Feb. 8, 2024, 5:41 a.m. | Junchao Gong Lei Bai Peng Ye Wanghan Xu Na Liu Jianhua Dai Xiaokang Yang Wanli Ouyang

cs.LG updates on arXiv.org arxiv.org

Precipitation nowcasting based on radar data plays a crucial role in extreme weather prediction and has broad implications for disaster management. Despite progresses have been made based on deep learning, two key challenges of precipitation nowcasting are not well-solved: (i) the modeling of complex precipitation system evolutions with different scales, and (ii) accurate forecasts for extreme precipitation. In this work, we propose CasCast, a cascaded framework composed of a deterministic and a probabilistic part to decouple the predictions for mesoscale …

challenges cs.ai cs.lg data deep learning disaster disaster management key management modeling modelling nowcasting precipitation prediction radar role via weather weather prediction

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