Identification and Structural Characterization of Twisted Atomically Thin Bilayer Materials by Deep Learning.
Haitao YangRuiqi HuHeng WuXiaolong HeYan ZhouYizhe XueKexin HeWenshuai HuHaosen ChenMingming GongXin ZhangPing-Heng TanEduardo R HernándezYong XiePublished in: Nano letters (2024)
Two-dimensional materials are expected to play an important role in next-generation electronics and optoelectronic devices. Recently, twisted bilayer graphene and transition metal dichalcogenides have attracted significant attention due to their unique physical properties and potential applications. In this study, we describe the use of optical microscopy to collect the color space of chemical vapor deposition (CVD) of molybdenum disulfide (MoS 2 ) and the application of a semantic segmentation convolutional neural network (CNN) to accurately and rapidly identify thicknesses of MoS 2 flakes. A second CNN model is trained to provide precise predictions on the twist angle of CVD-grown bilayer flakes. This model harnessed a data set comprising over 10,000 synthetic images, encompassing geometries spanning from hexagonal to triangular shapes. Subsequent validation of the deep learning predictions on twist angles was executed through the second harmonic generation and Raman spectroscopy. Our results introduce a scalable methodology for automated inspection of twisted atomically thin CVD-grown bilayers.
Keyphrases
- convolutional neural network
- deep learning
- transition metal
- raman spectroscopy
- high resolution
- artificial intelligence
- machine learning
- room temperature
- epithelial mesenchymal transition
- high speed
- quantum dots
- big data
- mental health
- physical activity
- high throughput
- molecular dynamics simulations
- reduced graphene oxide
- resistance training
- highly efficient
- plant growth
- climate change
- label free
- walled carbon nanotubes
- high intensity