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基于宽度学习的HY-2微波散射计海面高风速订正OA

High Wind Speed Correction of HY-2 Satellite Microwave Scatterometer Based on Broad Learning System

中文摘要英文摘要

针对国产微波散射计高风速订正需求,以 2021-2022年 9个台风的 HY-2系列微波散射计观测资料为数据源,以机载步频微波辐射计(Stepped Frequency Microwave Radiometer,SFMR)风速为参考真值,通过时空匹配构建建模数据集,并将其以 7∶3随机划分为训练集与测试集;基于轻量化的宽度学习系统(Broad Learning System,BLS)开展回归分析,构建高风速订正模型.模型测试结果表明:订正后 HY-2风速的均方根误差(Root Mean Square Error,RMSE)为 4.47 m·s-1,比订正前提升了 35%;风速大于 25 m·s-1 时,订正后风速的RMSE为 6.76 m·s-1,相比订正前的 13.27 m·s-1 有了明显改善.此外,以 2021年台风灿都为例进行对比分析,结果显示订正后 HY-2C最大风速从 22.09 m·s-1 提高至 32.73 m·s-1,并且风速廓线的对比进一步证实了本文模型的有效性.

Accurate observation of sea surface wind fields is essential for tropical cyclone forecasting and meteorological hazard mitigation.The HY-2 series microwave scatterometer continuously measures Ku-band ocean surface winds.However,its current wind speed retrieval algorithm struggles in high wind conditions and systematically underestimates speeds during extreme events such as typhoons.To ad-dress this bias,this study utilized the HY-2 wind speed data of nine tropical cyclones between 2021 and 2022 as the data source.The Stepped Frequency Microwave Radiometer(SFMR)wind speed measure-ments served as the ground truth.A modeling dataset was constructed by resampling the SFMR refer-ence data to match the 25 km spatial resolution of the HY-2 scatterometer,followed by spatiotemporal matching within a two-hour time window.The matched dataset was then randomly divided into a train-ing set and a testing set at a 7∶3 ratio.Subsequently,the Broad Learning System(BLS)was employed to conduct the regression analysis and develop a high-wind-speed correction model.BLS employs a shal-low,flat architecture in which input features are expanded into"enhanced nodes",avoiding the deep stacks typical of conventional neural networks.This structure reduces computational cost and acceler-ates convergence while maintaining predictive performance.Validation results demonstrate that the cor-rected HY-2 wind speeds achieved a Root Mean Square Error(RMSE)of 4.47 m·s-1,representing a 35%improvement compared to the uncorrected data.For wind speeds exceeding 25 m·s-1,the corrected RMSE reached 6.76 m·s-1,marking significant enhancements over the original values of 13.27 m·s-1.Additionally,a comparative analysis using Typhoon Chanthu(in 2021)as a case study revealed that the corrected HY-2C maximum wind speed increased from 22.09 m·s-1 to 32.73 m·s-1,closely matching wind fields retrieved by Synthetic Aperture Radar(SAR).Further validation through wind speed profile comparisons confirmed the effectiveness of the proposed model.These results demonstrate that our correction framework markedly improves extreme-wind retrieval accuracy,yielding bias-corrected HY-2 products that are more reliable for applications,such as storm surge simulation and typhoon track forecasting.

苏月;张金鑫;刘桂红;马文韬;于暘;吴之恒;汪胜;杨晓峰;光洁

中国科学院空天信息创新研究院 遥感与数字地球全国重点实验室 北京 100101||中国科学院大学 北京 100049中国科学院空天信息创新研究院 遥感与数字地球全国重点实验室 北京 100101||中国科学院大学 北京 100049中国科学院空天信息创新研究院 遥感与数字地球全国重点实验室 北京 100101||海南空天信息研究院 海南省地球观测重点实验室 三亚 572022中国科学院空天信息创新研究院 遥感与数字地球全国重点实验室 北京 100101中国科学院空天信息创新研究院 遥感与数字地球全国重点实验室 北京 100101武汉科技大学数学与系统科学学院 武汉 430065中国科学院空天信息创新研究院 遥感与数字地球全国重点实验室 北京 100101||海南空天信息研究院 海南省地球观测重点实验室 三亚 572022南京大学空间地球科学研究院 苏州 215163中国科学院空天信息创新研究院 遥感与数字地球全国重点实验室 北京 100101

海洋科学

HY-2微波散射计宽度学习系统风速订正模型高风速低估

HY-2 microwave scatterometerBroad Learning System(BLS)Wind speed correction modelUnderestimation of high wind speed

《空间科学学报》 2026 (2)

320-333,14

海南省自然科学基金项目资助(623QN327)

10.11728/cjss2026.02.2025-0023

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