4.7 Article

Attention-based LSTM (AttLSTM) neural network for Seismic Response Modeling of Bridges

期刊

COMPUTERS & STRUCTURES
卷 275, 期 -, 页码 -

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compstruc.2022.106915

关键词

Bridge engineering; Deep learning; Long short term memory neural network; Attention mechanism; Seismic response modelling

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This paper proposes an innovative attention-based recurrent neural network model for predicting bridge responses under dynamic loads such as earthquakes. The model utilizes the recent advances in deep learning and demonstrates improved accuracy and reliability compared to traditional models through validation with numerical and real-world bridge data.
Accurate prediction of bridge responses plays an essential role in health monitoring and safety assess-ment of bridges subjected to dynamic loads such as earthquakes. To this end, this paper leverages the recent advances in deep learning and proposes an innovative attention-based recurrent neural network for metamodeling of bridge structures under seismic hazards. The key concept is to establish an attention-based long short-term memory neural network (AttLSTM) to learn the dynamics from limited training data and make predictions of bridge responses against unseen earthquakes. In particular, an attention mechanism is proposed to enhance the selection of more informative components among sequential data for better learning from limited data. The performance of the proposed AttLSTM neural network was validated through both numerical and real-world data of a girder bridge and a cable -stayed bridge to systematically evaluate the prediction performance of the proposed method. In addition, the classical LSTM neural network was selected as the baseline model to show the favorable performance of the proposed attention mechanism. Results indicate that the proposed method with attention mech-anism outperforms the compared state-of-the-art LSTM in terms of both accuracy and reliability.(c) 2022 Elsevier Ltd. All rights reserved.

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