Despite continuous improvements, precipitation forecasts are still not as accurate and reliable as those of other meteorological variables. A major contributing factor to this is that several key processes affecting precipitation distribution and intensity occur below the resolved scale of global weather models. Generative adversarial networks (GANs) have been demonstrated by the computer vision community to be successful at super-resolution problems, i.e., learning to add fine-scale structure to coarse images. Leinonen et al. (2020) previously applied a GAN to produce ensembles of reconstructed high-resolution atmospheric fields, given coarsened input data. In this paper, we demonstrate this approach can be extended to the more challenging problem of increasing the accuracy and resolution of comparatively low-resolution input from a weather forecasting model, using high-resolution radar measurements as a "ground truth". The neural network must learn to add resolution and structure whilst accounting for non-negligible forecast error. We show that GANs and VAE-GANs can match the statistical properties of state-of-the-art pointwise post-processing methods whilst creating high-resolution, spatially coherent precipitation maps. Our model compares favourably to the best existing downscaling methods in both pixel-wise and pooled CRPS scores, power spectrum information and rank histograms (used to assess calibration). We test our models and show that they perform in a range of scenarios, including heavy rainfall.
翻译:尽管不断改进,降水预测仍不如其他气象变数准确和可靠,其中的一个主要促成因素是,影响降水分布和强度的几个关键进程都低于全球气象模型的确定规模。计算机视觉界已经证明,在超解问题方面,计算机视觉界表现出了对抗网络(GANs)的成功,即学习为粗糙的图像添加微尺度结构。Leinonen等人(202020年)以前曾使用GAN来生成重建高分辨率大气场的集合,而输入数据则不准确。在本文件中,我们展示了这一方法可以扩大到一个更具挑战性的问题,即提高天气预报模型中相对低分辨率投入的准确性和分辨率的解决方案,使用高分辨率雷达测量作为“地面真相” 。神经网络必须学会增加分辨率和结构,同时计算出非明显的预测错误。我们显示,GANs和VAE-GANs可以匹配最新的高清晰度后处理方法的统计特性,同时创建高分辨率、空间一致性的降水量图。我们的数据模型与现有最强的测算模型相比,我们的测算模型和最精确的测算方法都显示我们目前的测得其最精度的测的测程。