TY - JOUR
T1 - A Physics-Constrained Network for Daily Gap-Free Gridded Wind Speed Product Considering High Wind Speeds From CYGNSS
AU - Sun, Weichen
AU - Yang, Dongkai
AU - Wang, Feng
AU - Ma, Xiangchao
AU - Tan, Chuanrui
N1 - Publisher Copyright:
© 1980-2012 IEEE.
PY - 2026
Y1 - 2026
N2 - To address key challenges, including Cyclone Global Navigation Satellite Systems (CYGNSS) sparse point observations, insufficient coverage in coastal regions, and systematic underestimation of high wind speeds, this study proposes a PIDW-E2E deep learning framework that integrates U-Net and graph convolutional network (GCN), achieving for the first time end-to-end generation of daily gap-free gridded wind speed products based on CYGNSS observations. The model effectively extracts spatially correlated features of normalized bistatic radar cross section (NBRCS), addressing the coupling challenge between sparse point observations and complex wind field structures while simultaneously accomplishing coastal wind speed retrieval and data gap filling in unobserved areas. By further incorporating a physics-constrained loss function and a high-wind speed label enhancement strategy, the model significantly improves the retrieval performance in high-wind speed regions. The results show that, when evaluated against daily ERA5 wind speeds, the gridded product generated by the model achieves an overall RMSE of 0.92 m/s. Compared to CYGNSS L2 FDS data, the RMSE is further reduced by 0.67 m/s. In coastal wind speed reconstruction tasks, PIDW-E2E demonstrates significant advantages, producing spatially complete coverage in coastal regions (RMSE ∼ 1.10 m/s and bias ∼ -0.01 m/s) with accuracy comparable with that of open ocean areas. For tropical cyclone (TC) monitoring, the model effectively mitigates systematic underestimation in high-wind speed regions. Under conditions, where the maximum retrievable wind speed reaches 45 m/s, the model achieves an RMSE of 3.47 m/s and a bias of −1.39-m/s relative to the daily HWRF wind speed reference data. This study provides a new approach for CYGNSS wind speed retrieval that combines gap-free coverage capability with enhanced responsiveness in high-wind speed regions.
AB - To address key challenges, including Cyclone Global Navigation Satellite Systems (CYGNSS) sparse point observations, insufficient coverage in coastal regions, and systematic underestimation of high wind speeds, this study proposes a PIDW-E2E deep learning framework that integrates U-Net and graph convolutional network (GCN), achieving for the first time end-to-end generation of daily gap-free gridded wind speed products based on CYGNSS observations. The model effectively extracts spatially correlated features of normalized bistatic radar cross section (NBRCS), addressing the coupling challenge between sparse point observations and complex wind field structures while simultaneously accomplishing coastal wind speed retrieval and data gap filling in unobserved areas. By further incorporating a physics-constrained loss function and a high-wind speed label enhancement strategy, the model significantly improves the retrieval performance in high-wind speed regions. The results show that, when evaluated against daily ERA5 wind speeds, the gridded product generated by the model achieves an overall RMSE of 0.92 m/s. Compared to CYGNSS L2 FDS data, the RMSE is further reduced by 0.67 m/s. In coastal wind speed reconstruction tasks, PIDW-E2E demonstrates significant advantages, producing spatially complete coverage in coastal regions (RMSE ∼ 1.10 m/s and bias ∼ -0.01 m/s) with accuracy comparable with that of open ocean areas. For tropical cyclone (TC) monitoring, the model effectively mitigates systematic underestimation in high-wind speed regions. Under conditions, where the maximum retrievable wind speed reaches 45 m/s, the model achieves an RMSE of 3.47 m/s and a bias of −1.39-m/s relative to the daily HWRF wind speed reference data. This study provides a new approach for CYGNSS wind speed retrieval that combines gap-free coverage capability with enhanced responsiveness in high-wind speed regions.
KW - Cyclone Global Navigation Satellite Systems (CYGNSS)
KW - gap-free gridded sea surface wind speed
KW - graph convolutional network (GCN)
KW - physics-constrained network
UR - https://www.scopus.com/pages/publications/105028020447
U2 - 10.1109/TGRS.2026.3651797
DO - 10.1109/TGRS.2026.3651797
M3 - 文章
AN - SCOPUS:105028020447
SN - 0196-2892
VL - 64
JO - IEEE Transactions on Geoscience and Remote Sensing
JF - IEEE Transactions on Geoscience and Remote Sensing
M1 - 5800222
ER -