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Automated delamination detection in concrete bridge decks using 1D-CNN and GPR data

Authors :
Ahmed Elseicy
Mercedes Solla
Henrique Lorenzo
Source :
Case Studies in Construction Materials, Vol 22, Iss , Pp e04174- (2025)
Publication Year :
2025
Publisher :
Elsevier, 2025.

Abstract

The adoption of deep learning models for ground penetrating radar (GPR) data analysis has great potential for advancing the field of infrastructure condition monitoring, especially in the early detection of bridge deck distresses. This work presents a deep learning approach to detect delamination in concrete bridge decks using GPR data, employing one-dimensional convolutional neural networks (1D-CNN). The experiment uses GPR data from the SDNET2021 dataset containing five in-service bridge decks. The main objective is to classify each GPR A-scan as either 'sound' or 'delaminated', thus allowing efficient and timely detection of subsurface structural problems. The proposed method incorporates a contextual information approach to enhance the accuracy and reliability of delamination detection. Two techniques were evaluated and compared to identify the optimal approach. The results demonstrate that the A-scan data, when combined with the average filter, significantly improves the detection performance with a 0.9940 weighted average F1 score compared to the raw A-scan only with a 0.7735 weighted average F1-score. Moreover, a real case study is introduced with a transfer learning approach. The detection results achieved 92.6 % accuracy when a pre-trained model was fine-tuned with 5 % of the labels from the new data. The findings of the research contribute to the advancement of non-destructive testing methodologies by providing the first approach to benchmark and work with the GPR data of the SDNET2021 dataset.

Details

Language :
English
ISSN :
22145095
Volume :
22
Issue :
e04174-
Database :
Directory of Open Access Journals
Journal :
Case Studies in Construction Materials
Publication Type :
Academic Journal
Accession number :
edsdoj.f26d2300120c4d6a91235a55bdd7c303
Document Type :
article
Full Text :
https://doi.org/10.1016/j.cscm.2024.e04174