Data fusion and machine learning for bridge damage detection
This study presents a new approach for bridge damage detection using multi-level data fusion and anomaly detection techniques. The approach utilises as input data accelerations, deflections and bending moments, measured at multiple sensor locations on a bridge subjected to a moving vehicle. A damage sensitive feature is constructed, coupling principal component analysis and Mahalanobis distance, allowing for initial data dimensionality reduction and information integration. Anomaly detection using a convolutional autoencoder is performed to identify the presence of damage on the bridge. The proposed approach is independent of the mass and speed of the moving vehicles. The performance of the proposed approach is demonstrated using synthetic data generated from surrogate numerical models, showing applications for a variety of damage scenarios. The accuracy of damage identification via anomaly detection is shown to be consistently greater than 99%.
Funding
Loughborough University
Philip Leverhulme Prize (PLP-2019- 017)
History
School
- Architecture, Building and Civil Engineering
Published in
Bridge Safety, Maintenance, Management, Life-Cycle, Resilience and Sustainability: Proceedings of the Eleventh International Conference on Bridge Maintenance, Safety and Management (IABMAS 2022), Barcelona, Spain, July 11-15, 2022Pages
348 - 353Source
11th International Conference on Bridge Maintenance, Safety and Management (IABMAS 2022)Publisher
CRC PressVersion
- AM (Accepted Manuscript)
Rights holder
© The AuthorsPublisher statement
This is an Accepted Manuscript of a book chapter published by CRC Press in Bridge Safety, Maintenance, Management, Life-Cycle, Resilience and Sustainability: Proceedings of the Eleventh International Conference on Bridge Maintenance, Safety and Management (IABMAS 2022), Barcelona, Spain, July 11-15, 2022 on June 27, 2022, available online: http://www.crcpress.com/9781003322641Acceptance date
2022-02-08Publication date
2022-06-27Copyright date
2022ISBN
9781003322641; 9781032345314Publisher version
Language
- en