Disentangling Damage from Operational Variability: A Label-Free Self-Supervised Representation Learning Framework for Output-Only Structural Damage Identification
Xudong Jian, Charikleia Stoura, Simon Scandella, Eleni Chatzi
TLDR
A self-supervised framework disentangles structural damage from operational variability using raw vibration data for robust, label-free identification.
Key contributions
- Proposes a self-supervised, label-free framework for robust structural damage identification.
- Utilizes an autoencoder with two latent representations from raw vibration signals.
- Employs VICReg for invariance to operational and environmental variability.
- Introduces a frequency-domain constraint for accurate power spectral density reconstruction.
Why it matters
Traditional structural damage identification struggles with confounding non-damage effects like environmental variations. This framework robustly disentangles damage from operational variability, improving reliability. Its label-free, end-to-end nature makes it highly practical for real-world structural health monitoring applications.
Original Abstract
Damage identification is a core task in structural health monitoring. In practice, however, its reliability is often compromised by confounding non-damage effects, such as variations in excitation and environmental conditions, which can induce changes comparable to or larger than those caused by structural damage. To address this challenge, this study proposes a self-supervised label-free disentangled representation learning framework for robust vibration-based structural damage identification. The proposed framework employs an autoencoder with two latent representations to learn directly from raw vibration acceleration signals. A self-supervised invariance regularization, implemented via Variance-Invariance-Covariance Regularization (VICReg), is imposed on one latent representation using baseline data where structural damage is assumed constant but operational and environmental conditions vary. In addition, a frequency-domain constraint is introduced to enforce agreement between the power spectral density reconstructed from the latent representation and that computed from the corresponding input time series. Together, these mechanisms promote disentanglement, enabling the learned representation to be sensitive to damage-related characteristics while remaining invariant to nuisance variability. The framework is trained in a fully end-to-end and label-free manner, requiring no prior information on damage, excitation, or environmental conditions, making it well-suited for real-world applications. Its effectiveness is validated on two distinct real-world vibration datasets, including a bridge and a gearbox. The results demonstrate robustness to operational variability, strong generalization capability, and good performance in both damage detection and quantification.
📬 Weekly AI Paper Digest
Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.