Physics-informed machine learning for Structural Health Monitoring
Elizabeth J Cross, Samuel J Gibson, Matthew R Jones, Daniel J, Pitchforth, Sikai Zhang, Timothy J Rogers

TL;DR
This paper explores physics-informed machine learning, especially Gaussian process regression, to enhance structural health monitoring by integrating physical models with data-driven approaches for better generalization and predictive accuracy.
Contribution
It introduces new grey-box modeling approaches within a Bayesian framework, demonstrating improved SHM predictions across various structural applications.
Findings
Enhanced predictive capability in different regimes
Improved generalization for lifetime assessment
Effective incorporation of physical models into ML algorithms
Abstract
The use of machine learning in Structural Health Monitoring is becoming more common, as many of the inherent tasks (such as regression and classification) in developing condition-based assessment fall naturally into its remit. This chapter introduces the concept of physics-informed machine learning, where one adapts ML algorithms to account for the physical insight an engineer will often have of the structure they are attempting to model or assess. The chapter will demonstrate how grey-box models, that combine simple physics-based models with data-driven ones, can improve predictive capability in an SHM setting. A particular strength of the approach demonstrated here is the capacity of the models to generalise, with enhanced predictive capability in different regimes. This is a key issue when life-time assessment is a requirement, or when monitoring data do not span the operational…
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Taxonomy
MethodsGaussian Process
