基于深度学习的数值天气预报改进方法

А.Yu. Doroshenko, V. Shpyg, R. Kushnirenko
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摘要

本文简要介绍了数值天气预报的发展历史。介绍了大气过程建模过程中出现的困难、困难的性质以及缓解困难的可能方法。文章还指出了提高气象预报质量的其他方法。本文简要介绍了深度学习的历史及其应用于气象问题的可能方法。然后,本文介绍了用于存储 COSMO 区域数值模式 2 米气温预报的格式。所提出的神经网络架构可以纠正数值模式的预报误差。我们对基辅地区八个气象站的数据进行了实验,因此获得了八个训练有素的神经网络模型。结果表明,在超过 50%的情况下,建议的架构能够获得更高质量的预报。结果预报的均方根误差降低了,这是气象科学中提高预报质量的一个普遍技能分数。
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Deeplearning-based approach to improving numerical weather forecasts
This paper briefly describes the history of numerical weather prediction development. The difficulties, which occur in the modelling of atmospheric processes, their nature and possible ways of their mitigation, are described. It also indicates alternative methods of improving the quality of meteorological forecasts. A brief history of deep learning and possible ways of its application to meteorological problems are given. Then, the paper describes the format used to store the 2m temperature forecasts of the COSMO numerical regional model. The proposed neural network architecture enables correcting the forecast errors of the numerical model. We conducted the experiments on the data of eight meteorological stations of the Kyiv region, so we obtained eight trained neural network models. The results showed that the proposed architecture enables obtaining better-quality forecasts in more than 50% of cases. Root-mean-square errors of the resulting forecasts decreased, and it is a widespread skill-score of improved-quality forecasts in meteorological science.
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