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A Data-Driven Method Based on Bidirectional Convolutional Current Neural Network to Detect Structural Damage

Iranian Journal of Science and Technology, Transactions of Civil Engineering(2024)

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Abstract
In addressing the challenge of lacking precise mathematical and mechanical models, as well as data labels in structural damage identification, this paper proposes an innovative approach that eliminates the need for such models and labels. Initially, raw acceleration responses serve as input data, which undergo data preprocessing to derive training samples and labels. Subsequently, these training samples and labels are fed into the bidirectional convolutional recurrent neural network constructed in this study for parameter optimization through training. Finally, synthesized acceleration signals are input into the trained network to obtain predictive signals, and a custom-defined damage index is employed to compute structural damage. The applicability of this methodology is validated through numerical simulations and experimental study. The research findings demonstrate that the proposed approach is an unsupervised, data-driven method capable of identifying dynamic structural damage without reliance on the presence of structural labels or precise computational models.
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Key words
Data preprocessing,Bidirectional convolutional recurrent neural network,Unsupervised learning,Data-driven,Damage detection
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