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Detectability of Bridge-Structural Damage Based on Fiber-Optic Sensing through Deep-Convolutional Neural Networks

Sheng Li, Lizhi Sun

2020Journal of Bridge Engineering43 citationsDOI

Abstract

Improving the accuracy and efficiency of damage detection of bridge structures is a major challenge in engineering practice. This paper aims to address this issue by monitoring the continuous bridge deflection based on the fiber optic sensing technology and applying a deep-learning algorithm to perform structural damage detection. With a scaled-down bridge model, three categories of damage scenarios plus an intact state were simulated. A 13-layer supervised learning model based on the deep convolutional neural networks was proposed. After the training process of original continuous deflection under 10-fold cross-validation, the model accuracy can reach 96.9% for damage classification with the performance outperforming that of the other four methods (random forest = 81.6%, support vector machine = 79.9%, k-nearest neighbor = 77.7%, and decision tree = 74.8%). The proposed model also demonstrated its decent abilities in automatically extracting damage features and distinguishing damage from structurally symmetrical locations.

Topics & Concepts

Convolutional neural networkDeep learningDeflection (physics)Structural health monitoringComputer scienceBridge (graph theory)Artificial intelligenceArtificial neural networkSupport vector machineRandom forestStructural engineeringPattern recognition (psychology)Machine learningEngineeringMedicineOpticsPhysicsInternal medicineInfrastructure Maintenance and MonitoringStructural Health Monitoring TechniquesConcrete Corrosion and Durability
Detectability of Bridge-Structural Damage Based on Fiber-Optic Sensing through Deep-Convolutional Neural Networks | Litcius