Spatiotemporal Deep Learning for Bridge Response Forecasting

AbstractAccurate prediction/forecasting of the future response of civil infrastructure plays an essential role in health monitoring and safety assessment. However, the complex latent dynamics within the field sensing measurements makes the forecasting task challenging. To this end, this paper levera...

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Bibliographic Details
Published in:Journal of structural engineering (New York, N.Y.) Vol. 147; no. 6
Main Authors: Zhang, Ruiyang, Meng, Libo, Mao, Zhu, Sun, Hao
Format: Journal Article
Language:English
Published: New York American Society of Civil Engineers 01-06-2021
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Summary:AbstractAccurate prediction/forecasting of the future response of civil infrastructure plays an essential role in health monitoring and safety assessment. However, the complex latent dynamics within the field sensing measurements makes the forecasting task challenging. To this end, this paper leverages the recent advances in deep learning and proposes a spatiotemporal learning framework to forecast structural responses with strong temporal dependencies and spatial correlations. The key concept is to establish a convolutional long-short term memory (ConvLSTM) network to learn spatiotemporal latent features from data and thus establish a surrogate model for structural response forecasting. The proposed approach is applied to predict the strain response for a concrete bridge with over three-year measurements available. A comparative study is also conducted against a traditional temporal-only network to highlight the forecasting performance of the proposed approach. Convincing results demonstrate that the ConvLSTM approach is a promising, reliable, and computationally efficient approach that is capable of accurately forecasting the dynamical response of civil infrastructure in a data-driven manner.
ISSN:0733-9445
1943-541X
DOI:10.1061/(ASCE)ST.1943-541X.0003022