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RainNet v1.0: a?convolutional neural network for radar-based precipitation nowcasting

机译:Rainnet V1.0:a?云升温神经网络,用于雷达的降水垂通

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In this study, we present RainNet, a?deep convolutional neural network for radar-based precipitation nowcasting. Its design was inspired by the U-Net and SegNet families of deep learning models, which were originally designed for binary segmentation tasks. RainNet was trained to predict continuous precipitation intensities at a?lead time of 5min, using several years of quality-controlled weather radar composites provided by the German Weather Service (DWD). That data set covers Germany with a?spatial domain of 900?km×900km and has a?resolution of 1km in space and 5min in time. Independent verification experiments were carried out on 11 summer precipitation events from 2016 to 2017. In order to achieve a?lead time of 1h, a?recursive approach was implemented by using RainNet predictions at 5min lead times as model inputs for longer lead times. In the verification experiments, trivial Eulerian persistence and a?conventional model based on optical flow served as benchmarks. The latter is available in the rainymotion library and had previously been shown to outperform DWD's operational nowcasting model for the same set of verification events. RainNet significantly outperforms the benchmark models at all lead times up to 60min for the routine verification metrics mean absolute error (MAE) and the critical success index (CSI) at intensity thresholds of 0.125, 1, and 5mm?h?1. However, rainymotion turned out to be superior in predicting the exceedance of higher intensity thresholds (here 10 and 15mm?h?1). The limited ability of RainNet to predict heavy rainfall intensities is an undesirable property which we attribute to a?high level of spatial smoothing introduced by the model. At a?lead time of 5min, an analysis of power spectral density confirmed a?significant loss of spectral power at length scales of 16km and below. Obviously, RainNet had learned an optimal level of smoothing to produce a?nowcast at 5min lead time. In that sense, the loss of spectral power at small scales is informative, too, as it reflects the limits of predictability as a?function of spatial scale. Beyond the lead time of 5min, however, the increasing level of smoothing is a?mere artifact – an analogue to numerical diffusion – that is not a?property of RainNet itself but of its recursive application. In the context of early warning, the smoothing is particularly unfavorable since pronounced features of intense precipitation tend to get lost over longer lead times. Hence, we propose several options to address this issue in prospective research, including an adjustment of the loss function for model training, model training for longer lead times, and the prediction of threshold exceedance in terms of a?binary segmentation task. Furthermore, we suggest additional input data that could help to better identify situations with imminent precipitation dynamics. The model code, pretrained weights, and training data are provided in open repositories as an input for such future studies.
机译:在这项研究中,我们呈现Rainnet,一种雷达沉淀的雷达沉淀神经网络。它的设计是由U-Net和SEGNET系列的深度学习模型的启发,最初是为二元分割任务而设计的。 Rainnet培训以预测A的连续降水强度为5分钟,使用德国天气服务(DWD)提供的几年的质量控制的天气雷达复合材料。该数据集涵盖了德国的德国,空间域为900?Km×900km,并且在空间和5分钟内有1km的分辨率。从2016年到2017年的11个夏季降水事件进行了独立的验证实验。为了实现1小时的延长时间,a?递归方法是通过在5分钟的交货时间内使用Rainnet预测作为模型输入来实现,因为更长的交换时间。在验证实验中,琐碎的欧拉持久性和a?基于光学流的传统模型用作基准。后者在rapyMotion库中可用,并以前已显示以相同的一组验证事件表达DWD的操作系统Newcasting模型。 RAINNET在常规验证度量的平均绝对误差(MAE)和临界成功索引(CSI)的所有转速时间明显优于60分钟的基准模型,其强度阈值为0.125,1和5mm?1。然而,在预测更高强度阈值(这里10和15mm?H 1)时,雨指率先变得优越。 Rainnet预测大雨强度的有限能力是一个不希望的财产,我们归因于该模型引入的高水平空间平滑。在5分钟的情况下,功率谱密度的分析证实了频谱功率的显着损失,长度为16km和以下。显然,Rainnet已经学习了最佳的平滑水平,以产生a?现在播放5分钟的时间。从这种意义上讲,小尺度的光谱功率损失也是信息,因为它反映了可预测性的限制作为空间尺度的功能。然而,超出了5分钟的延长时间,平滑水平的水平是a?仅仅是伪像 - 一个模拟到数值扩散 - 这不是rainnet本身的属性,而是其递归应用。在预警的背景下,平滑是特别不利的,因为强烈降水的明显特征往往会丢失更长的交货时间。因此,我们提出了几种选择来解决前瞻性研究中的这个问题,包括调整模型训练的损失功能,模型训练对于更长的交货时间,以及在a二进制分割任务方面的阈值超越的预测。此外,我们建议额外的输入数据,有助于更好地识别迫在眉睫的降水动态的情况。在开放的存储库中提供了模型代码,预制权重以及培训数据作为这种未来研究的输入。

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