Layer number identification of CVD-grown multilayer graphene using Si peak analysis.
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| Abstract | 
   :  
              Since the successful exfoliation of graphene, various methodologies have been developed to identify the number of layers of exfoliated graphene. The optical contrast, Raman G-peak intensity, and 2D-peak line-shape are currently widely used as the first level of inspection for graphene samples. Although the combination analysis of G- and 2D-peaks is powerful for exfoliated graphene samples, its use is limited in chemical vapor deposition (CVD)-grown graphene because CVD-grown graphene consists of various domains with randomly rotated crystallographic axes between layers, which makes the G- and 2D-peaks analysis difficult for use in number identification. We report herein that the Raman Si-peak intensity can be a universal measure for the number identification of multilayered graphene. We synthesized a few-layered graphene via the CVD method and performed Raman spectroscopy. Moreover, we measured the Si-peak intensities from various individual graphene domains and correlated them with the corresponding layer numbers. We then compared the normalized Si-peak intensity of the CVD-grown multilayer graphene with the exfoliated multilayer graphene as a reference and successfully identified the layer number of the CVD-grown graphene. We believe that this Si-peak analysis can be further applied to various 2-dimensional (2D) materials prepared by both exfoliation and chemical growth.  | 
        
| Year of Publication | 
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              2018 
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| Journal | 
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              Scientific reports 
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| Volume | 
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              8 
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| Issue | 
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              1 
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| Number of Pages | 
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              571 
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| Date Published | 
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              2018 
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| URL | 
   :  
              http://dx.doi.org/10.1038/s41598-017-19084-1 
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| DOI | 
   :  
              10.1038/s41598-017-19084-1 
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| Short Title | 
   :  
              Sci Rep 
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