Wei Zhenkui, Ren Chao, Liang Xingyong, Liang Yueji, Yin Anchao, Liang Jieyu, Yue Weiting
College of Geomatics and Geoinformation, Guilin University of Technology, Guilin 541004, China.
Sensors (Basel). 2023 Jul 20;23(14):6540. doi: 10.3390/s23146540.
The global navigation satellite system-interferometric reflectometry (GNSS-IR) technique has emerged as an effective coastal sea-level monitoring solution. However, the accuracy and stability of GNSS-IR sea-level estimation based on quadratic fitting are limited by the retrieval range of reflector height (RH range) and satellite-elevation range, reducing the flexibility of this technology. This study introduces a new GNSS-IR sea-level estimation model that combines local mean decomposition (LMD) and Lomb-Scargle periodogram (LSP). LMD can decompose the signal-to-noise ratio (SNR) arc into a series of signal components with different frequencies. The signal components containing information from the sea surface are selected to construct the oscillation term, and its frequency is extracted by LSP. To this end, observational data from SC02 sites in the United States are used to evaluate the accuracy level of the model. Then, the performance of LMD and the influence of noise on retrieval results are analyzed from two aspects: RH ranges and satellite-elevation ranges. Finally, the sea-level variation for one consecutive year is estimated to verify the stability of the model in long-term monitoring. The results show that the oscillation term obtained by LMD has a lower noise level than other signal separation methods, effectively improving the accuracy of retrieval results and avoiding abnormal values. Moreover, it still performs well under loose constraints (a wide RH range and a high-elevation range). In one consecutive year of retrieval results, the new model based on LMD has a significant improvement effect over quadratic fitting, and the root mean square error and mean absolute error of retrieval results obtained in each month on average are improved by 8.34% and 8.87%, respectively.
全球导航卫星系统干涉反射测量(GNSS-IR)技术已成为一种有效的沿海海平面监测解决方案。然而,基于二次拟合的GNSS-IR海平面估计的准确性和稳定性受到反射器高度检索范围(RH范围)和卫星仰角范围的限制,降低了该技术的灵活性。本研究引入了一种新的GNSS-IR海平面估计模型,该模型结合了局部均值分解(LMD)和 Lomb-Scargle 周期图(LSP)。LMD 可以将信噪比(SNR)弧分解为一系列不同频率的信号分量。选择包含来自海面信息的信号分量来构建振荡项,并通过LSP提取其频率。为此,使用美国SC02站点的观测数据来评估该模型的准确性水平。然后,从RH范围和卫星仰角范围两个方面分析了LMD的性能以及噪声对检索结果的影响。最后,估计连续一年的海平面变化,以验证该模型在长期监测中的稳定性。结果表明,LMD得到的振荡项比其他信号分离方法具有更低的噪声水平,有效提高了检索结果的准确性并避免了异常值。此外,在宽松约束(宽RH范围和高仰角范围)下它仍然表现良好。在连续一年的检索结果中,基于LMD的新模型比二次拟合有显著的改进效果,检索结果的均方根误差和平均绝对误差平均每月分别提高了8.