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Tropical and Extratropical Cyclone Detection Using Deep Learning

机译:热带和卓越的旋风探测使用深度学习

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Extracting valuable information from large sets of diverse meteorological data is a time-intensive process. Machine-learning methods can help to improve both speed and accuracy of this process. Specifically, deep-learning image-segmentation models using the U-Net structure perform faster and can identify areas that are missed by more restrictive approaches, such as expert hand-labeling and a priori heuristic methods. This paper discusses four different state-of-the-art U-Net models designed for detection of tropical and extratropical cyclone regions of interest (ROI) from two separate input sources: total precipitable water output from the Global Forecast System (GFS) model and water vapor radiance images from the Geostationary Operational Environmental Satellite (GOES). These models are referred to as International Best Track Archive for Climate Stewardship (IBTrACS)-GFS, Heuristic-GFS, IBTrACS-GOES, and Heuristic-GOES. All four U-Nets are fast information extraction tools and perform with an ROI detection accuracy ranging from 80% to 99%. These are additionally evaluated with the Dice and Tversky intersection-over-union (IoU) metrics, having Dice coefficient scores ranging from 0.51 to 0.76 and Tversky coefficients ranging from 0.56 to 0.74. The extratropical cyclone U-Net model performed 3 times as fast as the comparable heuristic model used to detect the same ROI. The U-Nets were specifically selected for their capabilities in detecting cyclone ROI beyond the scope of the training labels. These machine-learning models identified more ambiguous and active ROI missed by the heuristic model and hand-labeling methods that are commonly used in generating real-time weather alerts, having a potentially direct impact on public safety.
机译:从大量不同的气象数据中提取有价值的信息是一个耗时的过程。机器学习方法可以帮助提高这个过程的速度和准确性。具体地说,使用U-Net结构的深度学习图像分割模型执行速度更快,并且可以识别被更严格的方法(如专家手标记和先验启发式方法)遗漏的区域。本文讨论了四种不同的最先进的U-Net模型,这些模型用于从两个独立的输入源检测热带和温带气旋感兴趣区域(ROI):全球预报系统(GFS)模型的总可降水量和地球静止运行环境卫星(GOES)的水汽辐射图像。这些模型被称为国际气候管理最佳路径档案(IBTrACS)——GFS、启发式GFS、IBTrACS GOES和启发式GOES。所有四个U型网络都是快速信息提取工具,ROI检测准确率在80%到99%之间。此外,还使用Dice和Tversky联合交集(IoU)指标对这些指标进行评估,Dice系数得分范围为0.51到0.76,Tversky系数范围为0.56到0.74。温带气旋U-Net模型的速度是用于检测相同ROI的可比启发式模型的3倍。U型网络是专门选择的,因为它们能够检测超出培训标签范围的气旋ROI。这些机器学习模型确定了启发式模型和手动标记方法遗漏的更模糊和活跃的ROI,这些方法通常用于生成实时天气警报,对公共安全有潜在的直接影响。

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