A Machine Learning-Based Observational Constraint Correction Method for Seasonal Precipitation Prediction
ID:993 View Protection:ATTENDEE Updated Time:2026-04-10 13:56:04 Hits:176 Oral Presentation

Start Time:2026-04-26 17:45(Asia/Shanghai)

Duration:10min

Session:S1-3 专题1.3 人工智能在大气海洋中的应用 » F12专题1.3 人工智能在大气海洋中的应用

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Abstract
Seasonal precipitation has always been a key focus of climate prediction. As a dynamic-statistical combined method, the existing observational constraint correction establishes a regression relationship between the numerical model outputs and historical observations, which can partly predict seasonal precipitation. However, solving a nonlinear problem through linear regression is significantly biased. This study implements a nonlinear optimization of an existing observational constrained correction model using a Light Gradient Boosting Machine (LightGBM) machine learning algorithm based on output from the Beijing National Climate Center Climate System Model (BCC-CSM) and station observations to improve the prediction of summer precipitation in China. The model was trained using a rolling approach, and LightGBM outperformed Linear Regression (LR), Extreme Gradient Boosting (XGBoost), and Categorical Boosting (CatBoost). Using parameter tuning to optimize the machine learning model and predict future summer precipitation using eight different predictors in BCC-CSM, the mean Anomaly Correlation Coefficient (ACC) score in the 2019–22 summer precipitation predictions was 0.17, and the mean Prediction Score (PS) reached 74. The PS score was improved by 7.87% and 6.63% compared with the BCC-CSM and the linear observational constraint approach, respectively. The observational constraint correction prediction strategy with LightGBM significantly and stably improved the prediction of summer precipitation in China compared to the previous linear observational constraint solution, providing a reference for flood control and drought relief during the flood season (summer) in China.
Keywords
Machine Learning,Observational Constraint,LightGBM,seasonal prediction
Speaker
ZhangBofei
博士生 中科院西北生态环境资源研究院

Submission Author
ZhangBofei 中科院西北生态环境资源研究院
于海鹏 中国科学院西北生态环境资源研究院
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Important Date
  • Conference Date

    Apr 25

    2026

    to

    Apr 29

    2026

  • Apr 07 2026

    Draft paper submission deadline

  • Jun 17 2026

    Registration deadline

Sponsored By
未来大气科学论坛理事会
Organized By
河海大学海洋学院
南京大学南京赫尔辛基大气与地球系统科学学院
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