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Estimating Tropical Cyclone Intensity by Satellite Imagery Utilizing Convolutional Neural Networks

机译:利用卷积神经网络估算卫星图像的热带气旋强度

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Accurately estimating tropical cyclone (TC) intensity is one of the most critical steps in TC forecasting and disaster warning/management. For over 40 years, the Dvorak technique (and several improved versions) has been applied for estimating TC intensity by forecasters worldwide. However, the operational Dvorak techniques primarily used in various agencies have several deficiencies, such as inherent subjectivity leading to inconsistent intensity estimates within various basins. This collaborative study between meteorologists and data scientists has developed a deep-learning model using satellite imagery to estimate TC intensity. The conventional convolutional neural network (CNN), which is a mature technology for object classification, requires several modifications when being used for directly estimating TC intensity (a regression task). Compared to the Dvorak technique, the CNN model proposed here is objective and consistent among various basins; it has been trained with satellite infrared brightness temperature and microwave rain-rate data from 1097 global TCs during 2003-14 and optimized with data from 188 TCs during 2015-16. This paper also introduces an upgraded version that further improves the accuracy by using additional TC information (i.e., basin, day of year, local time, longitude, and latitude) and applying a postsmoothing procedure. An independent testing dataset of 94 global TCs during 2017 has been used to evaluate the model performance. A root-mean-square intensity difference of 8.39 kt (1 kt approximate to 0.51 m s(-1)) is achieved relative to the best track intensities. For a subset of 482 samples analyzed with reconnaissance observations, a root-mean-square intensity difference of 8.79 kt is achieved.
机译:准确估计热带气旋(TC)强度是TC预测和灾害警告/管理中最关键的步骤之一。超过40年,DVORAK技术(以及几种改进版本)已被应用于全球预报仪估算TC强度。然而,主要用于各种机构的操作DVORAK技术具有多种缺陷,例如固有的主体性,导致各种盆地内的强度估计不一致。这种气象学家和数据科学家之间的协作研究已经开发了一种使用卫星图像来估计TC强度的深度学习模型。作为对象分类的成熟技术,传统的卷积神经网络(CNN)需要几种修改,用于直接估计TC强度(回归任务)。与DVORAK技术相比,这里提出的CNN模型是各种盆地的客观和一致;它在2003-14期间,它已经接受过卫星红外亮度温度和微波雨率数据,并在2015-16期间通过188 TCS的数据进行了优化。本文还介绍了一种升级版本,通过使用额外的TC信息(即,一年,一年,当地时间,经度和纬度)来进一步提高准确性,并应用专业过程。 2017年期间94个全局TCS的独立测试数据集已被用于评估模型性能。相对于最佳轨道强度,实现了8.39kt(1kt近似为0.51M S(-1))的根平均方强度差。对于用侦察观察分析的482个样品的子集,实现了8.79kt的根平均方形强度差。

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