Abstract
AbstractDisplacement measurements can provide valuable insights into structural conditions and in-service behaviour of bridges under operational and environmental loadings. Computer vision systems have been validated as a means of displacement estimation; the research developed here is intended to form the basis of a real-time damage detection system. This paper demonstrates a solution for detecting damage to a bridge from displacement measurements using a roving vision sensor-based approach. Displacements are measured using a synchronised multi-camera vision-based measurement system. The performance of the system is evaluated in a series of controlled laboratory tests. For damage detection, five unsupervised anomaly detection techniques: Autoencoder, K-Nearest Neighbours, Kernel Density, Local Outlier Factor and Isolation Forest, are compared. The results obtained for damage detection and localisation are promising, with an f1-Score of 0.96–0.97 obtained across various analysis scenarios. The approaches proposed in this research provide a means of detecting changes to bridges using low-cost technologies requiring minimal sensor installation and reducing sources of error and allowing for rating of bridge structures.
Funder
Engineering and Physical Sciences Research Council
Publisher
Springer Science and Business Media LLC
Subject
Safety, Risk, Reliability and Quality,Civil and Structural Engineering
Reference73 articles.
1. Phares BM, Washer GA, Rolander DD, Graybeal BA, Moore M (2004) Routine highway bridge inspection condition documentation accuracy and reliability. J Bridg Eng 9(4):403–413. https://doi.org/10.1061/(ASCE)1084-0702(2004)9:4(403)
2. Mainline (2013) Maintenance, renewal and improvement of rail transport infrastructure to reduce economic and environmental impacts. In: Deliverable D1.1: Benchmark of New Technologies to Extend the Life of Elderly Rail Infrastructure European Project, Luleå, Sweden: 7th. Sweden
3. BBC. Northern Ireland floods: More than 100 people rescued - BBC News
4. Telegraph. UK weather: Bridge collapses and roads washed away as flood warnings continue to midnight
5. Sigurdardottir DH, Glisic B (2015) On-site validation of fiber-optic methods for structural health monitoring: Streicker Bridge. J Civ Struct Heal Monit 5(4):529–549. https://doi.org/10.1007/s13349-015-0123-x
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