Wave Signatures in Total Electron Content Variations: Filtering Problems
Abstract
:1. Introduction
2. Methodology
- Centered moving average (CMA).
- Centered moving median (Median).
- 6th-order polynomial (Polynom).
- Hodrick–Prescott Filter (Hod-Pres). The input data for this filter is λ, which determines trend flattening. This value should be selected as the fourth degree for the rate of the frequency change in the signal that should be obtained upon detrending [17]. In our case, λ = ~129,600.
- L1 Filter (l1). The input data for this filter is λ, which defines trend smoothing. We have never found explicit instructions for how to determine this frequency-dependent parameter. Therefore, its value (λ = 0,5) was found by modeling.
- Cubic smoothing spline (Spline). The smoothing spline input parameter is Smoothing Factor, which determines trend smoothing. The Smoothing Factor value (8) was found empirically.
- Double use of the centered moving average (Double CMA).
- Centered moving average (CMA).
- Centered moving median (Median).
- Butterworth filter of 8th order (Butter).
- Type I Chebyshev filter of 8th order (ChebyI).
- Mean bias error (MBE) MRF:
- Root-mean-square error (RMSE) σ, i.e., the standard deviation of the residuals between the modeled and the recovered signals:
- Correlation coefficient K between the known used signal IR and the recovered signal IF upon implementing filtering/detrending procedures:
3. Modeling Results
3.1. Detrending
3.2. Variation Selection
4. Experimental Results
5. Discussion
6. Conclusions
- The problem of the GNSS data filtering should be split into two subtasks (detrending and selection) to obtain the best results. At such an approach, the possibility to obtain artifacts related to the data processing algorithms is minimal.
- Results show that the longer periods, the higher errors can appear caused by insufficient detrending. For the detrending problem, the smoothing cubic spline provides the best results among the versions presented in this paper. It features the minimal value of the mean bias error and the root-mean-square error, as well as the maximal correlation coefficient. The 6th-order polynomial also produces good results and can be used for this task.
- For the filtering problem, the centered moving average filter showed the best results among the versions presented in this paper.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Maletckii, B.; Yasyukevich, Y.; Vesnin, A. Wave Signatures in Total Electron Content Variations: Filtering Problems. Remote Sens. 2020, 12, 1340. https://doi.org/10.3390/rs12081340
Maletckii B, Yasyukevich Y, Vesnin A. Wave Signatures in Total Electron Content Variations: Filtering Problems. Remote Sensing. 2020; 12(8):1340. https://doi.org/10.3390/rs12081340
Chicago/Turabian StyleMaletckii, Boris, Yury Yasyukevich, and Artem Vesnin. 2020. "Wave Signatures in Total Electron Content Variations: Filtering Problems" Remote Sensing 12, no. 8: 1340. https://doi.org/10.3390/rs12081340