Physics-informed transfer learning for SHM via feature selection
J. Poole, P. Gardner, A. J. Hughes, N. Dervilis, R. S. Mills, T. A. Dardeno, and K. Worden

TL;DR
This paper introduces a physics-informed transfer learning approach for structural health monitoring that uses the modal assurance criterion (MAC) to select invariant features, improving generalization across different structures.
Contribution
It proposes using MAC for feature selection in transfer learning for SHM, leveraging physics knowledge to identify features with consistent conditional distributions across structures.
Findings
MAC correlates with distribution similarity metrics.
Feature selection via MAC improves transferability in SHM.
Method validated on numerical and experimental case studies.
Abstract
Data used for training structural health monitoring (SHM) systems are expensive and often impractical to obtain, particularly labelled data. Population-based SHM presents a potential solution to this issue by considering the available data across a population of structures. However, differences between structures will mean the training and testing distributions will differ; thus, conventional machine learning methods cannot be expected to generalise between structures. To address this issue, transfer learning (TL), can be used to leverage information across related domains. An important consideration is that the lack of labels in the target domain limits data-based metrics to quantifying the discrepancy between the marginal distributions. Thus, a prerequisite for the application of typical unsupervised TL methods is to identify suitable source structures (domains), and a set of…
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