利用卷积神经网络预测热带气旋的短期强度变化

IF 3 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES Weather and Forecasting Pub Date : 2023-11-29 DOI:10.1175/waf-d-23-0085.1
Sarah M. Griffin, Anthony Wimmers, Christopher S. Velden
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引用次数: 0

摘要

本研究详细介绍了预测全球热带气旋(TC)当前和短期强度变化的两种机器学习方法--"D-MINT "和 "D-PRINT"。D-MINT 和 D-PRINT 使用红外图像和环境标量预测因子,而 D-MINT 还使用了微波图像。结果表明,目前 D-MINT 和 D-PRINT 对热带气旋强度的估计比业务预报员对北大西洋、北太平洋东部和西部热带气旋常规使用的三种既定强度估计方法更为娴熟。在 6 小时、12 小时、18 小时和 24 小时准备时间内,短期强度预测与五种业务确定性指南进行了验证。在北大西洋和北太平洋东部的热带气旋中,D-MINT 和 D-PRINT 的预测精度低于 NHC 和共识热带气旋强度预测精度,但在至少一半的准备时间内,D-MINT 和 D-PRINT 的预测精度高于其他指南。在北太平洋西部、北印度洋和南半球的热带气旋中,D-MINT 在一半以上的准备时间内比 JTWC 和其他单个热带气旋强度预测更有技能。在北大西洋和北太平洋西部的热带气旋中,D-MINT 对热带气旋快速增强(RI)的概率预测比三个实际使用的 RI 指南更准确,但对 "是"-"否 "RI 预测的准确性较低。此外,这项工作还证明了微波图像的重要性,因为 D-MINT 比 D-PRINT 更熟练。由于 D-MINT 和 D-PRINT 均为卷积神经网络模型,可查询 TC 卫星图像中的二维结构,因此本研究还证明,与现有业务模型中的卫星图像标量统计相比,这些特征可提供更好的短期预测。最后,还揭示了一种诊断工具,以帮助对 D-MINT/D-PRINT 强度预测进行归因。
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Predicting Short-term Intensity change in Tropical Cyclones using a Convolutional Neural Network
This study details a two-method, machine-learning approach to predict current and short-term intensity change in global tropical cyclones (TCs), ‘D-MINT’ and ‘D-PRINT’. D-MINT and D-PRINT use infrared imagery and environmental scalar predictors, while D-MINT also employs microwave imagery. Results show that current TC intensity estimates from D-MINT and D-PRINT are more skillful than three established intensity estimation methods routinely used by operational forecasters for North Atlantic, and eastern and western North Pacific TCs. Short-term intensity predictions are validated against five operational deterministic guidances at 6-, 12-, 18-, and 24-hour lead times. D-MINT and D-PRINT are less skillful than NHC and consensus TC intensity predictions in North Atlantic and eastern North Pacific TCs, but are more skillful than the other guidances for at least half of the lead times. In western North Pacific, North Indian Ocean, and Southern Hemisphere TCs, D-MINT is more skillful than the JTWC and other individual TC intensity forecasts for over half of the lead times. When probabilistically predicting TC rapid intensification (RI), D-MINT is more skillful in North Atlantic and western North Pacific TCs than three operationally-used RI guidances, but less skillful for yes-no RI forecasts. In addition, this work demonstrates the importance of microwave imagery, as D-MINT is more skillful than D-PRINT. Since D-MINT and D-PRINT are convolutional neural network models interrogating two-dimensional structures within TC satellite imagery, this study also demonstrates that those features can yield better short-term predictions than existing scalar statistics of satellite imagery in operational models. Finally, a diagnostics tool is revealed to aid the attribution of the D-MINT/D-PRINT intensity predictions.
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来源期刊
Weather and Forecasting
Weather and Forecasting 地学-气象与大气科学
CiteScore
5.20
自引率
17.20%
发文量
131
审稿时长
6-12 weeks
期刊介绍: Weather and Forecasting (WAF) (ISSN: 0882-8156; eISSN: 1520-0434) publishes research that is relevant to operational forecasting. This includes papers on significant weather events, forecasting techniques, forecast verification, model parameterizations, data assimilation, model ensembles, statistical postprocessing techniques, the transfer of research results to the forecasting community, and the societal use and value of forecasts. The scope of WAF includes research relevant to forecast lead times ranging from short-term “nowcasts” through seasonal time scales out to approximately two years.
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