Precipitation is a key input for hydrological modeling, and high-resolution, accurate data are essential for flood forecasting and water resource management. This study presents a Hybrid Downscaling and Multi-source Precipitation Fusion (HDMPF) framework to improve the spatial resolution and accuracy of precipitation estimates and enhance simulations of extreme precipitation and hydrological responses. HDMPF combines a Radial Basis Function network and Random Forest for downscaling, and applies Bayesian Model Averaging to fuse multiple satellite precipitation products. The fused dataset was used to drive the Grid-Xin’anjiang model for extreme flood simulations. The results show that HDMPF significantly improves spatiotemporal precipitation accuracy, increasing the KGE to 0.90–0.95 and reducing the RMSE to below 0.3 mm/h. The framework accurately reproduces precipitation cores, peak intensities, flood peaks, timing, and multi-peak hydrographs, demonstrating strong potential for improving basin-scale modeling and flood early warning.
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Lijun Chao
China Meteorological Administration
Gang Li
Shihezi University
Chao Yu
Pearl River Hydraulic Research Institute
Remote Sensing
Hohai University
China Meteorological Administration
Ministry of Water Resources of the People's Republic of China
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Chao et al. (Fri,) studied this question.
synapsesocial.com/papers/69a3d7eeec16d51705d2e4f2 — DOI: https://doi.org/10.3390/rs18050715