2023
DOI: 10.3389/fbuil.2023.1156760
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Application of neural networks to the prediction of the compressive capacity of corroded steel plates

Abstract: The application of artificial neural network approaches has been successful in solving complex civil engineering problems, such as damage detection and structural member capacity prediction. Within the context of the present study, corrosion has become the main factor limiting the safety and load-carrying capacity of aging steel bridge girders. Corrosion damage is often most severe near girder ends in simple-span bridges due to deck joint leakage and the pooling of water and de-icing salts. In addition to empi… Show more

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