Noise reduction and periodic signal extraction for GNSS height data in the study of vertical deformation

IF 2.8 4区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS Geodesy and Geodynamics Pub Date : 2023-11-01 DOI:10.1016/j.geog.2023.07.002
Jingqi Wang , Kaihua Ding , Heping Sun , Geng Zhang , Xiaodong Chen
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Abstract

Global navigation satellite system (GNSS) technique has irreplaceable advantages in the continuous monitoring of surface deformation. Reducing noise to improve the signal-to-noise ratio (SNR) and extract the concerned signals is of great significance. As an improved algorithm of empirical mode decomposition (EMD), complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) algorithm has better signal processing ability. Using the CEEMDAN algorithm, the height time series of 29 GNSS stations in Chinese mainland were analyzed, and good denoising effects and extraction from periodic signals were achieved. The numerical results showed that the annual signal obtained with the CEEMDAN algorithm was significantly based on Lomb_Scargle spectrum analysis, and large differences in the long-term signals were found between the stations at different locations in Chinese mainland. With respect to data denoising, compared with the EMD and wavelet denoising algorithms, the CEEMDAN algorithm respectively improved the SNR by 29.35% and 36.54%, increased the correlation coefficient by 8.67% and 11.96%, and reduced root mean square error (RMSE) by 44.68% and 43.48%, indicating that the CEEMDAN algorithm had better denoising behavior than the other two algorithms. In addition, the results demonstrated that different denoising methods had little influence on estimating the annual vertical deformation velocity. The extraction of periodic signals showed that more components were retained by using the CEEMDAN algorithm than the EMD algorithm, which indicated that the CEEMDAN algorithm had advantages over frequency aliasing. In conclusion, the CEEMDAN algorithm was recommended for processing the GNSS height time series to analyze the vertical deformation due to its excellent features of denoising and the extraction of periodic signals.

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垂直形变研究中GNSS高程数据的降噪与周期信号提取
全球卫星导航系统(GNSS)技术在地表形变连续监测方面具有不可替代的优势。降低噪声对提高信噪比、提取相关信号具有重要意义。CEEMDAN算法作为经验模态分解(EMD)的改进算法,具有更好的信号处理能力。利用CEEMDAN算法对中国大陆29个GNSS站点的高度时间序列进行了分析,取得了较好的去噪效果和周期信号提取效果。数值结果表明,CEEMDAN算法获得的年度信号具有明显的Lomb_Scargle谱特征,且中国大陆不同位置站点的长期信号存在较大差异。在数据去噪方面,与EMD和小波去噪算法相比,CEEMDAN算法的信噪比分别提高了29.35%和36.54%,相关系数分别提高了8.67%和11.96%,均方根误差(RMSE)分别降低了44.68%和43.48%,表明CEEMDAN算法的去噪性能优于其他两种算法。结果表明,不同的去噪方法对年垂直形变速度的估计影响不大。通过对周期信号的提取,CEEMDAN算法比EMD算法保留了更多的分量,表明CEEMDAN算法比EMD算法具有频率混叠的优势。综上所述,CEEMDAN算法具有良好的去噪和提取周期信号的特性,因此推荐用于GNSS高度时间序列的垂直变形分析。
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来源期刊
Geodesy and Geodynamics
Geodesy and Geodynamics GEOCHEMISTRY & GEOPHYSICS-
CiteScore
4.40
自引率
4.20%
发文量
566
审稿时长
69 days
期刊介绍: Geodesy and Geodynamics launched in October, 2010, and is a bimonthly publication. It is sponsored jointly by Institute of Seismology, China Earthquake Administration, Science Press, and another six agencies. It is an international journal with a Chinese heart. Geodesy and Geodynamics is committed to the publication of quality scientific papers in English in the fields of geodesy and geodynamics from authors around the world. Its aim is to promote a combination between Geodesy and Geodynamics, deepen the application of Geodesy in the field of Geoscience and quicken worldwide fellows'' understanding on scientific research activity in China. It mainly publishes newest research achievements in the field of Geodesy, Geodynamics, Science of Disaster and so on. Aims and Scope: new theories and methods of geodesy; new results of monitoring and studying crustal movement and deformation by using geodetic theories and methods; new ways and achievements in earthquake-prediction investigation by using geodetic theories and methods; new results of crustal movement and deformation studies by using other geologic, hydrological, and geophysical theories and methods; new results of satellite gravity measurements; new development and results of space-to-ground observation technology.
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