• First satellite wind merging using optical flow-based temporal displacement. • First application of OF-TDC to TC with different structures. • Adaptive temporal and bias corrections optimize MSWF precision and consistency. • Robust correction under moderate-to-high winds and medium-to-large time offsets. • OF-TDC reduces TC wind error STD by up to 0.19 m/s and 2.24°. High-resolution ocean observations and numerical simulations are increasingly in demand. However, conventional multi-source remote sensing wind products often struggle to capture the spatiotemporal consistency and dynamic variability required for mesoscale and submesoscale oceanic studies. This paper proposes an Optical Flow-based Temporal Displacement Correction (OF-TDC) method to improve the temporal alignment and mitigate structural misalignment in global multi-satellite wind fields (MSWF). The method treats satellite wind fields as sequential images while utilizing ERA5 winds as a dynamic reference. To ensure consistent input quality for this process, a robust bias correction scheme combining hierarchical Bayesian shrinkage and dual-reference LOESS smoothing is introduced. OF-TDC then estimates advection trajectories of MSWF over time and projects satellite wind fields observed at different times to a unified reference time to complete temporal registration. Evaluations show robust performance under moderate winds of 4 to 20 m/s and effective correction over medium to long timescales, with error standard deviation (STD) reductions of 1° in direction and 0.03 m/s in speed. Tropical cyclone analysis shows error STD improvements of up to 0.19 m/s and 2.24°, respectively, indicating that stronger, compact cyclones enable more accurate OF tracking. Validations against independent GNSS-R data and heavy rainfall confirm significant robustness. OF-TDC enhances MSWF temporal consistency, especially in structured, moderate-evolution environments, facilitating integrated wind and air-sea interaction studies.
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Lv et al. (Sun,) studied this question.
synapsesocial.com/papers/69a76883badf0bb9e87e4ea1 — DOI: https://doi.org/10.1016/j.jag.2026.105148
Sirui Lv
Xiaobin Yin
Sanya University
Yan Li
International Journal of Applied Earth Observation and Geoinformation
Sanya University
Hainan Tropical Ocean University
National Satellite Ocean Application Service
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