Novel Classification of Inclusion Defects in Glass Fiber-Reinforced Polymer Based on THz-TDS and One-Dimensional Neural Network Sequential Models

Yue Shi, Xuanhui Li, Jianwei Ao, Keju Liu, Yuan Li, Hui Cheng

Research output: Contribution to journalArticlepeer-review

Abstract

Fiber-reinforced composites, such as glass fiber-reinforced polymer (GFRP), are widely used across industries but are susceptible to inclusion defects during manufacturing. Detecting and classifying these defects is crucial for ensuring material integrity. This study classifies four common inclusion defects—metal, peel ply, release paper, and PTFE film—in GFRP using terahertz technology and machine learning. Two GFRP sheets with inclusion defects at different depths were fabricated. Terahertz time-domain signals were acquired, and a cross-correlation-based deconvolution algorithm extracted impulse responses. LSTM-RNN, Bi-LSTM RNN, and 1D-CNN models were trained and tested on time-domain, frequency-domain, and impulse response signals. The defect-free region exhibited the highest classification accuracy. Bi-LSTM RNN achieved the best recall and macro F1-score, followed by 1D-CNN, while LSTM-RNN performed worse. Training with impulse response signals improved classification while maintaining accuracy.

Original languageEnglish
Article number250
JournalPhotonics
Volume12
Issue number3
DOIs
StatePublished - Mar 2025

Keywords

  • cross-correlation
  • defect classification
  • GFRP
  • inclusion defects
  • neural network
  • terahertz technology

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