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Statistical Post-Processing for Precipitation Forecast Through Deep Learning Coupling Large-Scale and Local-Scale Spatiotemporal Information
by
Liang, Zhongmin
, Zhang, Tuantuan
, Wang, Jun
, Bi, Chenglin
, Hu, Yiming
, Li, Binquan
in
Artificial neural networks
/ Atmospheric Sciences
/ China
/ Civil Engineering
/ Deep learning
/ Drought
/ Earth and Environmental Science
/ Earth Sciences
/ Environment
/ Error reduction
/ Flood forecasting
/ Flood predictions
/ Geotechnical Engineering & Applied Earth Sciences
/ Hydroelectric power
/ Hydroelectric power generation
/ Hydrogeology
/ Hydrology/Water Resources
/ Hydrometeorology
/ Information processing
/ Initial conditions
/ latitude
/ Lead time
/ Long short-term memory
/ Machine learning
/ Mean sea level
/ Meteorological data
/ Neural networks
/ Numerical weather forecasting
/ Precipitation
/ River basins
/ sea level
/ Sea level pressure
/ Spatial memory
/ Spatiotemporal data
/ summer
/ Systematic errors
/ temporal variation
/ water
/ water power
/ watersheds
/ Weather
/ Weather forecasting
/ Weather patterns
2025
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Statistical Post-Processing for Precipitation Forecast Through Deep Learning Coupling Large-Scale and Local-Scale Spatiotemporal Information
by
Liang, Zhongmin
, Zhang, Tuantuan
, Wang, Jun
, Bi, Chenglin
, Hu, Yiming
, Li, Binquan
in
Artificial neural networks
/ Atmospheric Sciences
/ China
/ Civil Engineering
/ Deep learning
/ Drought
/ Earth and Environmental Science
/ Earth Sciences
/ Environment
/ Error reduction
/ Flood forecasting
/ Flood predictions
/ Geotechnical Engineering & Applied Earth Sciences
/ Hydroelectric power
/ Hydroelectric power generation
/ Hydrogeology
/ Hydrology/Water Resources
/ Hydrometeorology
/ Information processing
/ Initial conditions
/ latitude
/ Lead time
/ Long short-term memory
/ Machine learning
/ Mean sea level
/ Meteorological data
/ Neural networks
/ Numerical weather forecasting
/ Precipitation
/ River basins
/ sea level
/ Sea level pressure
/ Spatial memory
/ Spatiotemporal data
/ summer
/ Systematic errors
/ temporal variation
/ water
/ water power
/ watersheds
/ Weather
/ Weather forecasting
/ Weather patterns
2025
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Statistical Post-Processing for Precipitation Forecast Through Deep Learning Coupling Large-Scale and Local-Scale Spatiotemporal Information
by
Liang, Zhongmin
, Zhang, Tuantuan
, Wang, Jun
, Bi, Chenglin
, Hu, Yiming
, Li, Binquan
in
Artificial neural networks
/ Atmospheric Sciences
/ China
/ Civil Engineering
/ Deep learning
/ Drought
/ Earth and Environmental Science
/ Earth Sciences
/ Environment
/ Error reduction
/ Flood forecasting
/ Flood predictions
/ Geotechnical Engineering & Applied Earth Sciences
/ Hydroelectric power
/ Hydroelectric power generation
/ Hydrogeology
/ Hydrology/Water Resources
/ Hydrometeorology
/ Information processing
/ Initial conditions
/ latitude
/ Lead time
/ Long short-term memory
/ Machine learning
/ Mean sea level
/ Meteorological data
/ Neural networks
/ Numerical weather forecasting
/ Precipitation
/ River basins
/ sea level
/ Sea level pressure
/ Spatial memory
/ Spatiotemporal data
/ summer
/ Systematic errors
/ temporal variation
/ water
/ water power
/ watersheds
/ Weather
/ Weather forecasting
/ Weather patterns
2025
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Statistical Post-Processing for Precipitation Forecast Through Deep Learning Coupling Large-Scale and Local-Scale Spatiotemporal Information
Journal Article
Statistical Post-Processing for Precipitation Forecast Through Deep Learning Coupling Large-Scale and Local-Scale Spatiotemporal Information
2025
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Overview
Accurate forecast precipitation is crucial for hydropower generation, drought and flood warning, and hydrological forecasting. However, raw forecast precipitation often suffers from systematic errors due to inaccurate initial conditions in numerical weather prediction (NWP) models. In this study, we develop a deep-learning-based post-processing method to correct forecast precipitation. Our method leverages convolutional neural networks (CNN) to analyze spatial features and long short-term memory networks (LSTM) to capture temporal dynamics, effectively modeling the local spatiotemporal characteristics (e.g., mean sea level pressure and elevation) of precipitation. Crucially, we also consider the impact of large-scale weather patterns (e.g., high-latitude blockings, the Meiyu trough) on precipitation by extracting relevant features through a CNN model and integrating this information with the local spatiotemporal data to improve forecast accuracy. Results indicate that the proposed CNN-CNN-LSTM method outperforms the three baselines (i.e., CNN-LSTM, CNN, LSTM) for all seasons and lead times (15 days) in the Huaihe River basin of China. Specifically, for the summer precipitation with a one-day lead time, the CNN-CNN-LSTM model achieves a 4.7% reduction in root mean square error and a 30.5% reduction in relative bias compared to CNN-LSTM alone. Furthermore, the relative importance of large-scale predictors is constantly increasing with the extension of lead times. By effectively integrating large-scale weather information and local-scale spatiotemporal information, the proposed CNN-CNN-LSTM method offers a novel approach to enhance the correction effect, providing significant valuable for hydrometeorological applications.
Publisher
Springer Netherlands,Springer Nature B.V
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