Can Urbanization-Driven Land-Use and Land-Cover Change Reduce Ecosystem Services? A Case of Coupling Coordination Relationship for Contiguous Poverty Areas in China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Research Framework
2.3. Data Collection
2.4. Methods
2.4.1. LUCC Transfer Matrix
2.4.2. Index System Construction
2.4.3. Coupling Coordination Degree
2.4.4. Analysis of Driving Forces for Coupling Coordination Degree
- (1)
- Path analysis
- (2)
- Multiscale Geographically Weighted Regression (MGWR)
2.4.5. Future Projections of Coupling Coordination Degrees
- (1)
- Future scenarios setting of shared socioeconomic pathway/representative concentration pathway (SSP-RCP)
- (2)
- PLUS Model
- (3)
- Random forest model
3. Results
3.1. Spatiotemporal Variation in Urbanization, LUCC, and ESs in CPAs
3.1.1. Spatiotemporal Variation in Urbanization
3.1.2. Spatiotemporal Variation in Land
3.1.3. Spatiotemporal Variation in ESs
3.2. Coupling Coordination Relationships among Urbanization, LUCC, and ESs
3.3. Prediction under SSP-RCP Scenarios
4. Discussion
4.1. Key Role of Policy Regulation in Mitigating the Impact of Urbanization on ESs in CPAs
4.2. Determinants Influencing Coupling Coordination within CPAs
4.3. Policy Recommendations
4.4. Innovativeness and Limitations
5. Conclusions
- (1)
- Urbanization, LUCC, and ESs in China’s CPAs have shown inconsistent upward trends. Before 2013, ESs had a slight decline overall, which is consistent with the early phase of the Environmental Kuznets Curve (EKC). After 2013, it was characterized by a later phase. The EKC theory is only valid in the short term. Urbanization and LUCC growth accelerated after 2013, especially in the NN region. ESs were most pronounced in the SN.
- (2)
- Over time, the coupling coordination degree in CPAs slightly diminished. LUCC was essential for maintaining system balance. The SN remained relatively stable and at the basic coordination level. The western and northern regions reached a medium imbalance. The degree of coupling coordination was primarily influenced by urbanization, geographical factors, grassland, and undeveloped land.
- (3)
- Under each SSP-RCP scenario, the coupling coordination degree in CPAs exhibits an upward trend in 2035. According to the SSP1-2.6 scenarios, environmental prioritization and sustainable routes are the best approaches for future CPA development.
- (4)
- Environmentally friendly urbanization demands thoughtful land management tailored to local conditions, emphasizing long-term environmental protection. The SN region is highly coordinated and should establish an ecological pilot zone; the WN region should prioritize the protection of the original grassland ecosystem; and the NN region should improve the efficiency of land management, promote land intensification, and focus on the implementation of ecological restoration.
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
CPAs | Contiguous poverty areas |
LUCC | Land-use and land-cover change |
ESs | Ecosystem services |
MGWR | Multiscale geographically weighted regression |
PLUS | Patch-generating Land Use Simulation Model |
SSP-RCP | Shared socioeconomic pathway/representative concentration pathway |
NN | Northern contiguous poverty areas |
WN | Western contiguous poverty areas |
SN | Southern contiguous poverty areas |
CS | Carbon sequestration |
HQ | Habitat quality |
SC | Soil conservation |
WF | Windbreak and sand fixation |
WY | Water yield |
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Category | Data | Year | Resolution | Data Resource |
---|---|---|---|---|
Land-use and land-cover data Future land requirements data | Land-use data | 2000–2020 2035 | 30 m 1 km | CLCD (https://zenodo.org/ (accessed on 11 April 2022)) GCAM-Demeter land use dataset at 0.05-degree resolution (https://data.pnnl.gov/group/nodes/dataset (accessed on 7 December 2022)) |
Terrain | DEM | 2000 | 250 m | China Resources and Environmental Science and Data Center (https://www.resdc.cn/ (accessed on 13 October 2022)) |
Climate (monthly) | Temperature Precipitation Potential evapotranspiration Surface solar radiation | 2000, 2005, 2013, 2015, 2018 | 50 km 10 km | CRU (https://crudata.uea.ac.uk/cru/data/ (accessed on 13 October 2022)) National Qinghai-Tibet Plateau Scientific Data Center (http://data.tpdc.ac.cn/ (accessed on 21 September 2022)) |
Climate (daily) | Temperature Precipitation Snow depth Wind speed | 2000, 2005, 2013, 2015, 2018 | 1 km | National Centers for Environmental Information (https://www.ncei.noaa.gov/ (accessed on 25 September 2022)) National Qinghai-Tibet Plateau Scientific Data Center (http://data.tpdc.ac.cn/ (accessed on 25 September 2022)) |
Soil | Soil data | 2008 | 1 km | HWSD v1.2 (http://www.fao.org/ (accessed on 25 September 2022)) |
Vegetation | NDVI | 2000, 2005, 2013, 2015, 2018 | 1 km | Resource and Environmental Science and Data Center (http://www.resdc.cn/ (accessed on 2 October 2022)) |
Economy (future) | Population GDP Added value of primary, secondary, and tertiary industries | 2035 | 1 km | Gridded datasets for population and economy under Shared Socioeconomic Pathways for 2020–2100 (https://china.scidb.cn (accessed on 18 June 2023)) |
Economy (history) | Population Nighttime light data GDP Added value of primary, secondary, and tertiary industries | 2000, 2005, 2013, 2015, 2018 | 1 km 0.05 degree 1 km | Worldpop (https://www.worldpop.org/ (accessed on 26 November 2022)) Global NPP-VIIRS-like nighttime light data Version 3.1 (https://dataverse.harvard.edu/ (accessed on 26 November 2022)) Gridded global datasets for Gross Domestic Product and Human Development Index (https://datadryad.org/stash/dataset (accessed on 26 November 2022)) China County Statistical Yearbook (https://www.stats.gov.cn/ (accessed on 27 June 2023)) |
The road data | Highway network data Railway network data | 2021 | OpenStreetMap (https://www.openstreetmap.org/ (accessed on 26 November 2022)) | |
Validation data | ESs | 2010 | 250 m | Spatial Dataset of Ecosystem Services in China 2010 (https://www.scidb.cn/ (accessed on 14 May 2023)) |
System | Index | Variables and Formulas | Weights | ||
---|---|---|---|---|---|
Urbanization system | Population urbanization (0.33) | Percentage of population in urban areas | 0.46 | ||
Population density | 0.54 | ||||
Economic urbanization (0.33) | Per capita GDP | 0.43 | |||
The percentage of the added value of secondary industry | 0.35 | ||||
The percentage of the added value of tertiary industry | 0.21 | ||||
Spatial urbanization (0.33) | Percentage of construction land | 1 | |||
LUCC system | Land-use dynamic degree | (3) | 0.69 | [53] | |
is land-use dynamic degree; is the area of type at the starting time; is the area of land-use types from i to j during the period, and T is study time. T is set in years. | |||||
Land-use intensity | (4) | 0.31 | [54] | ||
LI is the comprehensive land-use intensity; is the area of type i at the starting time; A is the area of land-use types from i to j; is the land-use intensity assignment for site type i. | |||||
ESs system | SC (InVEST) | (5) | 0.49 | [55] | |
(6) | |||||
(7) | |||||
SR is the SC amount (); USLE is sediment retention (); RKLS is the potential soil erosion (); R is the rainfall erosivity (); K is the soil erodibility factor (); LS, C, and P represent the slope length gradient, vegetation coverage, and erosion management, respectively (dimensionless). | |||||
WY (InVEST) | (8) | 0.1 | |||
is the WY of grid x (mm); Px is the annual average precipitation of grid x (mm); AETx is the annual average actual evapotranspiration of grid x (mm). | |||||
HQ (InVEST) | (9) | 0.03 | |||
The total threat level for grid cell x with land-use type j is given by ; z (z = 2.5) and k are scaling parameters (or constants); indicates the habitat suitability of land-use/cover type j. | |||||
CS (CASA) | (10) | 0.07 | [56] | ||
NPP(x,t) is the net primary production (); APAR(x,t) is the absorbed photosynthetically active radiation (); is actual light energy utilization (); x and t represent the spatial location and time, respectively. | |||||
WF (RWEQ) | (11) | 0.31 | [57] | ||
(12) | |||||
(13) | |||||
In the formula, WE is the actual wind erosion amount (); S is the regional WF coefficient; is the wind-sand retention (); C is the vegetation coverage; Z is the calculated downwind distance (50 m); WF is a meteorological factor; EF is the soil erodibility factor; SCF is the soil crust factor; is the surface roughness factor. |
Scenario | Description |
---|---|
SSP1-2.6 | Combination of low societal vulnerability and low forcing level, with significant land-use change |
SSP2-4.5 | Combination of intermediate levels of societal vulnerability and intermediate levels of forcing |
SSP4-6.0 | Combination of relatively high societal vulnerability and relatively high forcing level, with significant land-use change |
SSP5-8.5 | Combination of high societal vulnerability and high level of forcing |
K | 2000 | 2005 | 2013 | 2015 | 2018 | |
---|---|---|---|---|---|---|
Cropland | −0.22% | 427,675 | 417,734 | 413,331 | 411,574 | 408,992 |
Forest | 0.14% | 969,300 | 974,465 | 985,181 | 986,276 | 991,597 |
Grassland | −0.04% | 1,799,458 | 1,799,457 | 1,788,104 | 1,793,255 | 1,792,966 |
Water | 1.16% | 51,370 | 55,984 | 60,577 | 60,390 | 62,092 |
Unused land | −0.12% | 66,490 | 66,316 | 65,984 | 65,474 | 64,922 |
Construction | 3.28% | 12,397 | 13,684 | 17,445 | 18,246 | 19,621 |
Before 2013 | After 2013 | Explanation | |
---|---|---|---|
Urbanization | 0.0004 | 0.0007 | The rate of urbanization has accelerated significantly. While population urbanization has slowed slightly, economic urbanization has accelerated. The implementation of targeted poverty alleviation policies, as well as the industrial restructuring strategy, has produced visible results [68]. The role of spatial urbanization, on the other hand, is not obvious. |
LUCC | 0.0056 | 0.0088 | The K value for forest has almost tripled since 2013, whereas the K value for construction has doubled. Despite growth being observed on both ecological and developed lands, the rate and magnitude of expansion in ecological areas significantly outpaces those in developed areas. The proportion of construction remains relatively insignificant. |
ESs | −0.0015 | 0.0023 | The majority of the increase in ESs is attributable to the rise in SC, WF, and WY. The general trend of ESs is a shift from decreasing to rising. In addition to the role of climate change, the expansion of ecological land use (particularly forests) has had positive effects on a global scale [5,69]. However, the ecological value of additional land is limited, and early forest conservation policies impeded the development of ecosystem services such as CS [70]. |
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Zhang, J.; Lu, X.; Qin, Y.; Zhang, Y.; Yang, D. Can Urbanization-Driven Land-Use and Land-Cover Change Reduce Ecosystem Services? A Case of Coupling Coordination Relationship for Contiguous Poverty Areas in China. Land 2024, 13, 82. https://doi.org/10.3390/land13010082
Zhang J, Lu X, Qin Y, Zhang Y, Yang D. Can Urbanization-Driven Land-Use and Land-Cover Change Reduce Ecosystem Services? A Case of Coupling Coordination Relationship for Contiguous Poverty Areas in China. Land. 2024; 13(1):82. https://doi.org/10.3390/land13010082
Chicago/Turabian StyleZhang, Jian, Xin Lu, Yao Qin, Yuxuan Zhang, and Dewei Yang. 2024. "Can Urbanization-Driven Land-Use and Land-Cover Change Reduce Ecosystem Services? A Case of Coupling Coordination Relationship for Contiguous Poverty Areas in China" Land 13, no. 1: 82. https://doi.org/10.3390/land13010082
APA StyleZhang, J., Lu, X., Qin, Y., Zhang, Y., & Yang, D. (2024). Can Urbanization-Driven Land-Use and Land-Cover Change Reduce Ecosystem Services? A Case of Coupling Coordination Relationship for Contiguous Poverty Areas in China. Land, 13(1), 82. https://doi.org/10.3390/land13010082