Changing Patterns of Lakes on The Southern Tibetan Plateau Based on Multi-Source Satellite Data
Abstract
:1. Introduction
2. Study Area
3. Data and Methods
3.1. Data
3.1.1. MODIS Images
3.1.2. Altimeter Data
3.1.3. Hydroweb
3.1.4. Meteorological Data
3.2. Method
3.2.1. Inundation Extraction
3.2.2. Water Level
3.2.3. Lake Storage Changes
4. Results and Analysis
4.1. Fluctuation of the Water Surface
4.2. Lake Level and Volume
5. Discussion
5.1. Accuracy Assessment
5.2. Driving Forces
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Lake ID | Name | Longitude 1 (°) | Latitude 1 (°) | Area (km2) | Level (m) |
---|---|---|---|---|---|
1 | Mapam Yumco | 81.42 | 30.75 | 401.47 | 4585.39 |
2 | Ngangla-ringco | 83.09 | 31.56 | 485.83 | 4715.03 |
3 | Taro Co | 84.12 | 31.13 | 473.50 | 4566.77 |
4 | Zhari-namco | 85.62 | 30.91 | 985.65 | 4612.48 |
5 | Ngangze | 87.15 | 31.03 | 437.03 | 4683.00 |
6 | Gyaring Co | 88.31 | 31.13 | 460.44 | 4648.23 |
7 | Yamzho Yumco | 90.65 | 28.88 | 506.84 | 4439.36 |
8 | Rakshastal | 81.25 | 30.66 | 247.24 | 4572.00 |
9 | Puma Yumco | 90.38 | 28.57 | 281.75 | 5017.28 |
10 | Daggayai Co | 85.72 | 29.85 | 101.36 | 5143.80 |
11 | Shuru Co | 86.41 | 30.27 | 200.64 | 4714.95 |
12 | Pegu Co | 85.60 | 28.90 | 264.95 | 4580.00 |
13 | Nam Co | 90.66 | 30.72 | 1971.81 | 4723.64 |
14 | Selin Co | 88.95 | 31.76 | 2192.24 | 4542.59 |
15 | Tangra-yumco | 86.60 | 31.06 | 817.60 | 4535.83 |
Lake ID | Area | Level | |||||
---|---|---|---|---|---|---|---|
Number of Series | Time Range | Data Source 2 | Number of Series | Time Range | |||
Hydroweb | Envisat | ICESat | |||||
1 | 369 | 2000/3/5–2015/12/17 | √ | √ | 53 | 2002/8/12–2010/10/3 | |
2 | 406 | 2000/2/26–2015/12/17 | √ | √ | √ | 107 | 2002/10/19–2015/12/7 |
3 | 501 | 2000/2/26–2015/12/17 | √ | √ | √ | 55 | 2003/11/1–2015/12/27 |
4 | 500 | 2000/3/5–2015/12/17 | √ | √ | √ | 256 | 2000/3/6–2015/12/23 |
5 | 411 | 2000/3/5–2015/12/17 | √ | √ | √ | 308 | 2000/1/6–2015/12/23 |
6 | 465 | 2000/3/5–2015/12/17 | √ | √ | 12 | 2002/7/15–2011/12/18 | |
7 | 573 | 2000/2/18–2015/12/17 | √ | √ | 45 | 2002/6/17–2010/7/5 | |
8 | 366 | 2000/5/16–2015/12/17 | √ | 3 | 2002/7/30–2003/4/1 | ||
9 | 395 | 2000/2/18–2015/12/17 | √ | √ | 20 | 2002/7/12–2012/3/20 | |
10 | 369 | 2000/2/26–2015/12/17 | √ | 14 | 2010/11/20–2012/3/13 | ||
11 | 445 | 2000/2/26–2015/12/17 | √ | 3 | 2002/8/6–2003/11/17 | ||
12 | 499 | 2000/2/26–2015/12/17 | √ | 4 | 2003/3/24–2008/12/2 | ||
13 | 322 | 2000/2/18–2015/12/17 | √ | √ | √ | 158 | 2000/1/9–2015/12/8 |
14 | 453 | 2000/4/6–2015/12/17 | √ | √ | √ | 251 | 2000/5/16–2015/12/30 |
15 | 410 | 2000/2/26–2015/12/17 | √ | √ | √ | 133 | 2000/1/18–2015/12/17 |
Lake ID. | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | 11 | 12 | 13 | 14 | 15 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Lake Name | Mapam Yumco | Ngangla-Ringco | Taro Co | Zhari-Namco | Ngangze | Gyaring Co | Yamzho Yumco | Rakshastal | Puma Yumco | Daggayai Co | Shuru Co | Pegu Co | Nam Co | Selin Co | Tangra-Yumco |
Basin | Indus | Inner | Inner | Inner | Inner | Inner | Brahmaputra | Indus | Brahmaputra | Inner | Inner | Brahmaputra | Inner | Inner | Inner |
Max area (km2)/Date | 413.43 | 514.54 | 484.7 | 1019.84 | 470.75 | 479.55 | 587.09 | 259.95 | 296.23 | 109.69 | 206.5 | 274.55 | 2042.48 | 2377.99 | 848.33 |
2006/11/1 | 2008/12/26 | 2009/3/6 | 2010/2/2 | 2015/3/22 | 2004/10/31 | 2004/10/31 | 2000/9/29 | 2015/11/1 | 2009/1/25 | 2002/1/9 | 2005/11/17 | 2008/10/31 | 2013/11/1 | 2011/3/14 | |
Min area (km2)/Date | 390.68 | 461.95 | 463.02 | 940.85 | 384.24 | 439.19 | 402.49 | 233.33 | 268.11 | 91.87 | 194.05 | 254.8 | 1889.21 | 1805.71 | 792.52 |
2010/5/25 | 2002/6/10 | 2014/6/26 | 2000/4/30 | 2000/7/19 | 2008/6/1 | 2015/6/10 | 2008/6/17 | 2005/7/28 | 2015/7/4 | 2008/9/29 | 2009/4/15 | 2000/7/11 | 2000/6/17 | 2001/8/21 | |
Changing rate (km2/yr) | –0.10 | No change | 0.15 | 2.27 | 3.70 | −0.16 | −3.49 | −0.36 | No change | No change | 0.05 | −0.18 | 1.62 | 28.81 | 0.61 |
p-value < 0.05 | Y | N | Y | Y | Y | Y | Y | Y | N | N | Y | Y | Y | Y | Y |
Lake | Precipitation (km3) | Runoff (km3) | Evapotranspiration (km3) | W (km3) |
---|---|---|---|---|
Nam Co | 0.91 | 3.52 | 2.51 | 1.68 |
Selin Co | 0.94 | 11.46 | 3.04 | 0.08 |
Zhari-namco | 0.28 | 6.37 | 1.07 | 0.42 |
Ngangze | 0.12 | 2.36 | 0.44 | 0.32 |
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Sun, F.; Ma, R.; He, B.; Zhao, X.; Zeng, Y.; Zhang, S.; Tang, S. Changing Patterns of Lakes on The Southern Tibetan Plateau Based on Multi-Source Satellite Data. Remote Sens. 2020, 12, 3450. https://doi.org/10.3390/rs12203450
Sun F, Ma R, He B, Zhao X, Zeng Y, Zhang S, Tang S. Changing Patterns of Lakes on The Southern Tibetan Plateau Based on Multi-Source Satellite Data. Remote Sensing. 2020; 12(20):3450. https://doi.org/10.3390/rs12203450
Chicago/Turabian StyleSun, Fangdi, Ronghua Ma, Bin He, Xiaoli Zhao, Yuchao Zeng, Siyi Zhang, and Shilin Tang. 2020. "Changing Patterns of Lakes on The Southern Tibetan Plateau Based on Multi-Source Satellite Data" Remote Sensing 12, no. 20: 3450. https://doi.org/10.3390/rs12203450