Land Use Change and Its Impact on Landscape Ecological Risk in Typical Areas of the Yellow River Basin in China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data
2.3. Methods
2.3.1. Chord Diagram of Land Use Changes
2.3.2. GIS Map Analysis of Land Use Changes
2.3.3. Land Use Change Influencing Factors Analysis
2.3.4. LERA Method
- 1.
- Landscape disturbance index (Li)
- 2.
- Landscape vulnerability index (Wi)
- 3.
- LERA index ()
2.3.5. Land Use Change Ecological Risk Contribution Rate
3. Results
3.1. Analysis of the Overall Characteristics of the Land Use Change
3.2. Land Use Change Process Analysis
- 1.
- Scale feature analysis
- 2.
- The spatial map analysis
3.3. Analysis of Land Use Change Influencing Factors
3.4. The LER Spatiotemporal Evolution Analysis
3.5. Analysis of LER Response of Land Use Change
3.5.1. The Relationship between Land Use and LER Conversion
3.5.2. The Impact of Land Use Type Conversion on LER
4. Discussion
4.1. The Relationship between Land Use Change and LER
4.2. Land Use Control Strategy to Reduce Landscape Ecological Risk
- 1.
- The control strategy of the core area
- 2.
- The control strategy of the peripheral linkage area
5. Conclusions
- (1)
- The analysis of land use structure demonstrates that the main types of land use in typical areas of the Yellow River Basin are cultivated land and construction land. The change processes of various land use types are significantly different, showing the characteristics of “many-to-one”, “one-to-many”, and “balanced”. Among them, the scale of forest land first increases and then decreases, the area of wetland and construction land increases sharply, and the areas of grass land, cultivated land, and bare land continue to shrink. In the conversion of different land use types, the exchange of cultivated land and construction land, the transfer of construction land to wetland, and the transfer of bare land to wetland are more prominent, as well as denser in coastal areas and more scattered in inland areas;
- (2)
- The process of land use change is affected by the factors of nature, society, economy, location, and policy. Within the first decade, the natural environment, society, and economy played a leading role in land use changes. In the second decade, the influence of natural factors declined, while the influence of location and policy factors increased significantly;
- (3)
- The results show that the overall LER grades have the characteristics of “high in the southeast, low in the northwest” and “high in the center, low in the surroundings”. The conversion rate of LER increased gradually, and the spatial distribution showed a decreasing trend from southeast to northwest. Most of the ecological risks have shifted from low level to high level. In recent years, the ecological risks of bare land and construction land have increased severely, which should cause concern;
- (4)
- The change of land use type will change the landscape structure and vulnerability index, resulting in the original landscape fragmentation and the increase of LER. The landscape ecological improvement and deterioration coexist in typical areas of the Yellow River Basin, but the general landscape ecological deterioration trend is greater than the improvement trend, and the deterioration degree of the landscape ecological environment is increasing; and
- (5)
- According to the results of the diagnosis of county-scale LER and the need of ecological risk prevention and control, the typical areas of the Yellow River Basin are divided into “two districts and six pieces” LER with the key control area, strict control area, and general control area. It is committed to transform the Yellow River Basin in Shandong Province into “Shandong model for ecological protection of the Yellow River Basin and a core growth pole for high-quality development”.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Influencing Factor | Variable | Data Sources |
---|---|---|
Natural environment foundation | Elevation N1 | The geospatial data cloud (http://www.gscloud.cn) (accessed on 5 March 2021) |
Average annual precipitation N2 | The Resource and Environmental Science Data Center of the Chinese Academy of Sciences (http://www.resdc.cn) (accessed on 5 March 2021) | |
Average annual temperature N3 | ||
Soil organic matter content N4 | Chinese Soil Database of Nanjing Institute of Soil, Chinese Academy of Sciences (http://vdb3.soil.csdb.cn) (accessed on 5 March 2021) | |
Social and economic conditions | Change rate of urbanization S1 | Statistical yearbooks of the nine cities along the Yellow River in 2000, 2021, and 2020. |
Change rate of per capita social consumer goods sales S2 | ||
Change rate of ground-average agricultural machinery S3 | ||
Population change rate S4 | ||
Night light remote sensing S5 | The global night light remote sensing data (https://www.nature.com/sdata) (accessed on 5 March 2021) | |
Traffic and location conditions | Change rate of road density T1 | National Basic Geographic Information Center (http://ngcc.sbsm.gov.cn/) (accessed on 5 March 2021) |
Distance from the town center T2 | ||
Policy and institutional environment | Change rate of ground-average investment in fixed assets P1 | Statistical yearbooks of the nine cities along the Yellow River in 2000, 2021, and 2020. |
Change rate of public financial expenditure P2 |
Influencing Factor | Variable | Index Description |
---|---|---|
Natural environment foundation | Elevation N1 | Terrain condition factors |
Average annual precipitation N2 | Precipitation condition factors | |
Average annual temperature N3 | Weather condition factor | |
Soil organic matter content N4 | Soil condition factors | |
Social and economic conditions | Change rate of urbanization S1 | Development level of urbanization |
Change rate of per capita social consumer goods sales S2 | Resident consumption level | |
Change rate of ground-average agricultural machinery S3 | Level of technological progress | |
Population change rate S4 | Human-factor level | |
Night light remote sensing S5 | Level of economic development | |
Traffic and location conditions | Change rate of road density T1 | Traffic accessibility |
Distance from the town center T2 | Location advantage degree | |
Policy and institutional environment | Change rate of ground-average investment in fixed assets P1 | Investment level |
Change rate of public financial expenditure P2 | Fiscal expenditure level |
Land Use Type | Area/km2 | Change Rate/% | ||||
---|---|---|---|---|---|---|
2000 | 2010 | 2020 | 2000–2010 | 2010–2020 | 2000–2020 | |
Forest land | 0.3585 | 0.3592 | 0.3151 | 0.20 | −12.28 | −12.11 |
Wetland | 0.3786 | 0.4034 | 0.6126 | 6.55 | 51.86 | 61.81 |
Grass land | 0.4819 | 0.4135 | 0.2790 | −14.19 | −32.53 | −42.11 |
Cultivated land | 5.7116 | 5.6426 | 5.5167 | −1.21 | −2.23 | −3.41 |
Bare land | 0.2026 | 0.1534 | 0.0401 | −24.28 | −73.86 | −80.21 |
Construction land | 1.1369 | 1.2986 | 1.5215 | 14.22 | 17.16 | 33.83 |
Period | Type | High Negative Risk Conversion Zone | Relatively High Negative Risk Conversion Zone | Low Negative Risk Conversion Zone | Low Positive Risk Conversion Zone | Relatively High Positive Risk Conversion Zone | High Positive Risk Conversion Zone |
---|---|---|---|---|---|---|---|
2000–2010 | Forest land | 10.35 | 15.59 | 20.04 | 27.86 | 18.24 | 7.92 |
Wetland | 12.85 | 11.90 | 16.32 | 30.05 | 20.66 | 8.22 | |
Grass land | 13.56 | 15.89 | 34.13 | 16.34 | 18.59 | 1.49 | |
Cultivated land | 10.23 | 12.45 | 36.35 | 15.75 | 16.34 | 8.88 | |
Bare land | 7.32 | 6.34 | 19.73 | 20.23 | 28.96 | 17.42 | |
Construction land | 8.47 | 7.40 | 12.93 | 21.56 | 26.45 | 23.19 | |
2010–2020 | Forest land | 12.86 | 18.34 | 30.54 | 18.95 | 16.21 | 3.10 |
Wetland | 11.53 | 10.69 | 13.25 | 24.68 | 33.96 | 5.89 | |
Grass land | 12.84 | 14.63 | 20.34 | 18.35 | 29.43 | 4.41 | |
Cultivated land | 12.31 | 14.56 | 45.47 | 12.96 | 10.21 | 4.49 | |
Bare land | 7.02 | 8.23 | 12.05 | 27.45 | 29.34 | 15.91 | |
Construction land | 1.79 | 8.21 | 12.76 | 25.67 | 26.23 | 25.34 |
Mode | 2000–2010 | 2010–2020 | ||||
---|---|---|---|---|---|---|
The Main Types of Land Use Changes | Index Change | Contribution Proportion (%) | The Main Types of Land Use Changes | Index Change | Contribution Proportion (%) | |
Leading to deterioration of LER | Cultivated land -Construction land | 0.01628 | 39.82 | Bare land -Construction land | 0.01821 | 37.98 |
Wetland -Construction land | 0.01069 | 15.24 | Cultivated land -Construction land | 0.00953 | 23.17 | |
Wetland -Cultivated land | 0.00729 | 12.13 | Wetland -Construction land | 0.01083 | 10.86 | |
Bare land -Construction land | 0.00217 | 11.65 | Grass land-Cultivated land | 0.00603 | 6.39 | |
Forest land -Construction land | 0.00372 | 8.24 | Wetland -Cultivated land | 0.00527 | 2.38 | |
Grass land—Cultivated land | 0.00598 | 5.67 | Forest land-Cultivated land | 0.00386 | 1.28 | |
Total | 0.04613 | 92.75 | Total | 0.05373 | 82.06 | |
Leading to the improvement of LER | Cultivated land -Wetland | −0.01023 | 39.11 | Construction land -Cultivated land | −0.00289 | 36.10 |
Bare land -Wetland | −0.00253 | 18.94 | Bare land -Wetland | −0.00363 | 28.34 | |
Bare land -Cultivated land | −0.00162 | 14.83 | Construction land -Wetland | −0.00928 | 10.04 | |
Grass land-Wetland | −0.00115 | 9.34 | Bare land -Cultivated land | −0.00135 | 8.96 | |
Cultivated land -Grass land | −0.00102 | 5.23 | Cultivated land -Wetland | −0.00296 | 6.48 | |
Cultivated land -Forest land | −0.00154 | 3.72 | Cultivated land -Grass land | −0.00423 | 3.27 | |
Total | −0.01809 | 91.17 | Total | −0.02434 | 93.19 |
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Qu, Y.; Zong, H.; Su, D.; Ping, Z.; Guan, M. Land Use Change and Its Impact on Landscape Ecological Risk in Typical Areas of the Yellow River Basin in China. Int. J. Environ. Res. Public Health 2021, 18, 11301. https://doi.org/10.3390/ijerph182111301
Qu Y, Zong H, Su D, Ping Z, Guan M. Land Use Change and Its Impact on Landscape Ecological Risk in Typical Areas of the Yellow River Basin in China. International Journal of Environmental Research and Public Health. 2021; 18(21):11301. https://doi.org/10.3390/ijerph182111301
Chicago/Turabian StyleQu, Yanbo, Haining Zong, Desheng Su, Zongli Ping, and Mei Guan. 2021. "Land Use Change and Its Impact on Landscape Ecological Risk in Typical Areas of the Yellow River Basin in China" International Journal of Environmental Research and Public Health 18, no. 21: 11301. https://doi.org/10.3390/ijerph182111301
APA StyleQu, Y., Zong, H., Su, D., Ping, Z., & Guan, M. (2021). Land Use Change and Its Impact on Landscape Ecological Risk in Typical Areas of the Yellow River Basin in China. International Journal of Environmental Research and Public Health, 18(21), 11301. https://doi.org/10.3390/ijerph182111301