Detection of Low-Velocity Impact Damage in Woven-Fabric Reinforced Thermoplastic Composite Laminates by Deep-Learning Classification Trained on Terahertz-Imaging Data
Communication avec acte
Auteur
178323 Laboratoire d'Etude des Microstructures et de Mécanique des Matériaux [LEM3]
24541 Georgia Tech Lorraine [Metz]
178323 Laboratoire d'Etude des Microstructures et de Mécanique des Matériaux [LEM3]
82338 School of Electrical and Computer Engineering - Georgia Insitute of Technology [ECE GeorgiaTech]
24541 Georgia Tech Lorraine [Metz]
82338 School of Electrical and Computer Engineering - Georgia Insitute of Technology [ECE GeorgiaTech]
24541 Georgia Tech Lorraine [Metz]
216445 George W. Woodruff School of Mechanical Engineering
24541 Georgia Tech Lorraine [Metz]
82338 School of Electrical and Computer Engineering - Georgia Insitute of Technology [ECE GeorgiaTech]
Date
2025-08Résumé
Terahertz (THz) imaging is gaining attention as a nondestructive testing technique for assessing damage due to its high axial resolution and nonionizing nature, presenting a promising alternative to conventional methods such as ultrasound and X-ray imaging. Its practical implementation, however, remains limited by the reliance on expert interpretation and the frequent need for validation using supplementary techniques such as X-ray microcomputed tomography (µCT), particularly for complex damage modes. This study focuses on woven-fabric-reinforced thermoplastic composites subjected to low-velocity impact, which typically causes barely visible impact damage (BVID). The damage is subtle yet critical, potentially leading to failure under subsequent loading. The multilayered and spatially distributed characteristics of BVID make it especially challenging to identify. To overcome these challenges, this work integrates deep learning with pulsed THz time-of-flight tomography (TOFT) imaging to enable automated damage detection in composite laminates. In contrast to existing research that mainly targets delamination using A- or C-scan data, this study emphasizes the detection of low-velocity impact damage by leveraging THz B-scans, which offer nondestructive depth-resolved cross-sectional imaging. The training dataset is labeled by correlating THz TOFT scans with X-ray CT images used as ground truth. A transfer learning approach, based on convolutional neural network (CNN) architectures, is employed for binary classification to distinguish damaged from undamaged regions. The resulting classifier achieves over 95 % accuracy, demonstrating the viability of this method for industrial applications such as quality assurance and in-service inspection of composite structures.
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Documents liés
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Article dans une revue avec comité de lectureSILITONGA, Dicky J.; POMARÈDE, Pascal; BAWANA, Niyem M.; SHI, Haolian; DECLERCQ, Nico F.; CITRIN, D. S.; MERAGHNI, Fodil; LOCQUET, Alexandre (Elsevier, 2026-01)Reliable detection of barely visible impact damage is critical to ensure the structural integrity of composite components in service, particularly in safety-critical applications such as pressure vessels and transportation ...
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Article dans une revue avec comité de lecturePOMARÈDE, Pascal; CHEHAMI, Lynda; DECLERCQ, Nico Felicien;
MERAGHNI, Fodil; DONG, Junliang; LOCQUET, Alexandre; CITRIN, D. S. (Springer Verlag, 2019)
The consequences of a four-point bending test, up to 12 mm, are examined by emitting 1 MHz ultrasonic guided waves in woven carbon fiber reinforced polymer specimens, using coda wave interferometry (CWI), revealing a ... -
Article dans une revue avec comité de lectureDONG, Junliang; POMARÈDE, Pascal; CHEHAMI, Lynda; LOCQUET, Alexandre;
MERAGHNI, Fodil; DECLERCQ, Nico F.; CITRIN, D.S. (Elsevier, 2018)
Polarization-sensitive terahertz imaging is applied to characterize subsurface damage in woven carbon fiber-reinforced composite laminates in this study. Terahertz subsurface spectral imaging based on terahertz deconvolution ... -
Article dans une revue avec comité de lectureCALVO-DE LA ROSA, J.;
POMAREDE, Pascal; ANTONIK, P.;
MERAGHNI, Fodil; CITRIN, D.S.; RONTANI, D.; LOCQUET, A. (Elsevier BV, 2023-06)
Terahertz pulsed imaging, combined with spatial and temporal signal and image processing, is performed to visualize the woven fabric in the various plies of glass-fiber-reinforced polymer laminates and to determine ... -
Article dans une revue avec comité de lectureECKEL, Sebastian;
MERAGHNI, Fodil; POMAREDE, Pascal; DECLERCQ, Nico Felicien (Society for Experimental Mechanics, 2016)
The presented experimental work describes the nondestructive damage examination of polymer-matrix composites using acoustic methods under the consideration of nonlinear effects. The aim is to analyze these nonlinear effects ...

