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Optical flow models as an open benchmark for radar-based precipitation nowcasting (rainymotion v0.1)

机译:光学流模型作为雷达的降水Newactioning(RapyMotion V0.1)的开放基准

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Quantitative precipitation nowcasting (QPN) has become an essential technique in various application contexts, such as early warning or urban sewage control. A common heuristic prediction approach is to track the motion of precipitation features from a sequence of weather radar images and then to displace the precipitation field to the imminent future (minutes to hours) based on that motion, assuming that the intensity of the features remains constant (“Lagrangian persistence”). In that context, “optical flow” has become one of the most popular tracking techniques. Yet the present landscape of computational QPN models still struggles with producing open software implementations. Focusing on this gap, we have developed and extensively benchmarked a stack of models based on different optical flow algorithms for the tracking step and a set of parsimonious extrapolation procedures based on image warping and advection. We demonstrate that these models provide skillful predictions comparable with or even superior to state-of-the-art operational software. Our software library (“rainymotion”) for precipitation nowcasting is written in the Python programming language and openly available at GitHub (https://github.com/hydrogo/rainymotion, Ayzel et al.,?2019). That way, the library may serve as a tool for providing fast, free, and transparent solutions that could serve as a benchmark for further model development and hypothesis testing – a benchmark that is far more advanced than the conventional benchmark of Eulerian persistence commonly used in QPN verification experiments.
机译:定量降水Newacting(QPN)已成为各种应用上下文中的基本技术,例如预警或城市污水控制。一种常见的启发式预测方法是从天气雷达图像序列跟踪降水特征的运动,然后基于该运动将降水场移位到即将发生的未来(分钟到小时),假设特征的强度保持恒定(“拉格朗日持久性”)。在这种情况下,“光学流动”已成为最受欢迎的跟踪技术之一。然而,目前的计算QPN模型景观仍然努力生产开放的软件实现。专注于这一差距,我们已经开发了基于不同光流算法的基于不同光学流程的一堆模型,以及基于图像翘曲和平流的一组解析推断程序。我们展示这些模型提供了与最先进的操作软件相当的熟练预测。我们的软件库(“rapymotion”)用于降水垂圈,以Python编程语言编写,在Github(https://github.com/hydrogo/rainymotion,Ayzel等,2019)中公开提供。这样,图书馆可以作为提供快速,免费和透明解决方案的工具,该解决方案可以作为进一步的模型开发和假设检测的基准 - 比常规使用的欧拉持久性的传统基准更先进的基准QPN验证实验。

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