Multiscenario Simulation and Prediction of Land Use in Huaibei City Based on CLUE-S and PLUS Models
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Source and Processing
2.3. Research Methodology
2.3.1. Markov Model
2.3.2. CLUE-S Model
2.3.3. PLUS Model
2.3.4. Calibration and Validation
3. Results
3.1. Spatial and Temporal Changes in Land Use
3.2. Simulation and Validation
3.2.1. Logistic Regression Analysis
3.2.2. Simulation Results of CLUE-S Model
3.2.3. Simulation Results of PLUS Model
3.3. Comparison of CLUE-S and PLUS Simulation Results
3.4. Multiscenario Simulation of Land Use Change in Huaibei City, 2020–2025
3.4.1. Multiple Scenario Settings
- (1)
- NG scenario: the transfer probability from 2020 to 2025 is presumed to grow naturally according to the evolutionary trend from 2015 to 2020.
- (2)
- FP scenario: Combined with the policies on farmland in China’s LU plan and the 14th Five-Year Plan, it is necessary to keep the quantity of farmland but also to protect the quality of farmland from declining and to implement the strictest farmland protection measures. Therefore, the transfer probability matrix under the FP scenario in this study is to reduce the transfer probability of farmland to other LU types by 50% under the NG scenario, whilst other LU types still maintain the natural development trend.
- (3)
- EP scenario: Farmland is also the main part of the farmland ecosystem. Therefore, the EP scenario is set to reduce the transfer probability of farmland, forestland, grassland, and water to construction land by 30%, 50%, 20%, and 20%, respectively. The transfer probability of forestland to grassland is reduced by 50%, increasing the transfer probability of water and grassland to forestland by 20% and the transfer probability of construction land to forestland by 10% under the NG scenario.
- (4)
- FEP scenario: In China’s 14th Five-Year Plan, it is mentioned that we need to implement sustainable development and strengthen ecological protection and restoration. Therefore, a more reasonable dual protection scenario is set up by integrating the FP scenario and EP scenario. Under the transfer probability based on natural growth, the transfer probability of farmland to other LU types (except forestland) is reduced by 50%. Forestland, grassland, and water to construction land is reduced by 50%, 20%, and 20%, respectively. Forestland to grassland is reduced by 50%, water and grassland to forestland is increased by 20%, and construction land to forestland is increased by 10%. The LU demand for each scenario was calculated based on the adjusted transfer probabilities of each LU type, and Table 5 shows the LU demand in 2025 under the four scenarios.
3.4.2. Multiscenario Simulation under PLUS Model
4. Discussion
5. Conclusions
- All of the selected driving factors have good explanatory power for LU types, and the ROC values for each class are greater than 0.8. The farmland in the study area is mainly affected by POP and DEM and shows a negative correlation with both. The forestland is mainly influenced by Town_d and River_d, while the grassland is mainly affected by DEM and MAP. The water area is most affected by DEM, and the construction land is mainly influenced by social and economic factors such as POP and GDP.
- The kappa coefficients of the CLUE-S model and PLUS model simulation results were 0.727 and 0.759, and their FOM values were 0.109 and 0.201. The PLUS model has better accuracy than the CLUE-S model, especially in simulating the two LU types of forestland and water in the study area. Moreover, the distribution of spatial location and area of each LU type in the PLUS simulation result map and the status map is more similar.
- Among the four scenarios, the area of construction land decreases with the increase in the area of farmland and forestland under scenario FEP. This shows that curbing the over-expansion of construction land and controlling the total areas of construction land is conducive to the protection of farmland and forestland, and safeguarding food security and ecological safety. Urban sustainability is stronger compared to scenario NG.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Type | Original Resolution | Data | Data Sources |
---|---|---|---|
Land Use Data | 30 m | 1985, 1995, 2005 | National Earth System Science Data Center (http://nnu.geodata.cn, accessed on 10 June 2022) |
2015 | Geospatial Data Cloud (http://www.gscloud.cn, accessed on 27 June 2022) | ||
2020 | Resource and Environment Sciences and Data Center (https://www.resdc.cn/Default.aspx, accessed on 11 June 2022) | ||
Natural Environment Data | 1 km | MAT | National Earth System Science Data Center (http://nnu.geodata.cn, accessed on 11 June 2022) |
MAP | |||
100 m | Soil property data | 2010~2011 Soil Series Survey | |
90 m | DEM, slope, aspect | Geospatial Data Cloud (http://www.gscloud.cn, accessed on 27 June 2022) | |
Socioeconomic Data | 1 km | GDP | Resource and Environment Sciences and Data Center (https://www.resdc.cn/Default.aspx, accessed on 11 June 2022) |
POP | |||
Railway_d, Freeway_d, Road_d, River_d, Town_d | Open Street Map (https://www.openstreetmap.org/, accessed on 18 July 2022) | ||
Statistics Data | Huaibei City Statistical Yearbook | (http://tj.huaibei.gov.cn/ztzl/tjnj/index.html, accessed on 6 September 2022) |
Driving Factors | Farmland | Forestland | Grassland | Water | Construction Land | |||||
---|---|---|---|---|---|---|---|---|---|---|
L | AL | L | AL | L | AL | L | AL | L | AL | |
DEM | −10.411 | −11.300 | 3.994 | 4.319 | 6.191 | 6.591 | −158.651 | −169.476 | −5.153 | −6.243 |
Aspect | - | - | 0.358 | 0.318 | - | - | −0.515 | −0.511 | 0.241 | 0.247 |
Slope | −4.001 | −3.468 | 0.566 | 0.552 | 4.451 | 4.349 | 6.668 | 3.783 | −3.731 | −4.988 |
Railway_d | 1.782 | 1.947 | −3.169 | −3.276 | −0.931 | −0.691 | 1.396 | 2.227 | −0.411 | −0.397 |
Freeway_d | 0.322 | 0.229 | 4.009 | 4.093 | −3.595 | −2.777 | −3.934 | −3.849 | - | 0.220 |
Road_d | 0.482 | 0.627 | - | - | 1.604 | 1.469 | - | - | −0.674 | −0.752 |
River_d | −4.050 | −4.760 | −10.103 | −10.074 | −5.022 | −5.220 | 3.949 | 2.718 | 3.564 | 3.909 |
Town_d | 5.817 | 6.534 | 11.715 | 11.696 | −0.737 | - | −8.299 | −7.439 | −5.192 | −5.443 |
GDP | 2.738 | 7.631 | - | - | 22.848 | - | −3.440 | −2.660 | −11.355 | −16.915 |
POP | −6.178 | −11.918 | - | - | −23.524 | - | - | - | 15.435 | 21.5974 |
MAP | −6.535 | −7.919 | −10.320 | −10.049 | −6.394 | −6.035 | 1.578 | - | 5.935 | 6.714 |
MAT | −1.113 | −1.236 | −6.509 | −6.322 | 0.701 | 0.893 | −3.771 | −3.911 | −0.967 | −1.140 |
Soil_SOM | −0.746 | −0.446 | 2.986 | 3.190 | 2.843 | 2.796 | 0.542 | - | - | - |
Soil_TK | 0.857 | 0.875 | −1.395 | −1.418 | −1.219 | −1.151 | −0.491 | −0.531 | 0.135 | −0.168 |
Soil_TN | - | −0.142 | 0.509 | 0.371 | 0.867 | 0.977 | −0.395 | −0.441 | −0.210 | - |
Soil_TP | 0.199 | - | 0.496 | 0.523 | −0.748 | −0.598 | −0.969 | −0.823 | 0.125 | 0.278 |
AutoValue | - | 3.302 | - | −1.852 | - | −1.029 | - | −3.206 | - | −2.555 |
Constants | 3.798 | 2.213 | 3.338 | 4.279 | 1.218 | 0.588 | 10.146 | 13.749 | −2.047 | −0.517 |
ROC | 0.794 | 0.856 | 0.933 | 0.939 | 0.931 | 0.934 | 0.906 | 0.935 | 0.772 | 0.829 |
Area | Farmland | Forestland | Grassland | Water | Construction Land |
---|---|---|---|---|---|
CLUE-S simulation map | 42,302.61 | 1217.70 | 8398.89 | 3182.76 | 17,550.27 |
PLUS simulation map | 42,258.87 | 1220.13 | 8425.98 | 3208.59 | 17,538.66 |
Status map | 42,258.87 | 1220.13 | 8425.98 | 3208.59 | 17,538.66 |
User’s Accuracy | Farmland | Forestland | Grassland | Water | Construction Land |
---|---|---|---|---|---|
CLUE-S | 0.855 | 0.354 | 0.762 | 0.416 | 0.709 |
PLUS | 0.867 | 0.485 | 0.796 | 0.611 | 0.728 |
Scenario Analysis | Farmland | Forestland | Grassland | Water | Construction Land |
---|---|---|---|---|---|
NG | 40,575.06 | 918.63 | 9126.72 | 4130.46 | 17,901.36 |
FP | 44,128.44 | 817.47 | 8391.06 | 3525.93 | 15,789.33 |
EP | 41,801.85 | 1306.35 | 8981.10 | 4181.40 | 16,381.53 |
FEP | 43,986.78 | 1306.35 | 8245.44 | 3576.96 | 15,536.70 |
Year | Scenario Analysis | Farmland | Forestland | Grassland | Water | Construction Land |
---|---|---|---|---|---|---|
2020 | 42,258.87 | 1220.13 | 8425.98 | 3208.59 | 17,538.66 | |
2025 | NG | 40,575.06 | 918.63 | 9126.72 | 4130.46 | 17,901.36 |
FP | 44,128.44 | 817.47 | 8391.06 | 3525.93 | 15,789.33 | |
EP | 41,801.85 | 1306.35 | 8981.10 | 4181.40 | 16,381.53 | |
FEP | 43,986.78 | 1306.35 | 8245.44 | 3576.96 | 15,536.70 | |
2020–2025 | NG | −1683.81 | −301.50 | 700.74 | 921.870 | 362.70 |
FP | 1869.57 | −402.66 | −34.92 | 317.34 | −1749.33 | |
EP | −457.02 | 86.22 | 555.12 | 972.81 | −1157.13 | |
FEP | 1727.91 | 86.22 | −180.54 | 368.37 | −2001.96 |
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Yu, Z.; Zhao, M.; Gao, Y.; Wang, T.; Zhao, Z.; Wang, S. Multiscenario Simulation and Prediction of Land Use in Huaibei City Based on CLUE-S and PLUS Models. Appl. Sci. 2023, 13, 7142. https://doi.org/10.3390/app13127142
Yu Z, Zhao M, Gao Y, Wang T, Zhao Z, Wang S. Multiscenario Simulation and Prediction of Land Use in Huaibei City Based on CLUE-S and PLUS Models. Applied Sciences. 2023; 13(12):7142. https://doi.org/10.3390/app13127142
Chicago/Turabian StyleYu, Zhilin, Mingsong Zhao, Yingfeng Gao, Tao Wang, Zhidong Zhao, and Shihang Wang. 2023. "Multiscenario Simulation and Prediction of Land Use in Huaibei City Based on CLUE-S and PLUS Models" Applied Sciences 13, no. 12: 7142. https://doi.org/10.3390/app13127142
APA StyleYu, Z., Zhao, M., Gao, Y., Wang, T., Zhao, Z., & Wang, S. (2023). Multiscenario Simulation and Prediction of Land Use in Huaibei City Based on CLUE-S and PLUS Models. Applied Sciences, 13(12), 7142. https://doi.org/10.3390/app13127142