论文标题
FourcastNet:使用自适应傅立叶神经操作员的全球数据驱动的高分辨率天气模型
FourCastNet: A Global Data-driven High-resolution Weather Model using Adaptive Fourier Neural Operators
论文作者
论文摘要
Fourier预测神经网络的缩写是一个全球数据驱动的天气预报模型,可提供准确的短至中等范围的全局预测,价格为$ 0.25^{\ circ} $分辨率。四castnet准确地预测了高分辨率,快速的变量,例如表面风速,降水和大气水蒸气。它对计划风能资源具有重要意义,预测了热带气旋,热带气旋和大气河等极端天气事件。四castnet匹配ECMWF集成预测系统(IFS)的预测准确性,即最先进的数值天气预测(NWP)模型,在大型变量的短交货时间内,较短的交货时间,同时超过了具有复杂优质结构的变量的表现。 Fourcastnet在不到2秒的时间内产生了为期一周的预测,比IFS的数量级快。四castnet的速度可以创建快速且廉价的大型预测,并具有数千个合奏会员,以改善概率预测。我们讨论了数据驱动的深度学习模型(例如Fourcastnet)如何是气象学工具包的宝贵补充,以帮助和增强NWP模型。
FourCastNet, short for Fourier Forecasting Neural Network, is a global data-driven weather forecasting model that provides accurate short to medium-range global predictions at $0.25^{\circ}$ resolution. FourCastNet accurately forecasts high-resolution, fast-timescale variables such as the surface wind speed, precipitation, and atmospheric water vapor. It has important implications for planning wind energy resources, predicting extreme weather events such as tropical cyclones, extra-tropical cyclones, and atmospheric rivers. FourCastNet matches the forecasting accuracy of the ECMWF Integrated Forecasting System (IFS), a state-of-the-art Numerical Weather Prediction (NWP) model, at short lead times for large-scale variables, while outperforming IFS for variables with complex fine-scale structure, including precipitation. FourCastNet generates a week-long forecast in less than 2 seconds, orders of magnitude faster than IFS. The speed of FourCastNet enables the creation of rapid and inexpensive large-ensemble forecasts with thousands of ensemble-members for improving probabilistic forecasting. We discuss how data-driven deep learning models such as FourCastNet are a valuable addition to the meteorology toolkit to aid and augment NWP models.