This study proposes a Bayesian-optimized shallow 1D-Convolutional Neural Network (1D-CNN) for classifying delamination in Carbon Fiber Reinforced Polymer (CFRP) laminates using raw Laser Ultrasonic Guided Wave (LUGW) data. The dataset comprises over 2 million waveforms from ten cross-ply CFRP laminates, including one undamaged and nine with delamination of varying sizes and depths, measured from three directions, totaling 30 distinct classes. A systematic approach combining Monte Carlo Random Sampling, Random Forest Emulatorbased sensitivity analysis, and Tree-Structured Parzen Estimator (TPE)-Bayesian Optimization with Hyperband Pruning was employed to fine-tune critical hyperparameters and design a lightweight, efficient architecture. The optimized 1D-CNN exhibited near-perfect performance, as evidenced by Stratified K-Fold Cross-Validation (SKCV) and the proposed Inverse SKCV, with 99.99 % accuracy, precision, recall, F1-Score, and AUC-ROC in multi-class classification. The model’s effectiveness in generalizing without the need for signal preprocessing is a result of regularization techniques such as Dropout, Elastic Net, Early Stopping, and a Reduce-On-Plateau learning rate. Furthermore, its lightweight architecture makes it suitable for deployment on consumer-level hardware, with strong potential for future real-time monitoring applications.
Bayesian-optimized 1D-CNN for delamination classification in CFRP laminates using raw ultrasonic guided waves
Azadi, Shain;Carvelli, Valter
2025-01-01
Abstract
This study proposes a Bayesian-optimized shallow 1D-Convolutional Neural Network (1D-CNN) for classifying delamination in Carbon Fiber Reinforced Polymer (CFRP) laminates using raw Laser Ultrasonic Guided Wave (LUGW) data. The dataset comprises over 2 million waveforms from ten cross-ply CFRP laminates, including one undamaged and nine with delamination of varying sizes and depths, measured from three directions, totaling 30 distinct classes. A systematic approach combining Monte Carlo Random Sampling, Random Forest Emulatorbased sensitivity analysis, and Tree-Structured Parzen Estimator (TPE)-Bayesian Optimization with Hyperband Pruning was employed to fine-tune critical hyperparameters and design a lightweight, efficient architecture. The optimized 1D-CNN exhibited near-perfect performance, as evidenced by Stratified K-Fold Cross-Validation (SKCV) and the proposed Inverse SKCV, with 99.99 % accuracy, precision, recall, F1-Score, and AUC-ROC in multi-class classification. The model’s effectiveness in generalizing without the need for signal preprocessing is a result of regularization techniques such as Dropout, Elastic Net, Early Stopping, and a Reduce-On-Plateau learning rate. Furthermore, its lightweight architecture makes it suitable for deployment on consumer-level hardware, with strong potential for future real-time monitoring applications.| File | Dimensione | Formato | |
|---|---|---|---|
|
Carvelli_Composites Science and Technology-2025.pdf
Accesso riservato
Descrizione: Carvelli_Composites Science and Technology-2025
:
Post-Print (DRAFT o Author’s Accepted Manuscript-AAM)
Dimensione
862.61 kB
Formato
Adobe PDF
|
862.61 kB | Adobe PDF | Visualizza/Apri |
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


