Semi-supervised and unsupervised learning for health indicator extraction from guided waves in aerospace composite structures
James Josep Perry, Pablo Garcia-Conde Ortiz, George Konstantinou, Cornelie Vergouwen, Edlyn Santha Kumaran, Morteza Moradi

TL;DR
This paper introduces semi-supervised and unsupervised learning methods to extract health indicators from guided wave data in aerospace composites, addressing challenges of variability and lack of ground truth.
Contribution
It proposes novel semi-supervised and unsupervised frameworks, including Diversity-DeepSAD and DTC-VAE, for reliable health indicator extraction without ground-truth labels.
Findings
Diversity-DeepSAD achieved 81.6% performance.
DTC-VAE delivered 92.3% performance.
Methods outperform existing baselines.
Abstract
Health indicators (HIs) are central to diagnosing and prognosing the condition of aerospace composite structures, enabling efficient maintenance and operational safety. However, extracting reliable HIs remains challenging due to variability in material properties, stochastic damage evolution, and diverse damage modes. Manufacturing defects (e.g., disbonds) and in-service incidents (e.g., bird strikes) further complicate this process. This study presents a comprehensive data-driven framework that learns HIs via two learning approaches integrated with multi-domain signal processing. Because ground-truth HIs are unavailable, a semi-supervised and an unsupervised approach are proposed: (i) a diversity deep semi-supervised anomaly detection (Diversity-DeepSAD) approach augmented with continuous auxiliary labels used as hypothetical damage proxies, which overcomes the limitation of prior…
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