论文标题

Sentinel-1观察学习从Nexrad搭配与卷积神经网络的降雨制度细分

Rain regime segmentation of Sentinel-1 observation learning from NEXRAD collocations with Convolution Neural Networks

论文作者

Colin, Aurélien, Tandeo, Pierre, Peureux, Charles, Husson, Romain, Longépé, Nicolas, Fablet, Ronan

论文摘要

降雨事件的遥感对于运营和科学需求至关重要,包括天气预报,极端洪水,水循环监测等。地面天气雷达(例如NOAA的下一代雷达(Nexrad))提供了反射性和降水量估计。但是,它们的观察范围仅限于几百公里,促使人们探索了其他遥感方法,尤其是在开阔的海洋上,这代表了不被陆基雷达覆盖的大面积。在这里,我们提出了一种深度学习方法,以对降雨制度进行三级分割的SAR观察。 SAR卫星提供了非常高的分辨率观察,并具有全球覆盖范围。这似乎特别有吸引力,可以告知与雨水相关的细节模式,例如与几公里的特征性尺度相关的细胞相关的模式。我们证明,在Sentinel-1/Nexrad数据集中训练的卷积神经网络明显优于最先进的过滤方案,例如Koch的过滤器。我们的结果表明,在分割降水状态下的性能高,由24.7、31.5和38.8 dBz的阈值描绘。与当前依靠科赫过滤器绘制二元降雨图的方法相比,这些基于多阈值的模型可以提供降雨估算。他们可能会感兴趣地改善高分辨率SAR衍生的风场,这些风场会因降雨而降解,并为研究雨细胞提供了额外的工具。

Remote sensing of rainfall events is critical for both operational and scientific needs, including for example weather forecasting, extreme flood mitigation, water cycle monitoring, etc. Ground-based weather radars, such as NOAA's Next-Generation Radar (NEXRAD), provide reflectivity and precipitation estimates of rainfall events. However, their observation range is limited to a few hundred kilometers, prompting the exploration of other remote sensing methods, particularly over the open ocean, that represents large areas not covered by land-based radars. Here we propose a deep learning approach to deliver a three-class segmentation of SAR observations in terms of rainfall regimes. SAR satellites deliver very high resolution observations with a global coverage. This seems particularly appealing to inform fine-scale rain-related patterns, such as those associated with convective cells with characteristic scales of a few kilometers. We demonstrate that a convolutional neural network trained on a collocated Sentinel-1/NEXRAD dataset clearly outperforms state-of-the-art filtering schemes such as the Koch's filters. Our results indicate high performance in segmenting precipitation regimes, delineated by thresholds at 24.7, 31.5, and 38.8 dBZ. Compared to current methods that rely on Koch's filters to draw binary rainfall maps, these multi-threshold learning-based models can provide rainfall estimation. They may be of interest in improving high-resolution SAR-derived wind fields, which are degraded by rainfall, and provide an additional tool for the study of rain cells.

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