Contribution Factor Analysis of the Wuhan Yangtze River Bridge Deformation Using Sentinel-1A SAR Imagery and In Situ Data
Abstract
:1. Introduction
2. Introduction to the Study Area and the Dataset
2.1. Study Area
2.2. Dataset
3. Method
3.1. SBAS-InSAR Technology
3.2. Data Processing Flow of SBAS InSAR
- 75 Sentinel-1A images were converted into Single Looking Complex (SLC) images.
- Interference pairs generation: The image of 3 April 2021 was selected as reference image, and the threshold of time baseline and spatial baseline were set to 90 days and 45%, then 290 interference pairs were derived.
- Interference and unwrapping processing: After images were registered, interferometric processing is applied to the interferometric pairs to generate interferograms. Subsequently, flat earth effects are mitigated, Goldstein filtering is performed, coherence is computed, and phase unwrapping is executed using the minimum cost flow method. Following these steps, a phase map is generated.
- Refinement and re-flatting: The area in the image that is far from the deformation area and has no residual terrain stripes was selected, and no fewer than 30 Ground Control Points (GCPs) were selected, then orbit refinement polynomials were used for refinement, and re-flatting was performed based on GCPs.
- Linear deformation and elevation coefficient solution: An error correction model for the elevation coefficient and deformation rate of coherent points were established, then SVD was used to solve the model, and the deformation of interference pairs and elevation coefficient were obtained.
- Elimination of atmospheric phase: To eliminate the atmospheric phase and obtain the deformation time series, high-pass filtering in the time domain and low-pass filtering in the spatial domain were employed.
- Geocoding: The processing result in the radar coordinate system (Cartesian coordinate system) was converted to the geographic coordinate system to obtain the final results.
4. SBAS InSAR Results and Precision Validation
4.1. SBAS InSAR Results
4.2. Precision Validation of SBAS Data
5. Discussion
5.1. Relationship between Bridge Structure and Deformation
5.2. Relationship between Human Activity and Deformation
5.3. Relationship between Temperature and Deformation
5.4. Relationship between Stratigraphy under the Bridge and Deformation
6. Conclusions
- The SBAS-InSAR results indicate a vertical deformation rate for the Wuhan Yangtze River Bridge and area around the bridge ranging from −18.2 to 15.4 mm/year. While the vertical deformation rate of the bridge structure remains relatively modest (−15.6 to 10.7 mm/year), during the study period, the maximum uplift and lowering values recorded were 37.3 mm and −38.5 mm, part of the deformation belonging to rebound deformation.
- According to the experimental results, it was found that the lowering and uplifting of the Wuhan Yangtze River Bridge body occurred alternately.
- By analyzing the deformation time series of characteristic points, it can be inferred that the reduction in human activity is the reason for the lower deformation amplitude from January to October 2020 compared to after October 2020.
- After comparing the deformation of characteristic points with the temperature data of meteorological stations located 15.5 km apart from the bridge, a positive correlation was found for only a portion of the bridge.
- By analyzing the deformation rates along the Wuhan Yangtze River Bridge, it was found that there is no significant settlement for piers built on highly compressible soils and no significant deformation for piers built on rock. This implies that the observed deformations are presumably absorbed by the structure. In conclusion, there is no direct correlation between observed sinkings and stratigraphy under the bridge piers.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Satellite Model | Sentinel-1A |
---|---|
Orbit direction | Ascending orbit |
Angle of incidence | 39.7° |
Band | C |
Polarization mode | VV |
Amount | 75 |
Time span | 3 January 2020~21 June 2022 |
Point Number | Latitude (Degree) | Longitude (Degree) | Mean Deformation Rate (mm/Year) | Location |
---|---|---|---|---|
P1 | 114.27839 | 30.55468 | 1.9 | Near No. 1 pier |
P2 | 114.27903 | 30.55440 | −1.5 | Between No. 1 pier and No. 2 pier |
P3 | 114.28010 | 30.55367 | −6.3 | Between No. 2 pier and No. 3 pier |
P4 | 114.28223 | 30.55258 | −10.7 | Near No. 4 pier |
P5 | 114.28279 | 30.55241 | 15.4 | Between No. 4 pier and No. 5 pier |
P6 | 114.28645 | 30.55029 | 4.6 | Near No. 8 pier |
P7 | 114.28714 | 30.54988 | −1.8 | Between No. 8 pier and the eastern bridgehead |
Point Number | P1 | P2 | P3 | P4 | P5 | P6 | P7 |
---|---|---|---|---|---|---|---|
Correlation | 0.42 | 0.12 | −0.05 | −0.02 | −0.18 | −0.20 | −0.13 |
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Wang, C.; Li, X.; Zhou, L.; Qin, J.; Ma, J.; Luo, Z.; Liu, L. Contribution Factor Analysis of the Wuhan Yangtze River Bridge Deformation Using Sentinel-1A SAR Imagery and In Situ Data. Appl. Sci. 2023, 13, 11955. https://doi.org/10.3390/app132111955
Wang C, Li X, Zhou L, Qin J, Ma J, Luo Z, Liu L. Contribution Factor Analysis of the Wuhan Yangtze River Bridge Deformation Using Sentinel-1A SAR Imagery and In Situ Data. Applied Sciences. 2023; 13(21):11955. https://doi.org/10.3390/app132111955
Chicago/Turabian StyleWang, Cheng, Xinyi Li, Lv Zhou, Jie Qin, Jun Ma, Ziyan Luo, and Lilong Liu. 2023. "Contribution Factor Analysis of the Wuhan Yangtze River Bridge Deformation Using Sentinel-1A SAR Imagery and In Situ Data" Applied Sciences 13, no. 21: 11955. https://doi.org/10.3390/app132111955
APA StyleWang, C., Li, X., Zhou, L., Qin, J., Ma, J., Luo, Z., & Liu, L. (2023). Contribution Factor Analysis of the Wuhan Yangtze River Bridge Deformation Using Sentinel-1A SAR Imagery and In Situ Data. Applied Sciences, 13(21), 11955. https://doi.org/10.3390/app132111955