Evaluating Trends of Land Productivity Change and Their Causes in the Han River Basin, China: In Support of SDG Indicator 15.3.1
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Sources and Processing
2.2.1. NPP Data
2.2.2. Meteorological Data
2.2.3. Topographic Data
2.2.4. Forest Cover Data
2.2.5. Human Activity Data
2.3. Methods
2.3.1. Change Trend of Land NPP
2.3.2. Sustainability Analysis of Land NPP Change
- (1)
- If 0.5 < H < 1, it is a continuous series that the future trend of land NPP change is consistent with the past. The closer H is to 1, the stronger the continuity is.
- (2)
- If H = 0.5, it is a random series that the future trend of land NPP change is irrelevant to the past.
- (3)
- If 0 < H < 0.5, it is a reverse continuous series that the future trend of land NPP change is opposite to the past. The closer H is to 0, the stronger the reverse continuity is.
2.3.3. Land Productivity Assessment Based on Trends.Earth for SDG Indicator 15.3.1
- (1)
- Trajectory—measures the rate of change in land productivity over time. Trends.Earth uses pixel-level linear regressions to identify areas where land productivity has changed during the analysis period. Mann–Kendall non-parametric tests are then performed, considering only those significant changes with a p-value ≤ 0.05. Positive significant trends in NDVI indicate potential improvement, while negative significant trends suggest potential degradation.
- (2)
- State—detects the most recent changes in land productivity compared with the baseline period. The baseline period is considered as the historical period, while the comparison period is defined as the most recent years. Then, the average NDVI is calculated for the baseline and comparison periods. The percentile class to which it belongs is determined, with possible values ranging from 1 (lowest class) to 10 (highest class). If the difference in class between the baseline period and the comparison period is less than 2, the pixel may be degraded; if the difference is greater than 2, the pixel may have a recent improvement in productivity; if there is only a small change, the pixel is considered stable.
- (3)
- Performance—measures local productivity compared with similar land cover types across the study area. If the observed average NDVI is less than 50% of the maximum productivity, this sub-indicator considers the pixel to be potentially degraded. The maximum productivity is at the 90th percentile of the frequency distribution of NDVI.
2.3.4. Geographically Weighted Regression (GWR) and Multiscale GWR (MGWR)
3. Results
3.1. Spatial–Temporal Pattern of Land NPP
3.2. Change Trend of Land NPP
3.3. Sustainability Analysis of Land NPP Change
4. Discussion
4.1. Comparison of Land Productivity Assessment
- (1)
- Land productivity assessment based on Trends.Earth—the MODIS NDVI dataset (MOD13Q1) was chosen to estimate land productivity in the Han River Basin from 2001 to 2019, which can be implemented in the Trends.Earth plugin of QGIS 3.16 software. It was obtained by integrating three categories of trajectory, state, and performance according to the rules in Table 2. Figure 6 presents the spatial distribution of land productivity in the Han River Basin from 2001 to 2019 using this method. In this study, the state was computed using 2001–2014 as the baseline period and 2015–2019 as the comparison period to compare a region’s current productivity with its past productivity. Specifically, three integrated degradation types, including stable, stable but under pressure, and early signs of decline, were combined as STABLE; the integrated degradation type of increasing was classified as IMPROVEMENT; the integrated degradation type of declining was labeled as DEGRADATION.
- (2)
- Land productivity assessment based on sustainability pattern—the sustainability analysis of land NPP presented in Figure 5 was taken for land productivity estimation. Specifically, three sustainability patterns of land NPP, including continuously and highly significant increase, continuously significant increase, and reverse continuously significant decrease, were combined as IMPROVEMENT; four sustainability patterns, covering continuously and highly significant decrease, continuously significant decrease, reverse continuously and highly significant increase, and reverse continuously significant increase, were merged as DEGRADATION; two sustainability patterns, involving continuously no significant change and reverse continuously no significant change, were grouped as STABLE.
- (3)
- Comparison of the results obtained using the above two methods—the DEGRADATION land estimated by the two methods was broadly consistent, but the assessments of IMPROVEMENT and STABLE presented some differences. (Figure 7). Specifically, the percentages of IMPROVEMENT, DEGRADATION, and STABLE in the Trends.Earth method were 87.05%, 1.92%, and 11.03%, respectively; the percentages of those in the sustainability pattern method were 58.90%, 1.32%, and 39.78%, respectively. Because certain land defined as IMPROVEMENT by Trends.Earth was classified as STABLE by the sustainability pattern method.
4.2. Key Drivers of Land NPP Change
4.3. Further Research
5. Conclusions
- (1)
- The multi-year average of land NPP was 486 g C·m−2·a−1 in the Han River Basin from 2001 to 2019, with the highest in 2015 and the lowest in 2001. The interannual variation of land NPP exhibited a fluctuating upward trend, with a more pronounced growth rate from 2001 to 2010 than from 2011 to 2019. The growth rate of land NPP in the upper reaches was faster than the basin-wide average, while the growth rates in the middle and lower reaches were slower than the basin-wide average.
- (2)
- The spatial heterogeneity of land NPP was evident, with high values in the west and low values in the east. Of the basin area, with NPP values between 400 and 600 g C·m−2·a−1, 66.15% was concentrated in the middle and upper reaches of the basin. Land NPP was highest in the watershed above Danjiangkou, followed by the mainstream watershed below Danjiangkou, and lowest in the Tangbai River Watershed. The Theil–Sen slope of land NPP in the Han River Basin from 2001 to 2019 ranged from −33 to 20 g C·m−2·a−1. Of the basin area, 57.82% presented a significant increase in land NPP, 0.96% showed a significant decrease, and 41.23% exhibited no significant change. In general, series with continuously significant increases in sustainability pattern of land NPP change were far more than those with continuously significant decreases. Land NPP in the Han River Basin will present sustained growth in the future.
- (3)
- It was broadly consistent in the estimation of DEGRADATION between the Trends.Earth method and the sustainability pattern method. However, there were some differences in the assessment of IMPROVEMENT and STABLE, because certain land defined as IMPROVEMENT by Trends.Earth was classified as STABLE by the sustainability pattern method.
- (4)
- The MGWR model outperformed the global OLS and GWR models in fitting the drivers of land NPP change in the Han River Basin. There are regional differences in the main factors influencing land NPP change. Precipitation and population count were the dominant factors in most regions, and the population count shows a significant inhibitory effect on the growth of land NPP. In practice, a zoning approach should be adopted to develop differentiated vegetation restoration and conservation programs for specific regions.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Data | Source | Resolution |
---|---|---|
NPP | MOD17A3HGF, NASA | 500 m |
Temperature | MOD11A1, NASA | 1000 m |
Precipitation | CHIRPS | 0.05 arc degrees |
Elevation/slope | NASADEM | 30 m |
Forest cover | GFCC30TC, NASA | 30 m |
Population count | SEDAC | 30 arc seconds |
Human modification | SEDAC | 1000 m |
Basin/watershed | China National Earth System Science Data Center | vector |
Trajectory | State | Performance | Integrated Degradation Types |
---|---|---|---|
Improvement | Improvement | Stable | Improving |
Improvement | Improvement | Degradation | Improving |
Improvement | Stable | Stable | Improving |
Improvement | Stable | Degradation | Improving |
Improvement | Degradation | Stable | Improving |
Improvement | Degradation | Degradation | Stable |
Stable | Improvement | Stable | Stable |
Stable | Improvement | Degradation | Stable |
Stable | Stable | Stable | Stable |
Stable | Stable | Degradation | Stable but stressed |
Stable | Degradation | Stable | Early signs of decline |
Stable | Degradation | Degradation | Declining |
Degradation | Improvement | Stable | Declining |
Degradation | Improvement | Degradation | Declining |
Degradation | Stable | Stable | Declining |
Degradation | Stable | Degradation | Declining |
Degradation | Degradation | Stable | Declining |
Degradation | Degradation | Degradation | Declining |
Model Metrics | OLS | GWR | MGWR |
---|---|---|---|
AIC | 14,234 | 12,440 | 12,355 |
Adjusted R2 | 0.318 | 0.562 | 0.565 |
Bandwidth | 150 | 150 | Intercept (578), Precipitation (51), Elevation (5794), Population Count (485), Human Modification (645) |
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Hu, Y.; Wang, C.; Yu, X.; Yin, S. Evaluating Trends of Land Productivity Change and Their Causes in the Han River Basin, China: In Support of SDG Indicator 15.3.1. Sustainability 2021, 13, 13664. https://doi.org/10.3390/su132413664
Hu Y, Wang C, Yu X, Yin S. Evaluating Trends of Land Productivity Change and Their Causes in the Han River Basin, China: In Support of SDG Indicator 15.3.1. Sustainability. 2021; 13(24):13664. https://doi.org/10.3390/su132413664
Chicago/Turabian StyleHu, Yanxia, Changqing Wang, Xingxiu Yu, and Shengzhou Yin. 2021. "Evaluating Trends of Land Productivity Change and Their Causes in the Han River Basin, China: In Support of SDG Indicator 15.3.1" Sustainability 13, no. 24: 13664. https://doi.org/10.3390/su132413664