Tian, Yuan; Fu, Wenlong; Dong, Yajing; Han, Qi; Xiong, Qian; Cui, Ruonan; Ao, Zhenyu; Lei, Xinyu (2025) Global to local: a novel encoder-decoder framework for urban real-time rainfall-runoff forecasting. Earth Science Informatics, 18 (2). doi:10.1007/s12145-025-01907-9
Reference Type | Journal (article/letter/editorial) | ||
---|---|---|---|
Title | Global to local: a novel encoder-decoder framework for urban real-time rainfall-runoff forecasting | ||
Journal | Earth Science Informatics | ||
Authors | Tian, Yuan | Author | |
Fu, Wenlong | Author | ||
Dong, Yajing | Author | ||
Han, Qi | Author | ||
Xiong, Qian | Author | ||
Cui, Ruonan | Author | ||
Ao, Zhenyu | Author | ||
Lei, Xinyu | Author | ||
Year | 2025 (June) | Volume | 18 |
Issue | 2 | ||
Publisher | Springer Science and Business Media LLC | ||
DOI | doi:10.1007/s12145-025-01907-9Search in ResearchGate | ||
Generate Citation Formats | |||
Mindat Ref. ID | 18486576 | Long-form Identifier | mindat:1:5:18486576:5 |
GUID | 0 | ||
Full Reference | Tian, Yuan; Fu, Wenlong; Dong, Yajing; Han, Qi; Xiong, Qian; Cui, Ruonan; Ao, Zhenyu; Lei, Xinyu (2025) Global to local: a novel encoder-decoder framework for urban real-time rainfall-runoff forecasting. Earth Science Informatics, 18 (2). doi:10.1007/s12145-025-01907-9 | ||
Plain Text | Tian, Yuan; Fu, Wenlong; Dong, Yajing; Han, Qi; Xiong, Qian; Cui, Ruonan; Ao, Zhenyu; Lei, Xinyu (2025) Global to local: a novel encoder-decoder framework for urban real-time rainfall-runoff forecasting. Earth Science Informatics, 18 (2). doi:10.1007/s12145-025-01907-9 | ||
In | (2025, February) Earth Science Informatics Vol. 18 (2). Springer Science and Business Media LLC |
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