Radar Interferometry Time Series to Investigate Deformation of Soft Clay Subgrade Settlement—A Case Study of Lungui Highway, China
Abstract
:1. Introduction
2. Methodology
2.1. Linear Deformation Models
2.2. Non-linear SBAS Models
3. Comparison Experiment for Different SBAS-InSAR Deformation Models
3.1. Study Area
3.2. SAR Acquisitions and Data Processing
3.3. Deformation Parameter Estimation
3.4. Accuracy Assessment of Different SBAS Models
- (1)
- Residual Phase (RP): in Equation (1), which can be calculated by subtracting the model phase component from the original unwrapped phase observations. This index implies the fitting performance for each model [36]. The smaller the residual phase is, the higher the accuracy for the model selected. RP estimated results are shown in Figure 11. The color bar was set to (−0.5 to 0.5) radians. From the color characteristic in the Figure, we can see that the color for SM distributes around 0.1(mainly light green), for MVM distributes around −0.1 (most light blue), for CPM and PVM both higher than −0.5 (deep blue). Statistically the range of temporal average RP value for the four different models in radians, varied from−0.183 to 0.183, −0.920 to 0.664, −0.157 to 0.188, and −0.811 to 0.660 for LVP, PVM, SM and CPM, respectively. In our case MVM and SM models have better performance.
- (2)
- Temporal Coherence (TC): according to literature [37], was calculated as the temporal mean TC value for different models of all coherent points. A higher TC value defines higher accuracy of the deformation model. From Figure 12, we can find obviously MVM shows the highest TC value (heavy red color all over the total image). PVM has the lightest TC color distribution. The average of TC value for each model is shown in the first row in Table 2, which quantitatively illustrates the performance for the 4 models, consistent with Figure 12.
- (3)
- HP Deformation: according to literature [29], uses the High-Pass (HP) deformation contribution. In Equation (1), the part of is called the Low-Pass (LP) deformation component, which is modelled by the function of deformation coefficients. As all unknowns in the SM model have been estimated, the LP deformation component can be obtained. The atmospheric phase component is highly correlated in space but poorly in time, while the High-Pass deformation signal is highly correlated not only in space but also in time, so the HP-deformation component can be estimated through temporal low-pass filtering (we use triangle filter method here) followed by spatial low-pass filtering (mean filter here) [37]. Figure 13 shows HP deformation between four models on each interferogram. We can see from it that all the HP deformation is lower than 10mm for each interferogram and each model, where the deformation of 10, 12, 13 and 16th interferogram are particular higher. It indicates these 4 interferograms are with larger residual phases. We calculated the Root Mean Square (RMS) value of temporal mean HP deformation for all the high coherent points, which are listed in Table 2.
3.5. Discussion
4. Time Series Deformation Inversion
4.1. Overall Characteristics of the Surface Deformation Comparison
4.2. Deformation over Ground Features-Investigation Based on Seasonal Model
4.2.1. Displacement Characteristics over Two Bridges
4.2.2. Temporal Deformation over Feature Points
4.3. Comparison with Leveling Measurements
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Image No. | Acquisition Date (yyyy/mm/dd) | Normal Baseline (m) | Temporal Baseline (Days) |
---|---|---|---|
1 | 2014/06/17 | −71.50 | 198 |
2 | 2014/08/22 | −137.97 | 132 |
3 | 2014/09/13 | −286.33 | 110 |
4 | 2014/10/05 | −110.85 | 88 |
5 | 2014/10/27 | −249.06 | 66 |
6 | 2014/11/18 | −74.56 | 44 |
7 | 2015/01/01 | 0 | 0 |
8 | 2015/02/14 | −133.14 | 44 |
9 | 2015/03/08 | −106.99 | 66 |
10 | 2015/05/13 | −271.51 | 132 |
11 | 2015/06/26 | −122.85 | 176 |
12 | 2015/08/09 | −149.22 | 220 |
13 | 2015/08/31 | −65.63 | 242 |
14 | 2015/09/22 | −253.29 | 264 |
15 | 2015/10/14 | −159.34 | 286 |
16 | 2015/11/05 | −233.83 | 308 |
17 | 2015/11/27 | −11.87 | 330 |
Models | MVM | PVM | SM | CPM |
---|---|---|---|---|
Mean Temporal Conference | 0.9320 | 0.6912 | 0.7305 | 0.7158 |
RMS of HP Deformation (mm) | 1.46 | 2.53 | 1.83 | 2.78 |
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Xing, X.; Chang, H.-C.; Chen, L.; Zhang, J.; Yuan, Z.; Shi, Z. Radar Interferometry Time Series to Investigate Deformation of Soft Clay Subgrade Settlement—A Case Study of Lungui Highway, China. Remote Sens. 2019, 11, 429. https://doi.org/10.3390/rs11040429
Xing X, Chang H-C, Chen L, Zhang J, Yuan Z, Shi Z. Radar Interferometry Time Series to Investigate Deformation of Soft Clay Subgrade Settlement—A Case Study of Lungui Highway, China. Remote Sensing. 2019; 11(4):429. https://doi.org/10.3390/rs11040429
Chicago/Turabian StyleXing, Xuemin, Hsing-Chung Chang, Lifu Chen, Junhui Zhang, Zhihui Yuan, and Zhenning Shi. 2019. "Radar Interferometry Time Series to Investigate Deformation of Soft Clay Subgrade Settlement—A Case Study of Lungui Highway, China" Remote Sensing 11, no. 4: 429. https://doi.org/10.3390/rs11040429