TCDetect:一种利用深度学习检测热带气旋存在的新方法

Daniel Galea, Julian Kunkel, B. Lawrence
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引用次数: 0

摘要

热带气旋是影响很大的天气事件,对人类和经济都有很大的影响,因此了解它们的位置、频率和结构在未来气候中如何变化是很重要的。在这里,提出了一个轻量级的深度学习模型,用于在执行数值模拟期间检测热带气旋的存在或不存在,用于在线数据简化方法。这将有助于避免在模拟完成后为分析保存大量数据。有了运行时检测,就有可能减少对高频高分辨率输出的需求。该模型是在1979年至2017年的ERA-Interim再分析数据上进行训练的,训练的重点是提供尽可能高的召回率(成功检测到气旋),同时拒绝足够的数据以产生输出差异。当使用随后两年的数据进行测试时,召回率或检测率的概率为92%。获得的准确率或成功率为36%。对于期望的数据约简应用,如果期望的目标包括所有热带气旋事件,甚至那些没有获得飓风强度状态的热带气旋事件,则有效精度为85%。精密度召回(AUC-PR)的召回率和曲线下面积与其他旋风识别方法相比具有优势,同时使用最小数量的参数进行训练和推理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TCDetect: A New Method of Detecting the Presence of Tropical Cyclones Using Deep Learning
Tropical cyclones are high-impact weather events that have large human and economic effects, so it is important to be able to understand how their location, frequency, and structure might change in a future climate. Here, a lightweight deep learning model is presented that is intended for detecting the presence or absence of tropical cyclones during the execution of numerical simulations for use in an online data reduction method. This will help to avoid saving vast amounts of data for analysis after the simulation is complete. With run-time detection, it might be possible to reduce the need for some of the high-frequency high-resolution output that would otherwise be required. The model was trained on ERA-Interim reanalysis data from 1979 to 2017, and the training was concentrated on delivering the highest possible recall rate (successful detection of cyclones) while rejecting enough data to make a difference in outputs. When tested using data from the two subsequent years, the recall or probability of detection rate was 92%. The precision rate or success ratio obtained was that of 36%. For the desired data reduction application, if the desired target included all tropical cyclone events, even those that did not obtain hurricane-strength status, the effective precision was 85%. The recall rate and the area under curve for the precision–recall (AUC-PR) compare favorably with other methods of cyclone identification while using the smallest number of parameters for both training and inference.
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