JVSS 2023

Presentation information

Divisions' Session

[1Fa01-05] Data-driven research and development focused on data generation/storage/analysis: Data-Driven Surface Science Division's Session

Tue. Oct 31, 2023 9:30 AM - 12:15 PM F: Room223 (2F)

Chair:Yasunobu Ando(AIST)

11:15 AM - 11:45 AM

[1Fa04] Machine-learning based spectral analysis of chemical vapor deposited monolayer MoS2–Nb-doped MoS2 lateral homojunctions

*Mitsuhiro Okada1, Naoka Nagamura2, Tarojiro Matsumura3, Yasunobu Ando3, Toshitaka Kubo4, Takatoshi Yamada1 (1. Nano Carbon Device Research Center, National Institute of Advanced Industrial Science and Technology (AIST), 2. Center for Basic Research on Materials, National Institute for Materials Science, 3. Research Center for Computational Design of Advanced Functional Materials, National Institute of Advanced Industrial Science and Technology (AIST), 4. Nanomaterials Research Institute, National Institute of Advanced Industrial Science and Technology (AIST))

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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