Sea surface wind speed retrieval from Sentinel-1 HH polarization data using conventional and neural

来源 :海洋学报(英文版) | 被引量 : 0次 | 上传用户:whenhm
下载到本地 , 更方便阅读
声明 : 本文档内容版权归属内容提供方 , 如果您对本文有版权争议 , 可与客服联系进行内容授权或下架
论文部分内容阅读
Conventional retrieval and neural network methods are used simultaneously to retrieve sea surface wind speed (SSWS) from HH-polarized Sentinel-1 (S1) SAR images. The Polarization Ratio (PR) models combined with the CMOD5.N Geophysical Model Function (GMF) is used for SSWS retrieval from the HH-polarized SAR data. We compared different PR models developed based on previous C-band SAR data in HH-polarization for their applications to the S1 SAR data. The recently proposed CMODH, i.e., retrieving SSWS directly from the HH-polarized S1 data is also validated. The results indicate that the CMODH model performs better than results achieved using the PR models. We proposed a neural network method based on the backward propagation (BP) neural network to retrieve SSWS from the S1 HH-polarized data. The SSWS retrieved using the BP neural network model agrees better with the buoy measurements and ASCAT dataset than the results achieved using the conventional methods. Compared to the buoy measurements, the bias, root mean square error (RMSE) and scatter index (SI) of wind speed retrieved by the BP neural network model are 0.10 m/s, 1.38 m/s and 19.85%, respectively, while compared to the ASCAT dataset the three parameters of training set are -0.01 m/s, 1.33 m/s and 15.10%, respectively. It is suggested that the BP neural network model has a potential application in retrieving SSWS from Sentinel-1 images acquired at HH-polarization.
其他文献
Taiwan Island’s outcropping strata can provide important insights into the sedimentary environment and source development of the southeast China margin.This re
会议
会议
This study cross-calibrated the brightness temperatures observed in the Arctic by using the FY-3B/MWRI L1 and the Aqua/AMSR-E L2A.The monthly parameters of the
会议
优结构,增强供给能力。瞄准京津冀1.2亿中高端消费人群,深入实施农业结构调整三年行动计划,不断强化优质专用小麦和高品质“菜篮子”产品供应能力。实施奶业振兴行动,加快优
会议
会议
会议
The deformation behavior and formability of gradient nano-grained(GNG) AISI 304 stainless steel in uniaxial and biaxial states were investigated by means of ten