The Ecological Risks in Arid Zones from a Production–Living–Ecological Space Perspective: A Case Study of the Tuha Region in Xinjiang, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data
- (1)
- Land use data came from the Centre for Resource Sciences and Satellites of the Chinese Academy of Sciences (https://www.resdc.cn/ (accessed on 7 December 2023). It was published every five years from 2000 to 2020 and used Landsat series of remote sensing image data. The land resources are classified into 25 land types based on their natural attributes.
- (2)
- NDVI data came from the Centre for Resource Sciences and Satellites of the Chinese Academy of Sciences (https://www.resdc.cn/ (accessed on 7 December 2023)); the spatial resolution is 1 km.
- (3)
- DEM data came from geospatial data clouds (https://www.gscloud.cn/ (accessed on 22 November 2023)); the spatial resolution is 30 m.
- (4)
- Mean annual temperature, annual precipitation and population density data came from the National Earth System Science Data Centre (https://www.geodata.cn/ (accessed on 22 November 2023)); the spatial resolution is 1 km.
- (5)
- Road data came from the Digital Globe Open Platform (https://open.geovisearth.com/ (accessed on 7 December 2023)); the spatial resolution is 30 m. There are six categories of road types: highways, national highways, provincial highways, railways, county roads and rural roads.
- (6)
- Soil data came from the National Glacial Tundra Desert Science Data Centre (https://www.ncdc.ac.cn/ (accessed on 20 January 2024)); a wide range of elemental contents, including sand content, silt content, clay content and organic carbon content, were included at a resolution of 1 km.
- (7)
- Potential evapotranspiration data came from the National Tibetan Plateau Science Data Centre (https://data.tpdc.ac.cn/ (accessed 22 December 2023)); they are in NetCDF (.nc) format, with a spatial resolution of 0.1 mm, and required conversion to raster data for use in ArcGIS 10.8.
2.3. Methods
2.3.1. Categorization of Production, Living and Ecological Functions
2.3.2. Evolution of Spatial and Temporal Patterns in PLESs
Single Land Use Attitudes
Degree of Integrated Land Use Dynamics
2.3.3. Construction of Ecological Risk Evaluation Indicators
Potential–Connectivity–Resilience Evaluation System Based on SDGs
Subjective–Objective Combination Empowerment Method
3. Results
3.1. Main Functional Division of Land Use Types in the Turpan–Hami Region
3.2. Spatial and Temporal Evolution of PLES in the Turpan and Hami Regions, 2000–2020
3.3. PLES Center-of-Gravity Migration in Turpan and Hami, 2000–2020
3.4. Spatial and Temporal Evolution of Ecological Risk in the Turpan and Hami Areas
3.5. Analysis of the Spatial and Temporal Evolution of Ecological Risk from a PLES Perspective
4. Discussion
4.1. Construction of an Ecological Risk Evaluation System Based on the Potential–Connectivity–Resilience of SDGs
4.2. Ecological Risk Assessment from a PLES Perspective
5. Conclusions
- (1)
- In terms of spatial distribution patterns and temporal changes, PLESs in the Turpan and Hami regions have undergone significant changes. Ecological space has dominated, covering 97% of the study area, followed by production space, with living space occupying the smallest area. Over the past 20 years, production and living spaces have continuously expanded, increasing by 1215 km2 and 142 km2, respectively, whereas ecological space has gradually decreased, as it has served as the primary source of expansion for living and production spaces.
- (2)
- From the perspective of the potential–connectivity–resilience assessment system, the maximum average values of various risk indices in the Turpan–Hami region have shown an increasing trend, indicating gradual deterioration in the ecological security status of the area. During the study period, the increases in potential risk and composite risk in the Hami region were greater than those in the Turpan region, with differences of 0.00345 and 0.01291, respectively. The differences in connectivity risk and resilience risk were smaller. This indicates that from 2000 to 2020, the rate of ecological degradation in the Hami region was higher than that in the Turpan region.
- (3)
- This study revealed that over 20 years, the average values of various PLES risks were as follows: living space > production space > ecological space. This indicates that the risk values are greater in the more densely populated living spaces, primarily because of the homogeneous landscape types, low vegetation cover, high population density, and significant human disturbance in these areas, resulting in higher risk values.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Data | Time | Resolution | Data Sources |
---|---|---|---|
Land use data | 2000~2020 | 30 m | Resource Sciences and Satellites of the Chinese Academy of Sciences (https://www.resdc.cn/ (accessed on 7 December 2023)) |
NDVI | 2000~2020 | 1 km | Resource Sciences and Satellites of the Chinese Academy of Sciences (https://www.resdc.cn/ (accessed on 7 December 2023)) |
DEM | 2020 | 30 m | geospatial data clouds (https://www.gscloud.cn/ (accessed on 22 November 2023)) |
Mean annual temperature data | 2000~2020 | 1 km | National Earth System Science Data Centre (https://www.geodata.cn/ (accessed on 22 November 2023)) |
Mean annual precipitation data | 2000~2020 | 1 km | National Earth System Science Data Centre (https://www.geodata.cn/ (accessed on 22 November 2023)) |
Population density data | 2000~2020 | 1 km | National Earth System Science Data Centre (https://www.geodata.cn/ (accessed on 22 November 2023)) |
Road data | 2020 | 30 m | Digital Globe Open Platform (https://open.geovisearth.com/ (accessed on 7 December 2023)) |
Soil data | 2020 | 1 km | National Glacial Tundra Desert Science Data Centre (https://www.ncdc.ac.cn/ (accessed on 20 January 2024)) |
Potential evapotranspiration data | 2000~2020 | 0.1 mm | National Tibetan Plateau Science Data Centre (https://data.tpdc.ac.cn/ (accessed 22 December 2023)) |
Social statistical data | 2000~2020 | \ | https://tjj.xinjiang.gov.cn/ accessed on 20 March 2024 |
Category I | Category II | Production Space | Living Space | Ecological Space | ||
---|---|---|---|---|---|---|
Code | Name | Code | Name | |||
1 | Cropland | 11 | Paddy field | 5 | 0 | 1 |
12 | Dryland | 5 | 0 | 1 | ||
2 | Woodland | 21 | Woodland | 5 | 0 | 5 |
22 | Shrubland | 0 | 0 | 5 | ||
23 | Sparse woodland | 0 | 0 | 5 | ||
24 | Other forestland | 5 | 0 | 1 | ||
3 | Grassland | 31 | High-coverage grassland | 0 | 0 | 5 |
32 | Medium-coverage grassland | 0 | 0 | 5 | ||
33 | Low-coverage grassland | 0 | 0 | 3 | ||
4 | Waters | 41 | Rivers and canals | 1 | 0 | 3 |
42 | Lakes | 0 | 0 | 5 | ||
43 | Reservoirs and ditches | 3 | 0 | 3 | ||
44 | Permanent glaciers and snowfields | 0 | 0 | 5 | ||
46 | Shoals | 0 | 0 | 5 | ||
5 | Urban, rural and industrial residential land | 51 | Town land | 1 | 5 | 0 |
52 | Rural settlements | 1 | 5 | 0 | ||
53 | Other constructed land | 5 | 1 | 0 | ||
6 | Unused land | 61 | Sandy land | 0 | 0 | 3 |
62 | Gobi | 0 | 0 | 3 | ||
63 | Saline soil | 0 | 0 | 3 | ||
64 | Marshland | 0 | 0 | 3 | ||
65 | Bare ground | 0 | 0 | 3 | ||
66 | Bare rock texture | 0 | 0 | 3 |
Normative Layer | Risk Layer | Targets | Connotation | SDG | Nature of the Indicator | Weights |
---|---|---|---|---|---|---|
Potential | Exposure | Slope | Land degradation risk | / | + | 0.125 |
Vegetation covered | Spatial distribution patterns of plant communities | 15.1.2 | - | 0.210 | ||
Land use risk | Human activity patterns | 15.3 | + | 0.128 | ||
Disturbance | Average annual temperature | Potential desertification risks | 15.3 | + | 0.105 | |
Water yield | 6.6 | - | 0.168 | |||
Population density | Regional social development situation | 11.3.1 | + | 0.264 | ||
Connectivity | Exposure | Intensity index | Ecological connectivity and fragmentation | / | + | 0.093 |
Patch density | - | 0.050 | ||||
Shannon Diversity Index | Diversity and heterogeneity of landscape structure and function | / | - | 0.166 | ||
Contagion index | Degree of plaque aggregation | / | - | 0.052 | ||
Disturbance | Distance to plowland | Ecological impacts of farming | / | - | 0.299 | |
Distance from construction site | Ecological impacts of human development activities | / | - | 0.215 | ||
Road network density | 11.2 | - | 0.125 | |||
Resilience | Exposure | Ecosystem resilience index | Resilience of ecosystems | 15.5 | - | 0.181 |
Habitat quality index | Ecosystem resilience to risk | 15.5 | - | 0.301 | ||
Ecosystem services value index | Ecosystems provide services and value to humans | 15.1.2 | - | 0.349 | ||
Disturbance | Drought risk | Probability of risk of drought on land | 15.3 | + | 0.169 |
Production, Living and Ecological Functions | Clustering Group | Land Use Type |
---|---|---|
Ecological function | 1 | Bare ground, bare rock texture, marshland, saline soil, Gobi, sandy land, low-coverage grassland, rivers and canals, permanent glaciers and snowfields, shoals, lakes, medium-coverage grassland, high-coverage grassland, sparse woodland, shrubland |
Production function | 2 | Dryland, other forestland, paddy land, other constructed land, woodland, reservoirs and ditches |
Living function | 3 | Town land, rural settlements |
Type of Risk | Year | Turpan PLES | Hami PLES | ||||
---|---|---|---|---|---|---|---|
Production Space | Living Space | Ecological Space | Production Space | Living Space | Ecological Space | ||
Potential risk | 2000 | 0.45262 | 0.57231 | 0.54444 | 0.40821 | 0.57181 | 0.53462 |
2010 | 0.48536 | 0.58288 | 0.55051 | 0.43897 | 0.56619 | 0.53352 | |
2020 | 0.42111 | 0.49725 | 0.54638 | 0.41463 | 0.50578 | 0.54803 | |
Connectivity risk | 2000 | 0.68612 | 0.67752 | 0.59846 | 0.70109 | 0.72343 | 0.60770 |
2010 | 0.69797 | 0.70928 | 0.63211 | 0.72410 | 0.74493 | 0.63664 | |
2020 | 0.69490 | 0.70692 | 0.61889 | 0.71606 | 0.74541 | 0.62740 | |
Resilience risk | 2000 | 0.77431 | 0.80165 | 0.46869 | 0.73972 | 0.83046 | 0.46958 |
2010 | 0.81977 | 0.85800 | 0.46328 | 0.82072 | 0.85797 | 0.45998 | |
2020 | 0.83642 | 0.85777 | 0.46318 | 0.83445 | 0.86154 | 0.46019 | |
Composite risk | 2000 | 0.63758 | 0.68307 | 0.53739 | 0.61607 | 0.70803 | 0.53765 |
2010 | 0.66777 | 0.71602 | 0.54881 | 0.66115 | 0.72245 | 0.54371 | |
2020 | 0.65134 | 0.68753 | 0.54303 | 0.65565 | 0.70444 | 0.54542 |
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Yuan, W.; Bai, L.; Gao, X.; Zhou, K.; Gao, Y.; Zhou, X.; Qiu, Z.; Kou, Y.; Lv, Z.; Zhao, D.; et al. The Ecological Risks in Arid Zones from a Production–Living–Ecological Space Perspective: A Case Study of the Tuha Region in Xinjiang, China. Remote Sens. 2024, 16, 3224. https://doi.org/10.3390/rs16173224
Yuan W, Bai L, Gao X, Zhou K, Gao Y, Zhou X, Qiu Z, Kou Y, Lv Z, Zhao D, et al. The Ecological Risks in Arid Zones from a Production–Living–Ecological Space Perspective: A Case Study of the Tuha Region in Xinjiang, China. Remote Sensing. 2024; 16(17):3224. https://doi.org/10.3390/rs16173224
Chicago/Turabian StyleYuan, Weiting, Linyan Bai, Xiangwei Gao, Kefa Zhou, Yue Gao, Xiaozhen Zhou, Ziyun Qiu, Yanfei Kou, Zhihong Lv, Dequan Zhao, and et al. 2024. "The Ecological Risks in Arid Zones from a Production–Living–Ecological Space Perspective: A Case Study of the Tuha Region in Xinjiang, China" Remote Sensing 16, no. 17: 3224. https://doi.org/10.3390/rs16173224
APA StyleYuan, W., Bai, L., Gao, X., Zhou, K., Gao, Y., Zhou, X., Qiu, Z., Kou, Y., Lv, Z., Zhao, D., & Zhang, Q. (2024). The Ecological Risks in Arid Zones from a Production–Living–Ecological Space Perspective: A Case Study of the Tuha Region in Xinjiang, China. Remote Sensing, 16(17), 3224. https://doi.org/10.3390/rs16173224