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Generative assimilation and prediction for weather and climate

4 March 2025
S. M. I. Simon X. Yang
Congyi Nai
Xinyan Liu
W. Li
Jie Chao
J. T. Wang
Leyi Wang
Xichen Li
Xi Chen
Bo Lu
Ziniu Xiao
Niklas Boers
Huiling Yuan
Baoxiang Pan
    AI4CE
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Abstract

Machine learning models have shown great success in predicting weather up to two weeks ahead, outperforming process-based benchmarks. However, existing approaches mostly focus on the prediction task, and do not incorporate the necessary data assimilation. Moreover, these models suffer from error accumulation in long roll-outs, limiting their applicability to seasonal predictions or climate projections. Here, we introduce Generative Assimilation and Prediction (GAP), a unified deep generative framework for assimilation and prediction of both weather and climate. By learning to quantify the probabilistic distribution of atmospheric states under observational, predictive, and external forcing constraints, GAP excels in a broad range of weather-climate related tasks, including data assimilation, seamless prediction, and climate simulation. In particular, GAP is competitive with state-of-the-art ensemble assimilation, probabilistic weather forecast and seasonal prediction, yields stable millennial simulations, and reproduces climate variability from daily to decadal time scales.

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@article{yang2025_2503.03038,
  title={ Generative assimilation and prediction for weather and climate },
  author={ Shangshang Yang and Congyi Nai and Xinyan Liu and Weidong Li and Jie Chao and Jingnan Wang and Leyi Wang and Xichen Li and Xi Chen and Bo Lu and Ziniu Xiao and Niklas Boers and Huiling Yuan and Baoxiang Pan },
  journal={arXiv preprint arXiv:2503.03038},
  year={ 2025 }
}
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