异质结
范德瓦尔斯力
材料科学
半导体
表征(材料科学)
接口(物质)
化学气相沉积
人工神经网络
纳米技术
光电子学
计算机科学
人工智能
化学
分子
复合材料
有机化学
毛细管作用
毛细管数
作者
Li Zhu,Jing Tang,Baichang Li,Tianyu Hou,Yong Zhu,Jiadong Zhou,Zhi Wang,Xiaorong Zhu,Zhenpeng Yao,Xu Cui,Kenji Watanabe,Takashi Taniguchi,Yafei Li,Zheng Han,Wu Zhou,Yuan Huang,Zheng Liu,James Hone,Yufeng Hao
出处
期刊:ACS Nano
[American Chemical Society]
日期:2022-01-18
卷期号:16 (2): 2721-2729
被引量:27
标识
DOI:10.1021/acsnano.1c09644
摘要
Two-dimensional (2D) materials and their in-plane and out-of-plane (i.e., van der Waals, vdW) heterostructures are promising building blocks for next-generation electronic and optoelectronic devices. Since the performance of the devices is strongly dependent on the crystalline quality of the materials and the interface characteristics of the heterostructures, a fast and nondestructive method for distinguishing and characterizing various 2D building blocks is desirable to promote the device integrations. In this work, based on the color space information on 2D materials' optical microscopy images, an artificial neural network-based deep learning algorithm is developed and applied to identify eight kinds of 2D materials with accuracy well above 90% and a mean value of 96%. More importantly, this data-driven method enables two interesting functionalities: (1) resolving the interface distribution of chemical vapor deposition (CVD) grown in-plane and vdW heterostructures and (2) identifying defect concentrations of CVD-grown 2D semiconductors. The two functionalities can be utilized to quickly identify sample quality and optimize synthesis parameters in the future. Our work improves the characterization efficiency of atomically thin materials and is therefore valuable for their research and applications.
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