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Detecting Carbon Nanotube Orientation with Topological Analysis of Scanning Electron Micrographs.

Liyu DongHaibin HangJin Gyu ParkWashington MioRichard Liang
Published in: Nanomaterials (Basel, Switzerland) (2022)
As the aerospace industry is increasingly demanding stronger, lightweight materials, ultra-strong carbon nanotube (CNT) composites with highly aligned CNT network structures could be the answer. In this work, a novel methodology applying topological data analysis (TDA) to scanning electron microscope (SEM) images was developed to detect CNT orientation. The CNT bundle extensions in certain directions were summarized algebraically and expressed as visible barcodes. The barcodes were then calculated and converted into the total spread function, V ( X , θ ), from which the alignment fraction and the preferred direction could be determined. For validation purposes, the random CNT sheets were mechanically stretched at various strain ratios ranging from 0 to 40%, and quantitative TDA was conducted based on the SEM images taken at random positions. The results showed high consistency (R 2 = 0.972) compared to Herman's orientation factors derived from polarized Raman spectroscopy and wide-angle X-ray scattering analysis. Additionally, the TDA method presented great robustness with varying SEM acceleration voltages and magnifications, which might alter the scope of alignment detection. With potential applications in nanofiber systems, this study offers a rapid and simple way to quantify CNT alignment, which plays a crucial role in transferring the CNT properties into engineering products.
Keyphrases
  • carbon nanotubes
  • high resolution
  • data analysis
  • electron microscopy
  • raman spectroscopy
  • deep learning
  • convolutional neural network
  • optical coherence tomography
  • climate change
  • gold nanoparticles
  • neural network