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Supervised Deep Learning with Finite Element simulations for damage identification in bridges

Ana Fernández-Navamuel, Diego Zamora-Sánchez, Ángel J. Omella, David Pardo, David García-Sánchez, Filipe Magalhães

2022Engineering Structures85 citationsDOIOpen Access PDF

Abstract

This work proposes a supervised Deep Learning approach for damage identification in bridge structures. We employ a hybrid methodology that incorporates Finite Element simulations to enrich the training phase of a Deep Neural Network with synthetic damage scenarios. The neural network is based on autoencoders and its particular architecture allows to activate or deactivate nonlinear connections under need. The methodology intends to contribute to the progress towards the applicability of Structural Health Monitoring practices in full-scale bridge structures. The ultimate goal is to estimate the location and severity of damage from measurements of the dynamic response of the structure. The damages we seek to detect correspond to material degradations that affect wide areas of the structure by reducing its stiffness properties. Our method allows a feasible adaptation to large systems with complex parametrizations and structural particularities. We investigate the performance of the proposed method on two full-scale instrumented bridges, obtaining adequate results for the testing datasets even in presence of measurement uncertainty. Besides, the method successfully predicts the damage condition for two real damage scenarios of increasing severity available in one of the bridges.

Topics & Concepts

Bridge (graph theory)Structural health monitoringFinite element methodArtificial neural networkIdentification (biology)Computer scienceNonlinear systemStiffnessAdaptation (eye)Deep learningArtificial intelligenceScale (ratio)Machine learningStructural engineeringEngineeringBotanyBiologyMedicineQuantum mechanicsInternal medicinePhysicsOpticsStructural Health Monitoring TechniquesInfrastructure Maintenance and MonitoringConcrete Corrosion and Durability
Supervised Deep Learning with Finite Element simulations for damage identification in bridges | Litcius