Changes in the Water Area of an Inland River Terminal Lake (Taitma Lake) Driven by Climate Change and Human Activities, 2017–2022
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Sources
2.3. Methodology
2.3.1. Water Extraction and Evaluation Methods
- (1)
- Image data acquisition
- (2)
- Water extraction process
- (3)
- Accuracy evaluation index
2.3.2. Data Analysis Methods
- (1)
- Mann–Kendall trend test
- (2)
- Pearson correlation test
- (3)
- Center of gravity analysis model
- (4)
- Annual maximum water surface synthesis
3. Results
3.1. Evaluation of the Accuracy of Water Extraction Results
3.1.1. Accuracy Evaluation Results of the Overall Water Body
3.1.2. Accuracy Evaluation Results of Fine Water Bodies
3.2. Temporal and Spatial Changes in the Water Area of Taitma Lake
3.3. Climatic Influences on Water Surface Dynamics in Taitma Lake
4. Discussion
4.1. Analysis of the Causes of Changes in Water Area of Taitma Lake
4.2. Implications of Water Area Variability in Taitma Lake
5. Conclusions
- (1)
- In the water body extraction experiments, the deep learning model outperforms the conventional water body index method by a significant margin. UPerNet is the most successful network model in this study, with overall and fine water body-specific accuracies of 96.0 and 90.0%, respectively, and respective F1 values of 96.6 and 90.2%.
- (2)
- The water area of Taitma Lake has clearly displayed seasonal variations between 2017 and 2022, reaching its peak value in March. Its water area has been significantly declining over the past six years at a rate of 31.12 km2 per year on average, leading to the noticeable two-phase alterations (2017–2020 and 2020–2022) and a shift in the center of gravity of the water distribution to the northwest.
- (3)
- The influence of human activity played a major role in the Taitma Lake watershed area’s reduction during the past six years. Among them, the decrease in ecological water transfer from the upper Tarim River in 2017–2020 was the main reason for the decrease in Taitma Lake’s watershed area, while the completion of the Dashimen Hydraulic Hub Project impoundment on the upper Qarqan River was the main reason for the exponential and sudden decrease in its area in 2020–2022.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Method | P (%) | R (%) | F1 (%) | PA (%) | mIoU (%) |
---|---|---|---|---|---|
NDWI | 85.4 | 94.7 | 89.8 | 93.2 | 81.4 |
U-Net | 90.4 | 97.8 | 94.0 | 96.1 | 88.6 |
Deeplabv3+ | 94.2 | 97.3 | 95.7 | 97.3 | 91.8 |
uPerNet | 96.0 | 97.1 | 96.6 | 97.9 | 93.4 |
Method | P (%) | R (%) | F1 (%) | PA (%) | mIoU (%) |
---|---|---|---|---|---|
NDWI | 86.5 | 54.9 | 70.0 | 89.6 | 53.8 |
U-Net | 84.3 | 76.1 | 80.0 | 98.5 | 66.7 |
Deeplabv3+ | 75.4 | 97.4 | 85.0 | 98.6 | 73.9 |
UPerNet | 90.0 | 90.5 | 90.2 | 99.2 | 82.2 |
M–K Test | Kendall’s Tau | Alpha | p-Value | Hypothesis H0 |
---|---|---|---|---|
— — | −0.733 | 0.1 | 0.060 | Reject |
Year | Lon (°) | Lat (°) | Moving direction | Moving Distance (km) |
2017 | 88.164 | 39.511 | — — | — — |
2018 | 88.163 | 39.509 | southwest | 0.316 |
2019 | 88.154 | 39.509 | southwest | 0.961 |
2020 | 88.150 | 39.510 | northwest | 0.439 |
2021 | 88.116 | 39.513 | northwest | 3.811 |
2022 | 88.099 | 39.518 | northwest | 1.981 |
Lake Taitma | Parameters | Average Annual Temperature (°C) | Annual Precipitation (mm) | Annual Evaporation (mm) |
---|---|---|---|---|
Area (km2) | Pearson correlation | −0.232 | −0.052 | −0.439 |
Significance | 0.658 | 0.922 | 0.384 | |
Number of samples | 6 | 6 | 6 |
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Zi, F.; Wang, Y.; Lu, S.; Ikhumhen, H.O.; Fang, C.; Li, X.; Wang, N.; Kuang, X. Changes in the Water Area of an Inland River Terminal Lake (Taitma Lake) Driven by Climate Change and Human Activities, 2017–2022. Remote Sens. 2024, 16, 1703. https://doi.org/10.3390/rs16101703
Zi F, Wang Y, Lu S, Ikhumhen HO, Fang C, Li X, Wang N, Kuang X. Changes in the Water Area of an Inland River Terminal Lake (Taitma Lake) Driven by Climate Change and Human Activities, 2017–2022. Remote Sensing. 2024; 16(10):1703. https://doi.org/10.3390/rs16101703
Chicago/Turabian StyleZi, Feng, Yong Wang, Shanlong Lu, Harrison Odion Ikhumhen, Chun Fang, Xinru Li, Nan Wang, and Xinya Kuang. 2024. "Changes in the Water Area of an Inland River Terminal Lake (Taitma Lake) Driven by Climate Change and Human Activities, 2017–2022" Remote Sensing 16, no. 10: 1703. https://doi.org/10.3390/rs16101703
APA StyleZi, F., Wang, Y., Lu, S., Ikhumhen, H. O., Fang, C., Li, X., Wang, N., & Kuang, X. (2024). Changes in the Water Area of an Inland River Terminal Lake (Taitma Lake) Driven by Climate Change and Human Activities, 2017–2022. Remote Sensing, 16(10), 1703. https://doi.org/10.3390/rs16101703