Wind speed retrieval using GNSS-R technique with geographic partitioning

被引:0
作者
Zheng Li
Fei Guo
Fade Chen
Zhiyu Zhang
Xiaohong Zhang
机构
[1] Wuhan University,School of Geodesy and Geomatics
来源
Satellite Navigation | 2023年 / 4卷
关键词
CYGNSS; Geographical differences; Ocean wind speed; GNSS reflectometry; Marine gravity;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, the effect of geographical location on Cyclone Global Navigation Satellite System (CYGNSS) observables is demonstrated for the first time. It is found that the observables corresponding to the same wind speed vary with geographic location regularly. Although latitude and longitude information is included in the conventional method, it cannot effectively reduce the errors caused by geographic differences due to the non-monotonic changes of observables with respect to latitude and longitude. Thus, an improved method for Global Navigation Satellite System Reflectometry (GNSS-R) wind speed retrieval that takes geographical differences into account is proposed. The sea surface is divided into different areas for independent wind speed retrieval, and the training set is resampled by considering high wind speed. To balance between the retrieval accuracies of high and low wind speeds, the results with the random training samples and the resampling samples are fused. Compared with the conventional method, in the range of 0–20 m/s, the improved method reduces the Root Mean Square Error (RMSE) of retrieved wind speeds from 1.52 to 1.34 m/s, and enhances the correlation coefficient from 0.86 to 0.90; while in the range of 20–30 m/s, the RMSE decreases from 8.07 to 4.06 m/s, and the correlation coefficient increases from 0.04 to 0.45. Interestingly, the SNR observations are moderately correlated with marine gravities, showing correlation coefficients of 0.5–0.6, which may provide a useful reference for marine gravity retrieval using GNSS-R in the future.
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  • [1] Arroyo AA(2014)Dual-polarization GNSS-R interference pattern technique for soil moisture mapping IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 7 1533-1544
  • [2] Camps A(2022)GNSS reflectometry global ocean wind speed using deep learning: Development and assessment of CYGNSSnet Remote Sensing of Environment 269 112801-8394
  • [3] Aguasca A(2020)Above-ground biomass retrieval over tropical forests: A novel GNSS-R approach with CYGNSS Remote Sensing 12 1368-4432
  • [4] Forte GF(2021)An improved method for pan-tropical above-ground biomass and canopy height retrieval using CYGNSS Remote Sensing 13 2491-6843
  • [5] Onrubia R(2022)TDS-1 GNSS reflectometry wind geophysical model function response to GPS block types Geo-Spatial Information Science 12 8379-12366
  • [6] Asgarimehr M(2016)GNSS-R nonlocal sea state dependencies: Model and empirical verification Journal of Geophysical Research Oceans 54 4419-1422
  • [7] Arnold C(2016)Wind speed retrieval algorithm for the cyclone global navigation satellite system (CYGNSS) mission IEEE Transactions on Geoscience and Remote Sensing 52 6829-187
  • [8] Weigel T(2014)Spaceborne GNSS-R minimum variance wind speed estimator IEEE Transactions on Geoscience and Remote Sensing 44 12358-65
  • [9] Ruf C(2015)Spaceborne GNSS reflectometry for ocean winds: first results from the UK Techdemosat-1 mission Geophysical Research Letters 196 1402-591
  • [10] Wickert J(2017)First spaceborne GNSS-Reflectometry observations of hurricanes from the UK Techdemosat-1 mission Geophysical Research Letters 73 175-14