数值天气预报
全球预报系统
天气预报
气象学
热带气旋预报模式
航程(航空)
北美中尺度模式
计算机科学
人工神经网络
模型输出统计
天气预报
概率预测
离散化
环境科学
人工智能
地理
数学
概率逻辑
材料科学
复合材料
数学分析
作者
Kaifeng Bi,Lingxi Xie,Hengheng Zhang,Xin Chen,Xiaotao Gu,Qi Tian
出处
期刊:Nature
[Springer Nature]
日期:2023-07-05
卷期号:619 (7970): 533-538
被引量:301
标识
DOI:10.1038/s41586-023-06185-3
摘要
Weather forecasting is important for science and society. At present, the most accurate forecast system is the numerical weather prediction (NWP) method, which represents atmospheric states as discretized grids and numerically solves partial differential equations that describe the transition between those states1. However, this procedure is computationally expensive. Recently, artificial-intelligence-based methods2 have shown potential in accelerating weather forecasting by orders of magnitude, but the forecast accuracy is still significantly lower than that of NWP methods. Here we introduce an artificial-intelligence-based method for accurate, medium-range global weather forecasting. We show that three-dimensional deep networks equipped with Earth-specific priors are effective at dealing with complex patterns in weather data, and that a hierarchical temporal aggregation strategy reduces accumulation errors in medium-range forecasting. Trained on 39 years of global data, our program, Pangu-Weather, obtains stronger deterministic forecast results on reanalysis data in all tested variables when compared with the world's best NWP system, the operational integrated forecasting system of the European Centre for Medium-Range Weather Forecasts (ECMWF)3. Our method also works well with extreme weather forecasts and ensemble forecasts. When initialized with reanalysis data, the accuracy of tracking tropical cyclones is also higher than that of ECMWF-HRES.
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