Foundations of Population-Based SHM, Part IV: The Geometry of Spaces of Structures and their Feature Spaces
George Tsialiamanis, Charilaos Mylonas, Eleni Chatzi, Nikolaos, Dervilis, David J. Wagg, Keith Worden

TL;DR
This paper develops a geometric and physical analogy-based framework for population-based structural health monitoring, introducing feature spaces as sections of vector bundles and applying graph neural networks to identify normal conditions.
Contribution
It introduces a novel geometric framework for feature spaces in SHM using concepts from physics and applies GNNs to determine normal conditions in structure populations.
Findings
Framework successfully models feature spaces as sections of vector bundles.
GNNs effectively identify normal condition cross sections.
Application demonstrated on heterogeneous truss structures.
Abstract
One of the requirements of the population-based approach to Structural Health Monitoring (SHM) proposed in the earlier papers in this sequence, is that structures be represented by points in an abstract space. Furthermore, these spaces should be metric spaces in a loose sense; i.e. there should be some measure of distance applicable to pairs of points; similar structures should then be close in the metric. However, this geometrical construction is not enough for the framing of problems in data-based SHM, as it leaves undefined the notion of feature spaces. Interpreting the feature values on a structure-by-structure basis as a type of field over the space of structures, it seems sensible to borrow an idea from modern theoretical physics, and define feature assignments as sections in a vector bundle over the structure space. With this idea in place, one can interpret the effect of…
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