M3R:基于气象信息多模态注意力的局地降雨临近预报 / M3R: Localized Rainfall Nowcasting with Meteorology-Informed MultiModal Attention
1️⃣ 一句话总结
这篇论文提出了一个名为M3R的新模型,它通过一种创新的多模态注意力机制,巧妙地结合了气象雷达图像和地面气象站数据,从而更准确、高效地预测未来短时间内的局地降雨,为灾害预警提供了更强大的工具。
Accurate and timely rainfall nowcasting is crucial for disaster mitigation and water resource management. Despite recent advances in deep learning, precipitation prediction remains challenging due to limitations in effectively leveraging diverse multimedia data sources. We introduce M3R, a Meteorology-informed MultiModal attention-based architecture for direct Rainfall prediction that synergistically combines visual NEXRAD radar imagery with numerical Personal Weather Station (PWS) measurements, using a comprehensive pipeline for temporal alignment of heterogeneous meteorological data. With specialized multimodal attention mechanisms, M3R novelly leverages weather station time series as queries to selectively attend to spatial radar features, enabling focused extraction of precipitation signatures. Experimental results for three spatial areas of 100 km * 100 km centered at NEXRAD radar stations demonstrate that M3R outperforms existing approaches, achieving substantial improvements in accuracy, efficiency, and precipitation detection capabilities. Our work establishes new benchmarks for multimedia-based precipitation nowcasting and provides practical tools for operational weather prediction systems. The source code is available at this https URL
M3R:基于气象信息多模态注意力的局地降雨临近预报 / M3R: Localized Rainfall Nowcasting with Meteorology-Informed MultiModal Attention
这篇论文提出了一个名为M3R的新模型,它通过一种创新的多模态注意力机制,巧妙地结合了气象雷达图像和地面气象站数据,从而更准确、高效地预测未来短时间内的局地降雨,为灾害预警提供了更强大的工具。
源自 arXiv: 2604.15377