Spatiotemporal Dynamics of Wetland in Dongting Lake Based on Multi-Source Satellite Observation Data during Last Two Decades
Abstract
:1. Introduction
2. Study Area and Materials
2.1. Study Area
2.2. Materials
2.2.1. Remote Sensing Data
2.2.2. Training and Validation Samples
3. Methodology
3.1. Flowchart
3.2. Random Forest
3.3. JBh Extention Method
3.4. Accuracy Evaluation
4. Results and Discussion
4.1. Classification Accuracy
4.2. Wetland Types and Their Distributions
4.3. Wetland Changes
4.4. Influencing Factor Analysis
5. Conclusions
- (1)
- Using a two-month composition to construct time series data, we effectively eliminated the influence of clouds and strips. The reconstructed two-month composition time series data set (NDVI, NDWI and NDMI) could effectively reflect the information on wetland phenology and water inundation. The results showed that the two-month composition strategy had good potential to be used as basic data for yearly wetland distribution mapping, and this strategy effectively improves the utilization of multi-source remote sensing data.
- (2)
- The use of optimal features and the random forest classifier achieved good wetland identification accuracies, as the OA and kappa coefficients of our classification results were above 89.6% and 0.86, respectively. The PA and UA for all land cover types were above 72.9% and 73.9%, respectively. Feature optimization not only reduces data redundancy and improves operation efficiency, but also achieves wetland identification. However, due to the different characteristics of wetland vegetation in different regions, the optimal features are different.
- (3)
- The total area of wetlands (including natural and human-made wetlands) in these three Dongting Lake wetland reserves essentially remained stable between 2000 and 2020. Although human-made wetlands (paddy fields) increased by 260.0 km2, the area of natural wetlands decreased by 197.0 km2. The acreage of seasonal wetlands decreased by 176.8 km2, which was affected by both human factors (farmland expansion) and natural factors (precipitation and evaporation).
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Number | Landsat-5 | Landsat-7 | Landsat-8 | Sentinel-2 | SUM |
---|---|---|---|---|---|
2000 | 37 | 44 | 0 | 0 | 81 |
2001 | 52 | 54 | 0 | 0 | 106 |
2002 | 38 | 52 | 0 | 0 | 90 |
2003 | 42 | 37 | 0 | 0 | 79 |
2004 | 58 | 47 | 0 | 0 | 105 |
2005 | 49 | 51 | 0 | 0 | 100 |
2006 | 50 | 50 | 0 | 0 | 100 |
2007 | 33 | 48 | 0 | 0 | 81 |
2008 | 55 | 55 | 0 | 0 | 110 |
2009 | 58 | 54 | 0 | 0 | 112 |
2010 | 38 | 45 | 0 | 0 | 83 |
2011 | 41 | 49 | 0 | 0 | 90 |
2012 | 0 | 38 | 0 | 0 | 38 |
2013 | 0 | 52 | 58 | 0 | 110 |
2014 | 0 | 40 | 47 | 0 | 87 |
2015 | 0 | 45 | 60 | 0 | 105 |
2016 | 0 | 48 | 53 | 0 | 101 |
2017 | 0 | 42 | 51 | 0 | 93 |
2018 | 0 | 45 | 58 | 30 | 133 |
2019 | 0 | 43 | 52 | 623 | 718 |
2020 | 0 | 48 | 46 | 619 | 713 |
SUM | 551 | 987 | 425 | 1272 |
Generic Name | Landsat-5 | Landsat-7 | Landsat-8 | Sentinel-2 |
---|---|---|---|---|
Blue | 1 (450–520) | 1 (450–520) | 2 (450–510) | 2 (458–522) |
Green | 2 (520–600) | 2 (520–600) | 3 (530–590) | 3 (543–578) |
Red | 3 (630–690) | 3 (630–690) | 4 (640–670) | 4 (650–680) |
Near-Infra-Red (NIR) | 4 (760–900) | 4 (770–900) | 5 (850–880) | 8 (785–900) |
Short-Wave Infra-Red 1 (SWIR1) | 5 (1550–1750) | 5 (1550–1750) | 6 (1570–1650) | 11 (1565–1655) |
Short-Wave Infra-Red 2 (SWIR2) | 7 (2080–2350) | 7 (2090–2350) | 7 (2110–2290) | 12 (2100–2280) |
Year | Permanent Water | Permanent Marsh | Flooded Wetland | Seasonal Marsh | Paddy Field | Forest | Construction Land |
---|---|---|---|---|---|---|---|
PA/UA | PA/UA | PA/UA | PA/UA | PA/UA | PA/UA | PA/UA | |
2000 | 97.44%/95% | 95.02%/94.17% | 89.13%/93.18% | 96.77%/96.77% | 92.4%/91.07% | 79.07%/81.93% | 72.86%/73.91% |
2001 | 94.85%/97.87% | 93.67%/92.83% | 82.14%/82.14% | 94.44%/91.89% | 93.57%/93.02% | 88.95%/88.44% | 78.57%/82.09% |
2002 | 96.67%/95.6% | 96.24%/95.88% | 81.25%/83.87% | 82.35%/93.33% | 95.32%/87.87% | 77.91%/85.9% | 81.43%/95% |
2003 | 97.06%/97.06% | 92.48%/96.09% | 84.62%/81.48% | 83.33%/94.59% | 95.61%/95.61% | 95.35%/82.41% | 80%/98.25% |
2004 | 96.34%/95.18% | 98.12%/96.67% | 81.25%/86.67% | 81.08%/93.75% | 94.74%/92.84% | 91.86%/90.8% | 78.57%/87.3% |
2005 | 90.91%/88.24% | 95.49%/96.58% | 85.96%/89.09% | 93.33%/90.32% | 94.15%/95.55% | 93.02%/86.49% | 88.57%/96.88% |
2006 | 98.63%/97.3% | 92.48%/90.44% | 94.29%/97.06% | 96.97%/94.12% | 93.86%/92.51% | 80.23%/84.66% | 88.57%/92.54% |
2007 | 97.3%/96% | 99.25%/96.7% | 86.84%/94.29% | 90.63%/93.55% | 93.57%/88.89% | 79.65%/88.39% | 85.71%/92.31% |
2008 | 97.14%/93.15% | 95.11%/93.7% | 80.56%/93.55% | 93.94%/91.18% | 93.57%/92.22% | 94.77%/95.88% | 88.57%/96.88% |
2009 | 95.83%/98.57% | 95.49%/95.49% | 96.97%/88.89% | 97.06%/94.29% | 95.03%/93.12% | 87.79%/92.07% | 85.71%/86.96% |
2010 | 93.55%/87.88% | 99.25%/94.29% | 82.69%/91.49% | 90.63%/93.55% | 93.57%/96.1% | 88.37%/89.41% | 80%/81.16% |
2011 | 97.22%/97.22% | 94.36%/94.36% | 91.43%/94.12% | 92.59%/96.15% | 93.86%/91.98% | 87.21%/89.29% | 82.86%/84.06% |
2012 | 97.22%/89.74% | 96.99%/95.56% | 82.05%/88.89% | 87.5%/96.55% | 95.32%/91.57% | 81.4%/88.05% | 81.43%/87.69% |
2013 | 97.5%/95.12% | 95.49%/97.69% | 88.24%/88.24% | 94.87%/97.37% | 97.37%/95.42% | 90.7%/91.23% | 82.86%/84.06% |
2014 | 97.33%/97.33% | 96.62%/99.23% | 93.33%/87.5% | 95.35%/95.35% | 97.95%/95.71% | 89.53%/91.67% | 81.43%/80.28% |
2015 | 98.67%/96.1% | 95.49%/94.42% | 85.29%/85.29% | 88.24%/93.75% | 95.32%/94.49% | 88.95%/93.29% | 82.86%/80.56% |
2016 | 98.67%/97.37% | 98.5%/98.5% | 94.12%/91.43% | 94.12%/96.97% | 96.78%/96.78% | 90.12%/91.18% | 82.86%/81.69% |
2017 | 96%/96% | 96.62%/98.47% | 92.86%/88.64% | 94.44%/94.44% | 97.95%/97.1% | 91.28%/91.81% | 84.29%/94.12% |
2018 | 97.22%/97.22% | 93.61%/96.14% | 97.14%/91.89% | 97.67%/97.67% | 95.91%/96.19% | 94.77%/90.56% | 91.43%/94.12% |
2019 | 97.18%/95.83% | 96.99%/98.85% | 94.12%/91.43% | 94.74%/97.3% | 98.25%/97.67% | 91.81%/91.28% | 85.71%/84.51% |
2020 | 98.84%/97.7% | 95.13%/96.58% | 91.3%/95.45% | 86.54%/90% | 97.95%/96.82% | 93.02%/92.49% | 88.57%/87.32% |
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Xing, L.; Chi, L.; Han, S.; Wu, J.; Zhang, J.; Jiao, C.; Zhou, X. Spatiotemporal Dynamics of Wetland in Dongting Lake Based on Multi-Source Satellite Observation Data during Last Two Decades. Int. J. Environ. Res. Public Health 2022, 19, 14180. https://doi.org/10.3390/ijerph192114180
Xing L, Chi L, Han S, Wu J, Zhang J, Jiao C, Zhou X. Spatiotemporal Dynamics of Wetland in Dongting Lake Based on Multi-Source Satellite Observation Data during Last Two Decades. International Journal of Environmental Research and Public Health. 2022; 19(21):14180. https://doi.org/10.3390/ijerph192114180
Chicago/Turabian StyleXing, Liwei, Liang Chi, Shuqing Han, Jianzhai Wu, Jing Zhang, Cuicui Jiao, and Xiangyang Zhou. 2022. "Spatiotemporal Dynamics of Wetland in Dongting Lake Based on Multi-Source Satellite Observation Data during Last Two Decades" International Journal of Environmental Research and Public Health 19, no. 21: 14180. https://doi.org/10.3390/ijerph192114180
APA StyleXing, L., Chi, L., Han, S., Wu, J., Zhang, J., Jiao, C., & Zhou, X. (2022). Spatiotemporal Dynamics of Wetland in Dongting Lake Based on Multi-Source Satellite Observation Data during Last Two Decades. International Journal of Environmental Research and Public Health, 19(21), 14180. https://doi.org/10.3390/ijerph192114180