The framework learns damage-sensitive but variability-invariant representations from vibration signals via self-supervised autoencoding with VICReg regularization and frequency constraints.
An introduction to structural health monitoring.Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences2007; 365(1851): 303–315
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Disentangling Damage from Operational Variability: A Label-Free Self-Supervised Representation Learning Framework for Output-Only Structural Damage Identification
The framework learns damage-sensitive but variability-invariant representations from vibration signals via self-supervised autoencoding with VICReg regularization and frequency constraints.