Abstract
Accurate prediction of the seismic response of buildings is crucial for their structural assessment and performance evaluation. To this end, leveraging recent advancements in deep learning, this study introduces a convolutional long short-term memory neural network with attention mechanism (CNN-LSTM-ATT) for predicting the seismic response of moment frame and shear wall-frame structures. Through ablation experiments, the effectiveness of the convolutional and attention blocks was validated. Furthermore, employing transfer learning, the CNN-LSTM-ATT model was fine-tuned to predict seismic response across different target buildings. Two distinct transfer learning scenarios were investigated: 1) transfer from finite element models with various parameters of the same structure; and 2) transfer from finite element models to same actual structures. These scenarios demonstrate that model-based transfer learning significantly enhances the prediction accuracy of CNN-LSTM-ATT. Compared to the finite element models, the model based on transfer learning (i.e., with fine-tuning) in various scenarios, accurately predicted the nonlinear behaviors of structures. Thus, the proposed method is applicable for easy modeling and rapid prediction of dynamic response in various building structures under earthquakes.
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