A New Algorithm for Monitoring Backflow from River to Lake (BRL) Using Satellite Images: A Case of Poyang Lake, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. In Situ Measurements
2.3. Remote Sensing Data and Preprocessing
2.4. MODIS Spectral Simulation
3. Algorithm Development
3.1. Characteristic Parameters of BRL
3.2. TSS Model Development Based on the Extracted Mutation Line
4. Results
4.1. In Situ Spectral Data
4.2. TSS Model Development
4.3. TSS Distribution Derived from MODIS
4.4. Characteristic Parameters of BRL
5. Discussion
5.1. Validity of the Algorithm
5.2. Implications for Future Eco-Environment Management
6. Conclusions
- (1)
- In this paper, a new algorithm was proposed to monitor BRL using satellite remote sensing, and an effective model was established. This algorithm was applied to quickly and effectively extract information on two instances of BRL in Poyang Lake in July 2000 and July to August 2007, and the results were found to be accurate and reasonable.
- (2)
- An innovative extraction method for the mutation line was proposed using satellite technology. The 645 nm, 859 nm, and 555 nm bands of MODIS-derived images were used as the bands sensitive to the TSS concentration to develop the fitting model. A band combination of Rrs(645) − Rrs(859))/(Rrs(555) − Rrs(859) yielded a higher fitting accuracy (R2 = 0.858, RMSE = 10.25 mg/L) derived from an exponential model, which was helpful to highlighting the mutation line. A gradient variation method was developed to extract the mutation line accurately.
- (3)
- Using the algorithm, we were able to quickly mine the important parameters of BRL, such as the beginning time, the duration, the end time, and the influence scope. The influence scope of BRL is not available from hydrological stations and can now be monitored in real time by remote sensing.
- (4)
- Extracting the BRL information using real-time remote sensing is conducive to the study of phytoplankton and organisms affected by BRL. This approach can also greatly save on monitoring costs. The results should help in exploring the relationship between rivers and lakes, matter migration, and so on, and provide an important technical means for the study of lake ecological environments. This study addresses the possibilities and limitations of this algorithm that should be considered in further research.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Date | 6 July 2000 | 7 July 2000 | 8 July 2000 | 9 July 2000 | 10 July 2000 | 11 July 2000 |
Discharge m3/s | 1140 | −1500 | −1380 | −984 | −539 | 275 |
Date | 21 July 2007 | 22 July 2007 | 23 July 2007 | 24 July 2007 | 25 July 2007 | 26 July 2007 | 27 July 2007 | 28 July 2007 | 29 July 2007 | 30 July 2007 |
Discharge m3/s | 900 | −149 | −1190 | −2130 | −2760 | −3260 | −3470 | −3520 | −3020 | −2500 |
Date | 31 July 2007 | 1 August 2007 | 2 August 2007 | 3 August 2007 | 4 August 2007 | 5 August 2007 | 6 August 2007 | 7 August 2007 | 8 August 2007 | |
Discharge m3/s | −2210 | −2070 | −2450 | −2820 | −3040 | −2980 | −1560 | −110 | 1010 |
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Jiang, H.; Liu, Y.; Lu, J. A New Algorithm for Monitoring Backflow from River to Lake (BRL) Using Satellite Images: A Case of Poyang Lake, China. Water 2021, 13, 1166. https://doi.org/10.3390/w13091166
Jiang H, Liu Y, Lu J. A New Algorithm for Monitoring Backflow from River to Lake (BRL) Using Satellite Images: A Case of Poyang Lake, China. Water. 2021; 13(9):1166. https://doi.org/10.3390/w13091166
Chicago/Turabian StyleJiang, Hui, Yao Liu, and Jianzhong Lu. 2021. "A New Algorithm for Monitoring Backflow from River to Lake (BRL) Using Satellite Images: A Case of Poyang Lake, China" Water 13, no. 9: 1166. https://doi.org/10.3390/w13091166
APA StyleJiang, H., Liu, Y., & Lu, J. (2021). A New Algorithm for Monitoring Backflow from River to Lake (BRL) Using Satellite Images: A Case of Poyang Lake, China. Water, 13(9), 1166. https://doi.org/10.3390/w13091166