Feb. 2, 2024, 3:45 p.m. | Tao Han Song Guo Fenghua Ling Kang Chen Junchao Gong Jingjia Luo Junxia Gu Kan Dai Wan

cs.LG updates on arXiv.org arxiv.org

Kilometer-scale modeling of global atmosphere dynamics enables fine-grained weather forecasting and decreases the risk of disastrous weather and climate activity. Therefore, building a kilometer-scale global forecast model is a persistent pursuit in the meteorology domain. Active international efforts have been made in past decades to improve the spatial resolution of numerical weather models. Nonetheless, developing the higher resolution numerical model remains a long-standing challenge due to the substantial consumption of computational resources. Recent advances in data-driven global weather forecasting models …

atmosphere building climate cs.ai cs.lg domain dynamics fine-grained forecast forecasting global international medium meteorology modeling numerical physics.ao-ph risk scale spatial weather weather forecasting

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