Using graph neural networks and frequency domain data for automated operational modal analysis of populations of structures


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Date

2025

Publication Type

Journal Article

ETH Bibliography

yes

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Abstract

The population-based structural health monitoring paradigm has recently emerged as a promising approach to enhance data-driven assessment of engineering structures by facilitating transfer learning between structures with some degree of similarity. In this work, we apply this concept to the automated modal identification of structural systems. We introduce a graph neural network (GNN)-based deep learning scheme to identify modal properties, including natural frequencies, damping ratios, and mode shapes of engineering structures based on the power spectral density of spatially sparse vibration measurements. Systematic numerical experiments are conducted to evaluate the proposed model, employing two distinct truss populations that possess similar topological characteristics but varying geometric (size and shape) and material (stiffness) properties. The results demonstrate that, once trained, the proposed GNN-based model can identify modal properties of unseen structures within the same structural population with good efficiency and acceptable accuracy, even in the presence of measurement noise and sparse measurement locations. The GNN-based model exhibits advantages over the classic frequency domain decomposition method in terms of identification speed, as well as against an alternate multilayer perceptron architecture in terms of identification accuracy, rendering this a promising tool for PBSHM purposes.

Publication status

published

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Book title

Volume

6

Pages / Article No.

Publisher

Cambridge University Press

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Edition / version

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Subject

deep learning; feature propagation; Graph neural network; operational modal identification; population-based structural health monitoring

Organisational unit

03890 - Chatzi, Eleni / Chatzi, Eleni

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