Multimodal Learning 相关度: 6/10

A Dual-TransUNet Deep Learning Framework for Multi-Source Precipitation Merging and Improving Seasonal and Extreme Estimates

Yuchen Ye, Zixuan Qi, Shixuan Li, Wei Qi, Yanpeng Cai, Chaoxia Yuan
arXiv: 2602.04757v1 发布: 2026-02-04 更新: 2026-02-04

AI 摘要

提出了一个双阶段TransUNet框架,用于融合多源降水数据,提升季节性和极端降水估计。

主要贡献

  • 开发了双阶段TransUNet降水融合框架DDL-MSPMF
  • 提高了季节性降水估计的准确性(R=0.75; RMSE=2.70 mm/day)
  • 改善了极端降水事件的检测能力

方法论

使用双阶段TransUNet,第一阶段分类降水概率,第二阶段回归降水量,并结合ERA5地表物理预测因子。

原文摘要

Multi-source precipitation products (MSPs) from satellite retrievals and reanalysis are widely used for hydroclimatic monitoring, yet spatially heterogeneous biases and limited skill for extremes still constrain their hydrologic utility. Here we develop a dual-stage TransUNet-based multi-source precipitation merging framework (DDL-MSPMF) that integrates six MSPs with four ERA5 near-surface physical predictors. A first-stage classifier estimates daily precipitation occurrence probability, and a second-stage regressor fuses the classifier outputs together with all predictors to estimate daily precipitation amount at 0.25 degree resolution over China for 2001-2020. Benchmarking against multiple deep learning and hybrid baselines shows that the TransUNet - TransUNet configuration yields the best seasonal performance (R = 0.75; RMSE = 2.70 mm/day) and improves robustness relative to a single-regressor setting. For heavy precipitation (>25 mm/day), DDL-MSPMF increases equitable threat scores across most regions of eastern China and better reproduces the spatial pattern of the July 2021 Zhengzhou rainstorm, indicating enhanced extreme-event detection beyond seasonal-mean corrections. Independent evaluation over the Qinghai-Tibet Plateau using TPHiPr further supports its applicability in data-scarce regions. SHAP analysis highlights the importance of precipitation occurrence probabilities and surface pressure, providing physically interpretable diagnostics. The proposed framework offers a scalable and explainable approach for precipitation fusion and extreme-event assessment.

标签

降水融合 深度学习 TransUNet 极端降水

arXiv 分类

cs.LG