临近预报
全球导航卫星系统应用
遥感
雷达
Echo(通信协议)
地质学
降水
气象学
计算机科学
全球定位系统
地理
电信
计算机网络
海洋学
作者
Mengjie Liu,Weixing Zhang,Yidong Lou,Xingping Dong,Zhenyi Zhang,Xiaohong Zhang
标识
DOI:10.1109/tgrs.2025.3554745
摘要
Nowcasting plays a critical role in disaster warning systems, and recent advancements in deep learning have shown great potential in improving the accuracy and timeliness of such predictions. This study proposes a novel deep learning-based model for precipitation nowcasting, which integrates global navigation satellite system (GNSS)-derived precipitable water vapor (PWV) data with radar observations. The model introduces two key innovations: multi-source data fusion and time-dimension attention mechanism. These advancements enhance the model’s capability to accurately forecast precipitation events, particularly under challenging conditions with high rainfall intensity. In comparative experiments conducted using radar and GNSS data from Hong Kong, the model, incorporating both data fusion and the attention mechanism, demonstrated the best overall performance, with critical success index (CSI) scores increasing by 26% and Heidke skill score (HSS) scores by 23% at the 30 mm/h threshold. Moreover, it effectively simulates rainfall regions and their changing trends, demonstrating the complementary value of GNSS PWV data to radar observations.
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