Spatially Resolved Band Gap and Dielectric Function in Two-Dimensional Materials from Electron Energy Loss Spectroscopy

Journal Article (2022)
Author(s)

Abel Brokkelkamp (TU Delft - Applied Sciences, Kavli institute of nanoscience Delft)

Jaco Ter Hoeve (Vrije Universiteit Amsterdam)

Isabel Postmes (Kavli institute of nanoscience Delft, Student TU Delft)

Sabrya E. Van Heijst (TU Delft - Applied Sciences, Kavli institute of nanoscience Delft)

Louis Maduro (Kavli institute of nanoscience Delft, TU Delft - Applied Sciences)

Albert V. Davydov (National Institute of Standards and Technology)

Sergiy Krylyuk (National Institute of Standards and Technology)

Juan Rojo (Vrije Universiteit Amsterdam)

Sonia Conesa-Boj (Kavli institute of nanoscience Delft, TU Delft - Applied Sciences)

Research Group
QN/Conesa-Boj Lab
DOI related publication
https://doi.org/10.1021/acs.jpca.1c09566 Final published version
More Info
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Publication Year
2022
Language
English
Research Group
QN/Conesa-Boj Lab
Issue number
7
Volume number
126
Pages (from-to)
1255-1262
Downloads counter
357
Collections
Institutional Repository
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Abstract

The electronic properties of two-dimensional (2D) materials depend sensitively on the underlying atomic arrangement down to the monolayer level. Here we present a novel strategy for the determination of the band gap and complex dielectric function in 2D materials achieving a spatial resolution down to a few nanometers. This approach is based on machine learning techniques developed in particle physics and makes possible the automated processing and interpretation of spectral images from electron energy loss spectroscopy (EELS). Individual spectra are classified as a function of the thickness with K-means clustering, and then used to train a deep-learning model of the zero-loss peak background. As a proof of concept we assess the band gap and dielectric function of InSe flakes and polytypic WS2 nanoflowers and correlate these electrical properties with the local thickness. Our flexible approach is generalizable to other nanostructured materials and to higher-dimensional spectroscopies and is made available as a new release of the open-source EELSfitter framework.