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Bridge anomaly detection based on reconstruction error and structural similarity of unsupervised convolutional auto-encoder.

Authors :
Teng, Shuai
Liu, Zongchao
Luo, Wenjun
Chen, Gongfa
Cheng, Li
Source :
Structural Health Monitoring; Jul2024, Vol. 23 Issue 4, p2221-2237, 17p
Publication Year :
2024

Abstract

This study presents a novel bridge anomaly detection approach that employs the reconstruction error and structural similarity of an unsupervised convolutional auto-encoder. The presence of structural damage in a bridge typically results in changes in its vibration signals, and thus, the use of these signals for structural damage detection (SDD) has been widely investigated, with many methods relying on supervised learning. However, such existing SDD methods based on the supervised learning require prior knowledge of the damage states and cannot process monitoring data in real-time, thereby limiting their application to in-service bridges. To address this challenge, the authors propose the use of a convolutional auto-encoder as the reconstruction algorithm for real-time vibration signals. The auto-encoder is trained using normal signals and then used to reconstruct new inputs (either normal or abnormal). Two damage indicators (reconstruction error and structural similarity) are then calculated based on the reconstruction results and clustered to detect abnormal signals. The proposed approach was applied to the detection of various abnormalities in the old ADA Bridge, the results were 100% accurate, and about a 10% increase in accuracy was observed when compared to other control experiments. These results demonstrate the effectiveness of the proposed approach, with the auto-encoder achieving excellent reconstruction results for normal signals and clear discrepancies for abnormal signals. The proposed method was also validated on a cable-stayed bridge and an arch bridge, demonstrating its wide applicability in bridge anomaly detection. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
14759217
Volume :
23
Issue :
4
Database :
Complementary Index
Journal :
Structural Health Monitoring
Publication Type :
Academic Journal
Accession number :
178718126
Full Text :
https://doi.org/10.1177/14759217231200096