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  5. Structural damage identification by using physics-guided residual neural networks

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Article
en
2024

Structural damage identification by using physics-guided residual neural networks

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0 Files

en
2024
Vol 318
Vol. 318
DOI: 10.1016/j.engstruct.2024.118703

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Jun Li
Jun Li

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Ruhua Wang
Jun Li
Ling Li
+4 more

Abstract

In recent years, vibration-based structural damage identification has made significant progress by exploiting data-driven deep learning techniques, which can efficiently extract damage-sensitive features from a large amount of data. However, in some practical engineering applications, large volumes of measurement data are not readily available. This paper proposes a novel physics-guided residual neural network (PhyResNet) framework to improve the robustness and accuracy of structural damage identification under data-scarce conditions. In contrast to the state-of-the-art purely data-driven ResNet, the proposed method embedded available physics knowledge (e.g., governing equations of dynamics) of structures into the feature learning process via a novel physics-based loss function. The input-output relationship of the network is constrained to retain its physical meaning implicitly while the demand for large amounts of labeled training data is reduced. Notably, even with only 5 % of the dataset used for training, PhyResNet achieves a 13.1 % improvement in R-Value. The performance of the proposed approach is evaluated through both numerical and experimental verifications. Results demonstrate that damage localization and quantification are achieved with high accuracies and good robustness.

How to cite this publication

Ruhua Wang, Jun Li, Ling Li, Senjian An, Bradley Ezard, Qilin Li, Hao Hong (2024). Structural damage identification by using physics-guided residual neural networks. , 318, DOI: https://doi.org/10.1016/j.engstruct.2024.118703.

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Publication Details

Type

Article

Year

2024

Authors

7

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1016/j.engstruct.2024.118703

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