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XiChen: An observation-scalable fully AI-driven global weather forecasting system with 4D variational knowledge

Wuxin Wang
Weicheng Ni
Lilan Huang
Tao Hao
Ben Fei
Shuo Ma
Taikang Yuan
Yanlai Zhao
Kefeng Deng
Xiaoyong Li
Boheng Duan
Lei Bai
Kaijun Ren
Main:23 Pages
2 Figures
Bibliography:4 Pages
Abstract

Recent advancements in Artificial Intelligence (AI) demonstrate significant potential to revolutionize weather forecasting. However, most AI-driven models rely on Numerical Weather Prediction (NWP) systems for initial condition preparation, which often consumes hours on supercomputers. Here we introduce XiChen, the first observation-scalable fully AI-driven global weather forecasting system, whose entire pipeline, from Data Assimilation (DA) to medium-range forecasting, can be accomplished within only 17 seconds. XiChen is built upon a foundation model that is pre-trained for weather forecasting. Meanwhile, this model is subsequently fine-tuned to serve as both observation operators and DA models, thereby scalably assimilating conventional and raw satellite observations. Furthermore, the integration of four-dimensional variational knowledge ensures that XiChen's DA and medium-range forecasting accuracy rivals that of operational NWP systems, amazingly achieving a skillful forecasting lead time exceeding 8.25 days. These findings demonstrate that XiChen holds strong potential toward fully AI-driven weather forecasting independent of NWP systems.

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