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An interpretable hybrid deep learning model for flood forecasting based on Transformer and LSTM
An interpretable hybrid deep learning model for flood forecasting based on Transformer and LSTM
An interpretable hybrid deep learning model for flood forecasting based on Transformer and LSTM
Journal of Hydrology: Regional Studies
Li, Wenzhong (author) / Liu, Chengshuai (author) / Xu, Yingying (author) / Niu, Chaojie (author) / Li, Runxi (author) / Li, Ming (author) / Hu, Caihong (author) / Tian, Lu (author)
Journal of Hydrology: Regional Studies ; 54 ; 101873
2024-08-01
Article (Journal)
Electronic Resource
English
An interpretable hybrid deep learning model for flood forecasting based on Transformer and LSTM
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