J. Compos. Sci., Vol. 9, Pages 295: Machine Vision Framework for Real-Time Surface Yarn Alignment Defect Detection in Carbon-Fiber-Reinforced Polymer Preforms


J. Compos. Sci., Vol. 9, Pages 295: Machine Vision Framework for Real-Time Surface Yarn Alignment Defect Detection in Carbon-Fiber-Reinforced Polymer Preforms

Journal of Composites Science doi: 10.3390/jcs9060295

Authors:
Lun Li
Shixuan Yao
Shenglei Xiao
Zhuoran Wang

Carbon-fiber-reinforced polymer (CFRP) preforms are vital for high-performance composite structures, yet the real-time detection of surface yarn alignment defects is hindered by complex textures. This study introduces a novel machine vision framework to enable the precise, real-time identification of such defects in CFRP preforms. We proposed obtaining the frequency spectrum by removing the zero-frequency component from the projection curve of images of carbon fiber fabric, aiding in the identification of the cycle number for warp and weft yarns. A texture structure recognition method based on the artistic conception drawing (ACD) revert is applied to distinguishing the complex and diverse surface texture of the woven carbon fabric prepreg from potential surface defects. Based on the linear discriminant analysis for defect area threshold extraction, a defect boundary tracking algorithm rule was developed to achieve defect localization. Using over 1500 images captured from actual production lines to validate and compare the performance, the proposed method significantly outperforms the other inspection approaches, achieving a 97.02% recognition rate with a 0.38 s per image processing time. This research contributes new scientific insights into the correlation between yarn alignment anomalies and a machine-vision-based texture analysis in CFRP preforms, potentially advancing our fundamental understanding of the defect mechanisms in composite materials and enabling data-driven quality control in advanced manufacturing.



Source link

Lun Li www.mdpi.com