LSTM approach for condition assessment of suspension bridges based on time-series deflection and temperature data

Deflection data provides important information about the mechanical characteristics and structural health condition of bridges. The study presented here pertains to development of a deep learning based approach for structural health monitoring by employing the bridge deflections. The method presente...

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Bibliographic Details
Published inAdvances in structural engineering Vol. 25; no. 16; pp. 3450 - 3463
Main Authors Wang, Chengwei, Ansari, Farhad, Wu, Bo, Li, Shuangjiang, Morgese, Maurizio, Zhou, Jianting
Format Journal Article
LanguageEnglish
Published London, England SAGE Publications 01.12.2022
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Summary:Deflection data provides important information about the mechanical characteristics and structural health condition of bridges. The study presented here pertains to development of a deep learning based approach for structural health monitoring by employing the bridge deflections. The method presented herein uses the long short-term memory (LSTM) framework in detecting the state of damage by tracking the feature changes of time-series deflection and temperature data. Deflection and temperature data of Chongqing Egongyan Rail Transit Suspension Bridge was employed over a period of 15 months to develop the proposed method. The concept of square error index (SE) is introduced as an assessment tool for estimation of the bridge damage level. Results from the present study indicated that the statistical characteristics of SE index are proportional to the level of damage, and are only sensitive to abnormal changes in deflection. Structural health monitoring data over the period of 15 months indicated that the proposed approach has the capability to detect cable damages as low as 0.5%.
ISSN:1369-4332
2048-4011
DOI:10.1177/13694332221133604