基于生成对抗网络的千米尺度数值天气预报的多元模拟:概念验证

Clément Brochet, Laure Raynaud, Nicolas Thome, Matthieu Plu, Clément Rambour
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引用次数: 0

摘要

摘要模拟数值天气预报(NWP)模式输出对于高效计算大型天气场数据集具有重要意义。本文的目的是研究生成对抗网络(gan)模拟千米尺度NWP模型的多变量输出(10米风和2米温度)分布的能力。为此,使用光谱归一化进行正则化的残差GAN架构,针对来自AROME集合预测系统(AROME- eps)的公里尺度数据集进行训练。用于质量评估的度量范围很广,包括像素和多尺度土方距离、光谱分析和相关长度尺度。本文还介绍了利用小波散射系数作为有意义的度量。GAN生成的样本具有良好的分布恢复能力和较好的平均谱重建能力。重要的当地天气模式以高水平的细节重现,而多变量样本的联合生成与潜在的AROME-EPS分布相匹配。引入的不同指标以互补的方式描述了GAN的行为,强调了在发电质量评估中需要超越频谱分析。一项消融研究表明,从生成过程中去除变量是全局有益的,指出了氮化镓在利用交叉变量相关性方面的局限性。绝对位置偏差在训练过程中的作用也被描述,解释了多元仿真中的加速学习和质量多样性权衡。这些结果打开了使用GAN来丰富NWP集成方法的视角,前提是上述位置偏差得到适当控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multivariate emulation of kilometer-scale numerical weather predictions with generative adversarial networks: a proof-of-concept
Emulating numerical weather prediction (NWP) model outputs is important to compute large datasets of weather fields in an efficient way. The purpose of the present paper is to investigate the ability of generative adversarial networks (GAN) to emulate distributions of multivariate outputs (10-meter wind and 2-meter temperature) of a kilometer-scale NWP model. For that purpose, a residual GAN architecture, regularized with spectral normalization, is trained against a kilometer-scale dataset from the AROME ensemble prediction system (AROME-EPS). A wide range of metrics is used for quality assessment, including pixel-wise and multi-scale earth-mover distances, spectral analysis, and correlation length scales. The use of wavelet-based scattering coefficients as meaningful metrics is also presented. The GAN generates samples with good distribution recovery and good skill in average spectrum reconstruction. Important local weather patterns are reproduced with a high level of detail, while the joint generation of multivariate samples matches the underlying AROME-EPS distribution. The different metrics introduced describe the GAN’s behavior in a complementary manner, highlighting the need to go beyond spectral analysis in generation quality assessment. An ablation study then shows that removing variables from the generation process is globally beneficial, pointing at the GAN limitations to leverage cross-variable correlations. The role of absolute positional bias in the training process is also characterized, explaining both accelerated learning and quality-diversity trade-off in the multivariate emulation. These results open perspectives about the use of GAN to enrich NWP ensemble approaches, provided that the aforementioned positional bias is properly controlled.
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