A Meta-Learning Approach to Population-Based Modelling of Structures
G. Tsialiamanis, N. Dervilis, D. J. Wagg, K. Worden

TL;DR
This paper introduces a meta-learning approach, based on MAML, to improve population-based structural modeling, enabling models to transfer knowledge across different structures with minimal data and outperform traditional methods.
Contribution
The work applies meta-learning to structural health monitoring, demonstrating improved transfer learning capabilities without requiring structure parametrization.
Findings
Meta-learning models outperform Gaussian processes with limited data.
Models learn physical aspects of structures, enhancing robustness.
No need for structure parametrization in transfer learning.
Abstract
A major problem of machine-learning approaches in structural dynamics is the frequent lack of structural data. Inspired by the recently-emerging field of population-based structural health monitoring (PBSHM), and the use of transfer learning in this novel field, the current work attempts to create models that are able to transfer knowledge within populations of structures. The approach followed here is meta-learning, which is developed with a view to creating neural network models which are able to exploit knowledge from a population of various tasks to perform well in newly-presented tasks, with minimal training and a small number of data samples from the new task. Essentially, the method attempts to perform transfer learning in an automatic manner within the population of tasks. For the purposes of population-based structural modelling, the different tasks refer to different…
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Taxonomy
TopicsFault Detection and Control Systems · Hydrological Forecasting Using AI
