Damage Quantification and Identification in Structural Joints through Ultrasonic Guided Wave-Based Features and an Inverse Bayesian Scheme
Metadatos
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MDPI
Materia
Guided waves Joints/bounded structures Damage identification Bayesian inference Hybrid wave and finite element Surrogate model
Fecha
2023-04-21Referencia bibliográfica
Wu, W.; Cantero-Chinchilla, S.; Yan, W.-j.; Chiachio Ruano, M.; Remenyte-Prescott, R.; Chronopoulos, D. Damage Quantification and Identification in Structural Joints through Ultrasonic Guided Wave-Based Features and an Inverse Bayesian Scheme. Sensors 2023, 23, 4160. [https://doi.org/10.3390/s23084160]
Patrocinador
European Union’s Horizon 2020 Marie Skłodowska-Curie 859957; Science and Technology Development Fund, Macau SAR (File No.: FDCT/0101/2021/A2, FDCT/001/2021/AGJ and SKL-IOTSC(UM)-2021-2023)Resumen
In this paper, defect detection and identification in aluminium joints is investigated based
on guided wave monitoring. Guided wave testing is first performed on the selected damage feature
from experiments, namely, the scattering coefficient, to prove the feasibility of damage identification.
A Bayesian framework based on the selected damage feature for damage identification of three-
dimensional joints of arbitrary shape and finite size is then presented. This framework accounts for
both modelling and experimental uncertainties. A hybrid wave and finite element approach (WFE) is
adopted to predict the scattering coefficients numerically corresponding to different size defects in
joints. Moreover, the proposed approach leverages a kriging surrogate model in combination with
WFE to formulate a prediction equation that links scattering coefficients to defect size. This equation
replaces WFE as the forward model in probabilistic inference, resulting in a significant enhancement
in computational efficiency. Finally, numerical and experimental case studies are used to validate
the damage identification scheme. An investigation into how the location of sensors can impact the
identified results is provided as well.