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Quality classification via Raman identification and SEM analysis of carbon nanotube bundles using artificial neural networks

机译:使用人工神经网络通过碳纳米管束的拉曼鉴定和SEM分析进行质量分类

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摘要

One of the major obstacles for successful mass production of carbon nanotubes ( CNTs) is performing quick and precise characterization of the properties of a given batch of nanotubes. In this paper, we have identified a set of intermediate steps that will lead to a comprehensive, scalable set of procedures for analyzing nanotubes. The proposed methodology was originated with data processing of Raman spectra of multi-wall carbon nanotubes ( MWCNT) turfs and image enhancement of SEM micrographs. Image analysis techniques of SEM images were employed and stereological relations were determined for SEM images of CNT structures; these results were utilized to estimate the morphology of the turf ( i.e. CNTs alignment and curvature) using an artificial neural networks ( ANN) classifier. This model was also used to investigate the link between Raman spectra of CNTs and the quality of the turf morphology. This novel methodology will improve our capability to control the quality of the grown nanotubes through the use of this system in a supervised growth environment.
机译:成功批量生产碳纳米管(CNT)的主要障碍之一是对给定一批纳米管的性能进行快速,精确的表征。在本文中,我们确定了一组中间步骤,这些步骤将导致用于分析纳米管的一套全面,可扩展的程序。所提出的方法源自多壁碳纳米管(MWCNT)草皮的拉曼光谱数据处理和SEM显微照片的图像增强。运用SEM图像的图像分析技术,确定了CNT结构SEM图像的立体关系。利用人工神经网络(ANN)分类器,将这些结果用于估算草皮的形态(即CNT的排列和曲率)。该模型还用于研究碳纳米管的拉曼光谱与草皮形态质量之间的联系。通过在有监督的生长环境中使用此系统,这种新颖的方法将提高我们控制生长的纳米管质量的能力。

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