Dynamic Monitoring of Surface Water Area during 1989–2019 in the Hetao Plain Using Landsat Data in Google Earth Engine
Abstract
:1. Introduction
2. Data Sets
2.1. Study Area
2.2. Data Sources
2.2.1. Landsat Data
2.2.2. Climate Data
2.2.3. Sentinel-2 Multispectral Instruments (MSI) Images Data
2.2.4. Globeland 30 Data
3. Research Methods of Surface Water
3.1. Surface Water Extraction Algorithm
3.2. Calculation Method of Maximum, Seasonal, Permanent, and Annual Average Water Body
3.3. Surface Water Area and Dynamic Degree
3.3.1. Surface Water Area
3.3.2. Dynamic Degree of Surface Water
3.4. Accuracy Evaluation Method
4. Result
4.1. Accuracy of Water Body Mapping
4.2. Spatial Distribution of Surface Water
4.3. Temporal Distribution of Surface Water
4.4. Influence of Drought and Rainy Years on Surface Water Change
4.5. Influence of Climate Change and Human Activities on Surface Water Change
5. Discussion
5.1. Comparison with the JRC Dataset
5.2. Research Uncertainty
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
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Sentinel-2 MSI | ||||
---|---|---|---|---|
Water Body Map (2019) | Water | No Water | Total | User Accuracy (%) |
Water | 952 | 55 | 1007 | 94.54% |
No-Water | 69 | 1924 | 1993 | 96.54% |
Total | 1021 | 1979 | 3000 | Overall Accuracy = 95.9% |
Producer Accuracy (%) | 93.24% | 97.22% | Kappa Coefficient = 0.91 |
Year | Number | Number Change | Dynamic Index | Overall Dynamic Change |
---|---|---|---|---|
1989–1994 | 300,169 | - | - | 45.75% |
1995–1999 | 328,336 | 28,167 | 9.38% | |
2000–2004 | 403,831 | 75,495 | 22.99% | |
2005–2009 | 464,241 | 6041 | 14.96% | |
2010–2014 | 420,587 | −43,654 | −9.4% | |
2015–2019 | 453,496 | 32,909 | 7.82% |
Year | Area(km2) | Area Change | Dynamic Index | Overall Dynamic Change |
---|---|---|---|---|
1989–1994 | 1246.471 | - | - | −12.09% |
1995–1999 | 1122.563 | −123.908 | −9.94% | |
2000–2004 | 935.649 | −186.914 | −16.65% | |
2005–2009 | 1070.912 | 135.263 | 14.46% | |
2010–2014 | 1178.781 | 107.869 | 10.07% | |
2015–2019 | 1060.578 | −118.203 | −10.03% |
Maximum | Seasonal | Permanent | ||||
---|---|---|---|---|---|---|
Variables | Area | Number | Area | Number | Area | Number |
Coef. | Coef. | Coef. | Coef. | Coef. | Coef. | |
AP | 2.899 | 0.976 | 2.016 | 0.752 | 0.785 | 0.225 |
AT | ||||||
Irrigation | −8.155 | −6.269 | −1.864 | |||
Constant | 1164.863 | 126.219 | 674.052 | 79.172 | 489.671 | 46.479 |
Model summary | ||||||
R2 | 0.51 | 0.391 | 0.463 | 0.392 | 0.245 | 0.23 |
SEE | 175 | 76 | 142 | 59 | 81 | 26 |
F | 14.065 | 18.627 | 11.64 | 18.665 | 4.384 | 8.661 |
Sig. | 0.000 | 0.000 | 0.000 | 0.000 | 0.022 | 0.006 |
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Wang, R.; Xia, H.; Qin, Y.; Niu, W.; Pan, L.; Li, R.; Zhao, X.; Bian, X.; Fu, P. Dynamic Monitoring of Surface Water Area during 1989–2019 in the Hetao Plain Using Landsat Data in Google Earth Engine. Water 2020, 12, 3010. https://doi.org/10.3390/w12113010
Wang R, Xia H, Qin Y, Niu W, Pan L, Li R, Zhao X, Bian X, Fu P. Dynamic Monitoring of Surface Water Area during 1989–2019 in the Hetao Plain Using Landsat Data in Google Earth Engine. Water. 2020; 12(11):3010. https://doi.org/10.3390/w12113010
Chicago/Turabian StyleWang, Ruimeng, Haoming Xia, Yaochen Qin, Wenhui Niu, Li Pan, Rumeng Li, Xiaoyang Zhao, Xiqing Bian, and Pinde Fu. 2020. "Dynamic Monitoring of Surface Water Area during 1989–2019 in the Hetao Plain Using Landsat Data in Google Earth Engine" Water 12, no. 11: 3010. https://doi.org/10.3390/w12113010
APA StyleWang, R., Xia, H., Qin, Y., Niu, W., Pan, L., Li, R., Zhao, X., Bian, X., & Fu, P. (2020). Dynamic Monitoring of Surface Water Area during 1989–2019 in the Hetao Plain Using Landsat Data in Google Earth Engine. Water, 12(11), 3010. https://doi.org/10.3390/w12113010