AI Article Synopsis

  • - The study investigates defects in carbon fiber-reinforced polymers (CFRPs) after low-velocity impacts using X-ray techniques, noting that practical monitoring in the field is challenging.
  • - The research identifies and categorizes defects ranging from 1 nm to 1 mm, correlating these with material properties like fiber orientation and density, using machine learning to analyze the data.
  • - Three damage domains are found: severe damage with visible dents, intact areas with no defects, and transition zones with detectable defects, highlighting the relationship between parameters from different measurement techniques.

Article Abstract

Impact-induced defects in carbon fiber-reinforced polymers (CFRPs)-spanning from nanometer to macroscopic length scales-can be monitored using an aggregate of X-ray-based methods, but this is impractical in typical field conditions. We report on a low-velocity impacted CFRP, which is mapped using small- and wide-angle X-ray scattering and X-ray computed tomography, and employ machine learning for correlating material parameterizations derived from these techniques. The observed 1 m to 1 mm-sized defects are parameterized in terms of relative density and fiber orientation indicative of fiber failures (kink bands), and the nanometer sized defects in terms of crystal size and unit cell frustration. The 30 to 300 nm defects are parameterized by a power-law scattering decay, differentiating fractal-like behaviors. We find three spatial domains experimentally and by K-means Clustering: Domains of severe damage (with a visual dent), intact domains (without visual or measurable defects) and a transition domain (defects measurable by X-rays). How the parameters are correlated and how they overlap between the domains are discussed. All parameters are able to point to the detrimental fiber breakage in the severe damage domain, and scattering decay also in the transition domain, for example. How individual parameters determined from one experimental technique can be predicted from that of another is also described.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11487195PMC
http://dx.doi.org/10.1038/s41598-024-76105-6DOI Listing

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