Measuring Land Surface Deformation over Soft Clay Area Based on an FIPR SAR Interferometry Algorithm—A Case Study of Beijing Capital International Airport (China)
Abstract
:1. Introduction
2. Methodology
2.1. InSAR Signal Separation Based on FastICA
2.2. Time-Series Modeling of the Deformation Component
2.3. Model Parameters Estimation Based on Reciprocal Accumulation Method
2.4. Flow Chart of FIPR Algorithm and Processing Steps
- (1)
- Unwrapped phase time series of differential interferometry are generated using the SBAS technique;
- (2)
- Spatial ICA phase separation based on FastICA: generating the spatial independent component and temporal response of each component;
- (3)
- Deformation modeling and parameter estimation: Deformation modeling for the extracted soft clay-related components with Poisson function and the environmental-related components with periodical functions; model parameters estimation using the reciprocal accumulation method, and generating the time series of each defor-mation component based on the estimated parameters;
- (4)
- Deformation generation using the GARN algorithm and traditional equal-weighted accumulation modeling;
- (5)
- Comparison and analysis of the total time-series deformation generated by the FIPR algorithm and the traditional equal-weighted accumulation modeling algorithm.
3. Simulated Experiment
4. Real Data Experiments
4.1. Study Area and Data Processing
4.2. InSAR Phase-Independent Component Analysis
4.3. Analysis of the Generated Total Time-Series Deformation via FIPR
4.4. Accuracy Analysis
5. Discussions
5.1. Potential Reasons for the Derived Deformation
5.2. Applicability Analysis for ICA
- (1)
- FastICA was used to separate the original InSAR signals to extract the exact component of each physical deformation signal based on each independent component, which can help to accurately determine the exact weight of each deformation signal related to different physical factors. The exact weight (or certain contribution of each component) can be utilized to guide subsequent deformation modeling, which can greatly reduce the uncertainty of artificial equal weight modeling assumptions. The results showed that the accuracy was significantly improved compared to the traditional InSAR equal weight modeling;
- (2)
- The number of independent components (ICs) played an important role in ICA-based time-series InSAR analysis. Both too high and too low numbers of ICs will limit the accuracy of signal extraction. The number of ICs was mostly obtained through empirical and experimental calculations. The ideal number of ICs in this study was set as five, which was determined by experiments with different samples of numbers of ICs;
- (3)
- In this paper, spatial ICA was more reliable than temporal ICA. The main reason was that the spatial independence of the deformation signal was better than the temporal independence in the study area, as revealed by the spatial–temporal expanding characteristics of the two subsiding funnels shown in Figure 7. As shown, during the monitoring period, the area of subsidence in areas A and B gradually expanded from 1.9 and 2.3 km2 to 12.3 and 9.6 km2, respectively, with clear independent subsiding boundaries; in contrast, according to our temporal correlation analysis, the correlation coefficient between the Poisson-related deformation component and the environment-related component was 0.43, indicating that the two signals were not independent (still showing a high correlation and not perfectly separated temporally). Therefore, spatial ICA separation was suggested here to produce a better time-series deformation signal related to different physical causes.
6. Conclusions
7. Patents
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Points | EWA-LM | EWA-PC | FIPR |
---|---|---|---|
P1 | 0.775 | 0.810 | 0.898 |
P2 | 0.793 | 0.835 | 0.895 |
P3 | 0.784 | 0.758 | 0.871 |
P4 | 0.779 | 0.818 | 0.932 |
P5 | 0.777 | 0.907 | 0.937 |
P6 | 0.786 | 0.802 | 0.946 |
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Xing, X.; Zhu, L.; Liu, B.; Peng, W.; Zhang, R.; Ma, X. Measuring Land Surface Deformation over Soft Clay Area Based on an FIPR SAR Interferometry Algorithm—A Case Study of Beijing Capital International Airport (China). Remote Sens. 2022, 14, 4253. https://doi.org/10.3390/rs14174253
Xing X, Zhu L, Liu B, Peng W, Zhang R, Ma X. Measuring Land Surface Deformation over Soft Clay Area Based on an FIPR SAR Interferometry Algorithm—A Case Study of Beijing Capital International Airport (China). Remote Sensing. 2022; 14(17):4253. https://doi.org/10.3390/rs14174253
Chicago/Turabian StyleXing, Xuemin, Lingjie Zhu, Bin Liu, Wei Peng, Rui Zhang, and Xiaojun Ma. 2022. "Measuring Land Surface Deformation over Soft Clay Area Based on an FIPR SAR Interferometry Algorithm—A Case Study of Beijing Capital International Airport (China)" Remote Sensing 14, no. 17: 4253. https://doi.org/10.3390/rs14174253