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Structural integrity of aging steel bridges by 3D laser scanning and convolutional neural networks.


ABSTRACT: For steel bridges, corrosion has historically led to bridge failures, resulting in fatalities and injuries. To enhance public safety and prevent such incidents, authorities mandate in-situ evaluation and reporting of corroded members. The current inspection and evaluation protocol is characterized by intense labor, traffic delays, and poor capacity predictions. Here we combine full-scale experimental testing of a decommissioned girder, 3D laser scanning, and convolutional neural networks (CNNs) to introduce a continuous inspection and evaluation framework. Classification and regression CNNs are trained on a databank of 1,421 naturally inspired corrosion scenarios, generated computationally based on point clouds of three corroded girders collected in lab conditions. Results indicate low errors of up to 2.0% and 3.3%, respectively. The methodology is validated on eight real corroded ends and implemented for the evaluation of an in-service bridge. This framework promises significant advancements in assessing aging bridge infrastructure with higher accuracy and efficiency compared to analytical or semi-analytical approaches.

SUBMITTER: Tzortzinis G 

PROVIDER: S-EPMC11294330 | biostudies-literature | 2024 Aug

REPOSITORIES: biostudies-literature

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Structural integrity of aging steel bridges by 3D laser scanning and convolutional neural networks.

Tzortzinis Georgios G   Filippatos Angelos A   Wittig Jan J   Gude Maik M   Provost Aidan A   Ai Chengbo C   Gerasimidis Simos S  

Communications engineering 20240801 1


For steel bridges, corrosion has historically led to bridge failures, resulting in fatalities and injuries. To enhance public safety and prevent such incidents, authorities mandate in-situ evaluation and reporting of corroded members. The current inspection and evaluation protocol is characterized by intense labor, traffic delays, and poor capacity predictions. Here we combine full-scale experimental testing of a decommissioned girder, 3D laser scanning, and convolutional neural networks (CNNs)  ...[more]

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