On the hierarchical Bayesian modelling of frequency response functions
- URL: http://arxiv.org/abs/2307.06263v2
- Date: Wed, 3 Jan 2024 16:38:27 GMT
- Title: On the hierarchical Bayesian modelling of frequency response functions
- Authors: T.A. Dardeno, K. Worden, N. Dervilis, R.S. Mills, L.A. Bull
- Abstract summary: Hierarchical Bayesian models learn statistical distributions at the population (or parent) and the domain levels simultaneously.
variance is reduced among the parameter estimates, particularly when data are limited.
Modeling approach is also demonstrated in a traditional SHM context, for a single helicopter blade exposed to varying temperatures.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: For situations that may benefit from information sharing among datasets,
e.g., population-based SHM of similar structures, the hierarchical Bayesian
approach provides a useful modelling structure. Hierarchical Bayesian models
learn statistical distributions at the population (or parent) and the domain
levels simultaneously, to bolster statistical strength among the parameters. As
a result, variance is reduced among the parameter estimates, particularly when
data are limited. In this paper, a combined probabilistic FRF model is
developed for a small population of nominally-identical helicopter blades,
using a hierarchical Bayesian structure, to support information transfer in the
context of sparse data. The modelling approach is also demonstrated in a
traditional SHM context, for a single helicopter blade exposed to varying
temperatures, to show how the inclusion of physics-based knowledge can improve
generalisation beyond the training data, in the context of scarce data. These
models address critical challenges in SHM, by accommodating benign variations
that present as differences in the underlying dynamics, while also considering
(and utilising), the similarities among the domains.
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