Anomaly Detection on Laminated Composite Plate Using Self-Attention Autoencoder and Gaussian Mixture Model
Olivier Munyaneza and
Jung Woo Sohn ()
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Olivier Munyaneza: Department of Aeronautics, Mechanical and Electronic Convergence Engineering, Graduated School, Kumoh National Institute of Technology, Daehak-ro 61, Gumi 39177, Republic of Korea
Jung Woo Sohn: School of Mechanical Engineering, Kumoh National Institute of Technology, Daehak-ro 61, Gumi 39177, Republic of Korea
Mathematics, 2025, vol. 13, issue 15, 1-17
Abstract:
Composite laminates are widely used in aerospace, automotive, construction, and luxury industries, owing to their superior mechanical properties and design flexibility. However, detecting manufacturing defects and in-service damage remains a vital challenge for structural safety. While traditional unsupervised machine learning methods have been used in structural health monitoring (SHM), their high false positive rates limit their reliability in real-world applications. This issue is mostly inherited from their limited ability to capture small temporal variations in Lamb wave signals and their dependence on shallow architectures that suffer with complex signal distributions, causing the misclassification of damaged signals as healthy data. To address this, we suggested an unsupervised anomaly detection framework that integrates a self-attention autoencoder with a Gaussian mixture model (SAE-GMM). The model is solely trained on healthy Lamb wave signals, including high-quality synthetic data generated via a generative adversarial network (GAN). Damages are detected through reconstruction errors and probabilistic clustering in the latent space. The self-attention mechanism enhances feature representation by capturing subtle temporal dependencies, while the GMM enables a solid separation among signals. Experimental results demonstrated that the proposed model (SAE-GMM) achieves high detection accuracy, a low false positive rate, and strong generalization under varying noise conditions, outperforming traditional and deep learning baselines.
Keywords: composite laminates; unsupervised machine learning; structural healthy monitoring; self-attention; Gaussian mixture model; generative adversarial network; Lamb waves (search for similar items in EconPapers)
JEL-codes: C (search for similar items in EconPapers)
Date: 2025
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