11:15 AM - 11:45 AM
[1Fa04] Machine-learning based spectral analysis of chemical vapor deposited monolayer MoS2–Nb-doped MoS2 lateral homojunctions
Emerging the application of machine-learning in materials science and the automation of the measurements have made the burden of the analysis of the obtained datasets precisely. In this presentation, we demonstrate the machine-learning-based spectral analysis to the electron spectroscopy for chemical analysis (ESCA) datasets measured from a chemical vapor-deposition grown monolayer MoS2–Nb-doped MoS2 lateral homojunctions. The ESCA measurement and following analysis successfully visualized the spatial distribution of the existence of Nb4+ atoms and the binding energy shift of Mo4+ 3d5/2, indicating the partial doping of Nb and corresponding co-existence of p- and n-type nature in the same MoS2 crystals. The analysis took only a few days to make the results. Thus, the autonomous spectral fitting techniques can allow us to use more time to not analyze the results, but experiments.
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