.1002/aisy.202100103
Journal volume & issue
Vol. 4, no. 1
pp. n/a – n/a

Abstract

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Artificial neural networks are applied to quantify the properties of organic molecules by introducing a new descriptor, a core‐loss spectrum, which is typically observed experimentally using electron or X‐ray spectroscopy. Using the calculated C K‐edge core‐loss spectra of organic molecules as the descriptor, the neural network models quantitatively predict both intensive and extensive properties, such as the gap between highest occupied molecular orbital (HOMO) and lowest unoccupied molecular orbital (LUMO) (HOMO–LUMO gap) and internal energy. The prediction accuracy estimated by the mean absolute errors for the HOMO–LUMO gap and internal energy is 0.205 and 97.3 eV, respectively, which are comparable with those of previously reported chemical descriptors. This study indicates that the neural network approach using the core‐loss spectra as the descriptor has the potential to deconvolute the abundant information available in core‐loss spectra for both prediction and experimental characterization of many physical properties. The study shows the practical potential of machine‐learning‐based material property measurements taking advantage of experimental core‐loss spectra, which can be measured with high sensitivity, high spatial resolution, and high temporal resolution.

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