The content discusses the development of a physics-informed machine learning method for predicting seismic responses of nonlinear steel moment resisting frame structures. It highlights the challenges faced by traditional numerical simulations and the benefits of incorporating physics into machine learning models. The proposed method combines LSTM networks, model order reduction, and Newton's second law to improve accuracy, interpretability, and robustness in seismic response prediction.
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by R. Bailey Bo... alle arxiv.org 02-29-2024
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