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How to systematically develop an effective AI-based bias correction model?

21 April 2025
Xiao Zhou
Yuze Sun
Jie Wu
Xiaomeng Huang
    AI4Cl
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Abstract

This study introduces ReSA-ConvLSTM, an artificial intelligence (AI) framework for systematic bias correction in numerical weather prediction (NWP). We propose three innovations by integrating dynamic climatological normalization, ConvLSTM with temporal causality constraints, and residual self-attention mechanisms. The model establishes a physics-aware nonlinear mapping between ECMWF forecasts and ERA5 reanalysis data. Using 41 years (1981-2021) of global atmospheric data, the framework reduces systematic biases in 2-m air temperature (T2m), 10-m winds (U10/V10), and sea-level pressure (SLP), achieving up to 20% RMSE reduction over 1-7 day forecasts compared to operational ECMWF outputs. The lightweight architecture (10.6M parameters) enables efficient generalization to multiple variables and downstream applications, reducing retraining time by 85% for cross-variable correction while improving ocean model skill through bias-corrected boundary conditions. The ablation experiments demonstrate that our innovations significantly improve the model's correction performance, suggesting that incorporating variable characteristics into the model helps enhance forecasting skills.

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@article{zhou2025_2504.15322,
  title={ How to systematically develop an effective AI-based bias correction model? },
  author={ Xiao Zhou and Yuze Sun and Jie Wu and Xiaomeng Huang },
  journal={arXiv preprint arXiv:2504.15322},
  year={ 2025 }
}
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