Yan Zihuang, Lu Xianghui, Wu Lifeng, Liu Fa, Qiu Rangjian, Cui Yaokui, Ma Xin
School of Soil and Water Conservation, Nanchang Institute of Technology, Nanchang, 330099, China.
State Key Laboratory of Simulation and Regulation of Water Cycle in River Basin, China Institute of Water Resources and Hydropower Research, Beijing, 100038, China.
Sci Rep. 2025 Apr 28;15(1):14771. doi: 10.1038/s41598-025-98944-7.
The accurate cumulative precipitation forecasts are essential for monitoring water resources and natural disasters. The combination of deep learning and big data has become a new direction for precipitation forecasting. However, the current large models are still lacking in-situ data verification. To accomplish this goal, the precipitation forecasting performance of a state-of-the-art model GraphCast was evaluated. Using the cumulative precipitation data from 2393 observation stations for the 1-3 day period as a reference, we assessed the cumulative precipitation in mainland China region for the 1-3 day period from 2020 to 2021, utilizing a high-resolution model with 0.25° × 0.25° grid spacing and 13 layers of parameters. The precipitation of European Centre for Medium-Range Weather Forecasts (ECMWF) was also compared. The results show that: (1) During the 2020-2021 period, for the 1-day, 2-day, and 3-day cumulative precipitation forecasts, the Root Mean Square Error (RMSE) values of GraphCast were primarily between 0.46 to 9.38 mm/d, 0.44 to 9.06 mm/d, and 0.44 to 9.06 mm/d, respectively. The Mean Error (ME) values were mainly between - 0.595 to 1.705 (0.01 mm). (2) As the forecast period extends, the forecasting capability of GraphCast declines. (3) In the 1-3 day cumulative precipitation forecasts for various stations in mainland China, GraphCast demonstrates higher predictive accuracy than ECMWF. (4) Compared to ECMWF, GraphCast demonstrated the best forecast performance in the temperate humid and semi-humid regions of Northeast China, with the RMSE being approximately 12% higher. Our study indicates that GraphCast demonstrates significant potential and higher accuracy in precipitation forecasting.
准确的累积降水量预报对于水资源监测和自然灾害监测至关重要。深度学习与大数据的结合已成为降水预报的新方向。然而,当前的大型模型仍缺乏实地数据验证。为实现这一目标,对最先进的模型GraphCast的降水预报性能进行了评估。以2393个观测站1 - 3天的累积降水量数据为参考,利用网格间距为0.25°×0.25°、有13层参数的高分辨率模型,评估了2020年至2021年中国大陆地区1 - 3天的累积降水量。还比较了欧洲中期天气预报中心(ECMWF)的降水情况。结果表明:(1)在2020 - 2021年期间,对于1天、2天和3天的累积降水量预报,GraphCast的均方根误差(RMSE)值主要分别在0.46至9.38毫米/天、0.44至9.06毫米/天和0.44至9.06毫米/天之间。平均误差(ME)值主要在 - 0.595至1.705(0.01毫米)之间。(2)随着预报期延长,GraphCast的预报能力下降。(3)在中国大陆各站点1 - 3天的累积降水量预报中,GraphCast的预测准确率高于ECMWF。(4)与ECMWF相比,GraphCast在中国东北温带湿润和半湿润地区的预报性能最佳,RMSE约高12%。我们的研究表明,GraphCast在降水预报方面具有显著潜力和更高的准确性。