Driving the Evolution of Land Use Patterns: The Impact of Urban Agglomeration Construction Land in the Yangtze River Delta, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Overview of the Study Area
2.2. Data Sources and Processing
2.3. Research Methods
- (1)
- Degree of Land Use Dynamics
- (2)
- Land Use Transition Matrix
- (3)
- The Landscape Pattern (LSP) Index
- (4)
- The Standard Deviation Ellipse (SDE)
- (5)
- The Expansion Scale and Intensity of Urban CTL Based on Indicators
- (6)
- Time-Driven Factor Analysis—Multivariable Linear Regression (MLR)
- (7)
- Analysis of Spatial Driving Factors—GeoDetector (GD)
3. Results and Analysis
3.1. Analysis of Spatiotemporal Evolution of Land Use
3.1.1. Changes in Spatial Scale
3.1.2. Degree of Dynamic Change
3.1.3. TM Analysis
3.2. Analysis of LSP Spatiotemporal Evolution
3.2.1. Spatiotemporal Distribution Patterns of Landscape Type Transitions
3.2.2. Changes in Overall Landscape Level
- (1)
- Landscape Fragmentation Analysis
- (2)
- Landscape Heterogeneity Analysis
- (3)
- Landscape Aggregation Analysis
- (4)
- Landscape Diversity Analysis
3.3. Analysis of Evolution in Urban CTL Expansion
3.3.1. Direction of Urban Construction Space Expansion
- (1)
- Results of SDE Analysis
- (2)
- Subdivision of Urban CTL Expansion Directions Based on Equal Sector Analysis
3.3.2. Scale and Intensity of Urban CTL Expansion
3.4. Analysis of Driving Factors of CTL Evolution in the YRDUR
3.4.1. Regional Division of Urban CTL Expansion Types
3.4.2. Analysis of Spatiotemporal Driving Factors in CTL Expansion
- (1)
- Analysis of Temporal Factor-Driven Results
- (2)
- Analysis of Spatial Factor-Driven Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Index Type | Index Name | Calculation Formula | Ecological Explanation | Index Level | Unit |
---|---|---|---|---|---|
Scale Index | Number of Patches (NP) | In the formula, represents the number of patches. | At the class level, NP corresponds to the total count of patches of a certain type in the landscape, while at the landscape level, it represents the total number of patches present. A higher NP indicates a greater degree of fragmentation. | Class/Landscape | Count |
Density Index | Patch Density (PD) | In the formula, represents the total number of patches, and represents the total area of the landscape type. | PD reflects the density characteristics of landscape patches, indicating landscape heterogeneity and fragmentation. A higher PD value signifies an increased level of landscape fragmentation. | Class/Landscape | Count/100 ha |
Edge Density (ED) | In the formula, represents the total length of all patch boundaries, and represents the total area of the landscape type. with no upper limit. | ED characterizes the degree of landscape patches being divided by edges, indicating the complexity of patch edges and the degree of landscape fragmentation. | Class/Landscape | m/ha | |
Area Index | Largest Patch Index (LPI) | In the formula, represents the area of the th patch, and represents the total area of the landscape type. | LPI represents the proportion of the largest patch in a specific patch type to the total area of the landscape. The magnitude of the LPI value determines ecological characteristics, such as dominant species and internal species abundance in the landscape. A lower LPI value indicates greater landscape heterogeneity. | Class/Landscape | % |
Mean Patch Size (MPS) | In the formula, represents the total area of the landscape type, and represents the total number of patches. | At the patch level, the MPS is calculated by dividing the total area of a specific patch type by the number of patches of that type. At the landscape level, it is determined by dividing the total landscape area by the total count of all patch types. A lower MPS value indicates a greater degree of landscape fragmentation. | Class/Landscape | ha | |
Percent of Landscape (PLAND) | In the formula, represents the area of the th patch, and represents the total area of the landscape type. | The PLAND value represents the percentage of the total area occupied by a specific patch type in relation to the total landscape area. A higher PLAND value for a patch type signifies greater dominance within the landscape. | Class/Landscape | % | |
Shape Index | Landscape Shape Index (LSI) | In the formula, represents the total length of all patch boundaries, and represents the total area of the landscape type. | LSI reflects the overall shape complexity of the landscape. A higher LSI value signifies that the landscape is more irregular or less square-like, which indicates a more intricate composition. | Class/Landscape | - |
Mean Shape Index (MSI) | In the formula, is the total number of patch types, is the th patch, and represents the total length of all patch boundaries. | The MSI value indicates the complexity of patch shapes. A higher MSI value signifies greater complexity in the shapes of the patches. | Class/Landscape | - | |
Aggregation Index | Aggregation Index (AI) | In the formula, represents the number of connections between patches of the th landscape type; represents the maximum number of similar adjacent patches for the th landscape type. | AI is calculated based on the extent of the shared boundaries among pixels of the same patch type. When there are no shared boundaries among all pixels of a specific type, then that type’s aggregation level is considered to be at its lowest. | Class/Landscape | % |
Interspersion and Juxtaposition Index (IJI) | In the formula, is the total number of patch types, is the edge length of randomly selected adjacent grids belonging to types and . calculates the overall distribution and juxtaposition of each patch type at the landscape level. | IJI effectively illustrates the distribution patterns of ecosystems that are heavily constrained by specific natural factors. A lower IJI value suggests that a patch type is only neighboring a limited number of other types, while an IJI of 100 signifies that the edges between patches are of equal length, indicating a uniform probability of adjacency among the patches. | Class/Landscape | % | |
Contagion Index (CONTAG) | In the formula, m is the total number of patch types; is the probability that two randomly selected adjacent grids belong to types and . The aggregation index usually measures the aggregation degree of the same type of patches, but its value is also affected by the total number of types and their evenness. | CONTAG measures how clustered or dispersed various patch types are in a landscape. A greater CONTAG value indicates that a dominant patch type in the landscape exhibits strong connectivity and aggregation. | Landscape | % | |
Diversity Index | Shannon’s Diversity Index (SHDI) | In the formula, is the total number of patch types, is the probability of occurrence of type patches. with no upper limit. | SHDI reflects landscape heterogeneity and is particularly sensitive to the uneven distribution of various patch types in the landscape. A higher SHDI value indicates a greater variety of land use types. | Landscape | - |
Shannon’s Evenness Index (SHEI) | In the formula, is the total number of patch types, is the probability of occurrence of type patches. | SHEI is calculated by taking the Shannon diversity index and dividing it by the maximum possible diversity for the specific landscape abundance, which occurs when all patch types are evenly distributed. An SHEI value of 0 signifies that the landscape consists of only one type of patch, indicating a lack of diversity, while an SHEI value of 1 represents a uniform distribution of all patch types, denoting the highest level of diversity. | Landscape | - |
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Data Category | Data Name | Data Source and Processing | Data Type |
---|---|---|---|
Land Use Data | 2000 Land Use Data | Chinese Academy of Sciences Resource and Environment Data Center (www.resdc.cn) | Raster |
2005 Land Use Data | Chinese Academy of Sciences Resource and Environment Data Center (www.resdc.cn) | Raster | |
2010 Land Use Data | Chinese Academy of Sciences Resource and Environment Data Center (www.resdc.cn) | Raster | |
2015 Land Use Data | Chinese Academy of Sciences Resource and Environment Data Center (www.resdc.cn) | Raster | |
2020 Land Use Data | Chinese Academy of Sciences Resource and Environment Data Center (www.resdc.cn) | Raster | |
Geospatial Data | Administrative Divisions of YRD | National Geographic Information Resource Catalog Service System | Vector |
Digital Elevation Model (DEM) Data | Geospatial Data Cloud | Raster | |
Slope Data | Geospatial Data Cloud | Raster | |
Normalized Difference Vegetation Index (NDVI) | Landsat8 Remote Sensing Image Library | Raster | |
Basic Planning Data | Population, GDP Data | Statistical Yearbooks | Text (Vectorized) |
Other Economic Panel Data | Planning Documents, Statistical Bulletins, etc. | Text (Vectorized) | |
YRD Regional Planning and Provincial and Municipal Master Planning Texts | Natural Resource Departments, Government Websites | Text (Vectorized) | |
Water Bodies | National Geographic Information Resource Catalog Service System | Vector | |
Transportation Facilities Data | Obtained via Python Web Scraping | Vector | |
Spatial Distribution of Nature Reserves, Scenic Spots, etc. | Obtained via Python Web Scraping | Vector | |
POI Data | Obtained via Python Web Scraping | Vector |
Category | Temporal Driving Factors | Interpretation Variable Code |
---|---|---|
Technological Development | Percentage of Green Inventions in Annual Patent Applications in the Region (%) | X1 |
Percentage of Green Inventions in Annual Patents Granted in the Region (%) | X2 | |
Socioeconomic Indicators | Population Density (people/km2) | X3 |
Local Government Fiscal Expenditure (100 million yuan) | X4 | |
Land Area Used in the Current Year (km2) | X5 | |
Number of Large-Scale Industrial Enterprises | X6 | |
Total Retail Sales of Consumer Goods (100 million yuan) | X7 | |
Industrial Structure | Proportion of Secondary Industry Added Value to GDP (%) | X8 |
Proportion of Tertiary Industry Added Value to GDP (%) | X9 | |
Proportion of Employment in Secondary Industry (%) | X10 | |
Proportion of Employment in Tertiary Industry (%) | X11 | |
Environmental Humanities | Per Capita Park Green Area (m2) | X12 |
Green Coverage Rate of Built-up Areas (%) | X13 | |
Forest Coverage Rate (%) | X14 | |
Transportation Facilities | Per Capita Road Area (m2) | X15 |
Highway Passenger Traffic (10,000 People) | X16 | |
Highway Freight Traffic (10,000 Tons) | X17 |
Category | Spatial Driving Factors | Interpretation Variable Code |
---|---|---|
Location Space | Distance from Main Railway (km) | X18 |
Distance from Main Highway (km) | X19 | |
Distance from Main River (km) | X20 | |
Geographic Space | Ruggedness (°) | X21 |
Slope (°) | X22 | |
Elevation (m) | X23 |
Type | 2000 | 2005 | 2010 | 2015 | 2020 | |||||
---|---|---|---|---|---|---|---|---|---|---|
Area (km2) | Proportion (%) | Area (km2) | Proportion (%) | Area (km2) | Proportion (%) | Area (km2) | Proportion (%) | Area (km2) | Proportion (%) | |
CVL | 1.13 × 105 | 50.87 | 1.09 × 105 | 49.27 | 1.04 × 105 | 46.59 | 1.02 × 105 | 45.57 | 1.00 × 105 | 45.08 |
FL | 6.55 × 104 | 29.51 | 6.53 × 104 | 29.42 | 6.49 × 104 | 29.15 | 6.48 × 104 | 29.1 | 6.46 × 104 | 28.98 |
GL | 8.15 × 103 | 3.67 | 8.05 × 103 | 3.63 | 7.61 × 103 | 3.42 | 7.53 × 103 | 3.38 | 7.94 × 103 | 3.57 |
WB | 1.87 × 104 | 8.44 | 1.91 × 104 | 8.59 | 2.07 × 104 | 9.3 | 2.05 × 104 | 9.18 | 1.97 × 104 | 8.84 |
CTL | 1.65 × 104 | 7.5 | 2.00 × 104 | 9.07 | 2.55 × 104 | 11.45 | 2.82 × 104 | 12.67 | 2.99 × 104 | 13.38 |
UL | 4.14 × 101 | 0.02 | 4.26 × 101 | 0.02 | 2.33 × 102 | 0.11 | 2.06 × 102 | 0.09 | 3.46 × 102 | 0.16 |
Land Use Types | Land Use Dynamic Degree | ||||
---|---|---|---|---|---|
2000–2005 | 2005–2010 | 2010–2015 | 2015–2020 | 2000–2020 | |
CVL | −0.632 | −1.012 | −0.439 | −0.218 | −0.553 |
FL | −0.057 | −0.109 | −0.035 | −0.084 | −0.071 |
GL | −0.266 | −1.075 | −0.209 | 1.083 | −0.130 |
WB | 0.371 | 1.725 | −0.247 | −0.752 | 0.258 |
CTL | 4.203 | 5.333 | 2.131 | 1.131 | 3.960 |
UL | 0.556 | 90.063 | −2.526 | 13.803 | 36.762 |
Comprehensive Dynamic Degree | 0.347 | 0.610 | 0.246 | 0.193 | 0.316 |
2000 | 2020 | |||||
---|---|---|---|---|---|---|
CVL | FL | GL | WB | CTL | UL | |
CVL | 97,663.48 km2 | 850.88 km2 | 139.88 km2 | 1490.72 km2 | 12,743 km2 | 28.28 km2 |
FL | 821.92 km2 | 63,424.92 km2 | 223.92 km2 | 114.12 km2 | 846.2 km2 | 32.32 km2 |
GL | 245.72 km2 | 183.16 km2 | 7081.28 km2 | 463.68 km2 | 173.52 km2 | 4.64 km2 |
WB | 754.8 km2 | 42.40 km2 | 327.64 km2 | 16,611.60 km2 | 731.12 km2 | 224.64 km2 |
CTL | 844.12 km2 | 46.48 km2 | 20.48 km2 | 622.08 km2 | 15,068.8 km2 | 7.44 km2 |
UL | 0.72 km2 | 2.92 km2 | 0.12 km2 | 1.48 km2 | 5.16 km2 | 30.52 km2 |
2000 | 2020 | |||||
---|---|---|---|---|---|---|
CVL | FL | GL | WB | CTL | UL | |
CVL | 86.49% | 0.75% | 0.12% | 1.32% | 11.29% | 0.03% |
FL | 1.26% | 96.89% | 0.34% | 0.17% | 1.29% | 0.05% |
GL | 3.01% | 2.25% | 86.87% | 5.69% | 2.13% | 0.06% |
WB | 4.04% | 0.23% | 1.75% | 88.87% | 3.91% | 1.20% |
CTL | 5.08% | 0.28% | 0.12% | 3.75% | 90.72% | 0.04% |
UL | 1.76% | 7.14% | 0.29% | 3.62% | 12.61% | 74.58% |
Year | Landscape Fragmentation Index | Landscape Heterogeneity Index | Landscape Aggregation Index | Landscape Diversity Index | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|
NP /Count | PD /Count/100 ha | ED/ m/ha | MPS /ha | LPI /% | LSI /- | MSI /- | AI /% | CONTAG/% | SHDI /- | SHEI /- | |
2000 | 137,432 | 0.619 | 17.25 | 161.49 | 18.43 | 208.24 | 1.24 | 82.60 | 49.35 | 1.23 | 0.686 |
2005 | 135,766 | 0.611 | 17.57 | 163.47 | 18.14 | 211.98 | 1.25 | 82.29 | 48.09 | 1.26 | 0.702 |
2010 | 134,279 | 0.603 | 18.08 | 165.95 | 17.98 | 218.39 | 1.26 | 81.78 | 46.17 | 1.31 | 0.729 |
2015 | 133,538 | 0.599 | 18.07 | 166.86 | 16.80 | 218.27 | 1.27 | 81.79 | 45.73 | 1.32 | 0.736 |
2020 | 132,784 | 0.595 | 17.98 | 168.09 | 17.90 | 217.59 | 1.27 | 81.87 | 45.25 | 1.33 | 0.744 |
Land Use Types | Year | Landscape Fragmentation Index | Landscape Heterogeneity Index | Landscape Aggregation Index | |||||
---|---|---|---|---|---|---|---|---|---|
NP /Count | PD /Count/100 ha | ED/ m/ha | MPS /ha | LPI /% | LSI /- | AI /% | CONTAG/% | ||
CVL | 2000 | 21,482 | 50.88 | 14.96 | 525.67 | 14.21 | 248.36 | 85.27 | 70.70 |
2005 | 22,248 | 49.28 | 15.11 | 491.58 | 13.32 | 254.88 | 84.63 | 70.62 | |
2010 | 23,408 | 46.58 | 15.38 | 443.46 | 12.67 | 267.18 | 83.47 | 70.34 | |
2015 | 23,804 | 45.57 | 15.29 | 426.59 | 12.43 | 268.52 | 83.20 | 70.21 | |
2020 | 23,656 | 45.01 | 15.03 | 424.66 | 12.31 | 265.87 | 83.27 | 70.56 | |
FL | 2000 | 10,042 | 29.51 | 7.47 | 652.12 | 18.43 | 165.65 | 87.12 | 48.32 |
2005 | 10,043 | 29.42 | 7.47 | 650.24 | 18.14 | 165.83 | 87.09 | 51.05 | |
2010 | 10,202 | 29.15 | 7.54 | 636.70 | 17.98 | 168.53 | 86.84 | 53.96 | |
2015 | 10,208 | 29.11 | 7.48 | 635.33 | 16.80 | 167.38 | 86.92 | 55.059 | |
2020 | 9938 | 28.98 | 7.54 | 650.74 | 17.90 | 169.12 | 86.76 | 56.21 | |
GL | 2000 | 9969 | 3.68 | 2.06 | 81.82 | 0.12 | 129.78 | 71.39 | 59.88 |
2005 | 9644 | 3.63 | 2.04 | 83.53 | 0.11 | 128.98 | 71.40 | 60.44 | |
2010 | 9836 | 3.42 | 2.01 | 77.46 | 0.11 | 131.21 | 70.09 | 60.25 | |
2015 | 9845 | 3.38 | 1.99 | 76.59 | 0.11 | 130.35 | 70.12 | 60.63 | |
2020 | 10,031 | 3.57 | 2.06 | 79.46 | 0.11 | 132.18 | 70.54 | 63.26 | |
WB | 2000 | 17,711 | 8.43 | 2.79 | 105.68 | 2.13 | 117.32 | 82.96 | 51.21 |
2005 | 18,121 | 8.59 | 2.92 | 105.23 | 2.07 | 121.49 | 82.52 | 52.95 | |
2010 | 18,777 | 9.30 | 3.04 | 110.37 | 2.09 | 122.11 | 83.15 | 55.82 | |
2015 | 19,289 | 9.19 | 3.08 | 106.18 | 2.05 | 124.19 | 82.75 | 56.42 | |
2020 | 19,365 | 8.88 | 3.07 | 102.31 | 1.86 | 125.46 | 82.29 | 59.29 | |
CTL | 2000 | 78,010 | 7.48 | 7.20 | 21.29 | 0.26 | 310.51 | 51.89 | 22.37 |
2005 | 75,483 | 9.06 | 7.58 | 26.64 | 0.40 | 297.20 | 58.14 | 25.79 | |
2010 | 71,611 | 11.44 | 8.12 | 35.60 | 0.62 | 284.20 | 64.47 | 29.79 | |
2015 | 69,944 | 12.66 | 8.23 | 40.32 | 0.94 | 274.10 | 67.42 | 31.40 | |
2020 | 69,269 | 13.39 | 8.17 | 43.15 | 1.14 | 265.45 | 69.37 | 34.42 | |
UL | 2000 | 218 | 0.02 | 0.02 | 18.77 | 0.00 | 17.45 | 46.87 | 68.52 |
2005 | 227 | 0.02 | 0.02 | 18.45 | 0.00 | 17.63 | 46.72 | 68.38 | |
2010 | 445 | 0.11 | 0.06 | 52.69 | 0.02 | 22.35 | 71.58 | 88.79 | |
2015 | 448 | 0.09 | 0.06 | 45.54 | 0.02 | 22.66 | 69.20 | 86.22 | |
2020 | 525 | 0.17 | 0.07 | 74.22 | 0.04 | 22.92 | 77.50 | 89.35 |
Sector | Time Period | Expansion Area (km2) | Annual Average Expansion Area (km2/Year) | Annual Average Expansion Intensity (%) | Expansion Intensity Classification |
---|---|---|---|---|---|
NE | 2000–2005 | 179.08 | 35.82 | 0.18 | Medium-Intensity Expansion |
2005–2010 | 540.75 | 108.15 | 0.54 | ||
2010–2015 | 218.73 | 43.75 | 0.22 | ||
2015–2020 | 21.37 | 4.27 | 0.02 | ||
2000–2020 | 959.92 | 48.00 | 0.24 | ||
NNE | 2000–2005 | 265.06 | 53.01 | 0.47 | High-Intensity Expansion |
2005–2010 | 712.45 | 142.49 | 1.27 | ||
2010–2015 | 228.41 | 45.68 | 0.41 | ||
2015–2020 | 47.46 | 9.49 | 0.09 | ||
2000–2020 | 1253.37 | 62.67 | 0.56 | ||
EEN | 2000–2005 | 358.40 | 71.68 | 0.62 | High-Intensity Expansion |
2005–2010 | 803.90 | 160.78 | 1.40 | ||
2010–2015 | 185.42 | 37.08 | 0.32 | ||
2015–2020 | 161.07 | 32.21 | 0.28 | ||
2000–2020 | 1508.79 | 75.44 | 0.66 | ||
EN | 2000–2005 | 476.66 | 95.33 | 1.01 | High-Intensity Expansion |
2005–2010 | 585.74 | 117.15 | 1.24 | ||
2010–2015 | 259.85 | 51.97 | 0.55 | ||
2015–2020 | 318.99 | 63.80 | 0.68 | ||
2000–2020 | 1641.24 | 82.06 | 0.87 | ||
ES | 2000–2005 | 445.22 | 89.04 | 0.91 | High-Intensity Expansion |
2005–2010 | 170.94 | 34.19 | 0.35 | ||
2010–2015 | 243.09 | 48.62 | 0.50 | ||
2015–2020 | 238.02 | 47.60 | 0.49 | ||
2000–2020 | 1097.27 | 54.86 | 0.56 | ||
EES | 2000–2005 | 584.63 | 116.93 | 0.66 | High-Intensity Expansion |
2005–2010 | 240.44 | 48.09 | 0.27 | ||
2010–2015 | 285.17 | 57.03 | 0.32 | ||
2015–2020 | 232.61 | 46.52 | 0.26 | ||
2000–2020 | 1342.85 | 67.14 | 0.38 | ||
SSE | 2000–2005 | 637.95 | 127.59 | 0.51 | Medium-Intensity Expansion |
2005–2010 | 163.89 | 32.78 | 0.13 | ||
2010–2015 | 326.51 | 65.30 | 0.26 | ||
2015–2020 | 340.01 | 68.00 | 0.27 | ||
2000–2020 | 1468.36 | 73.42 | 0.29 | ||
SE | 2000–2005 | 164.41 | 32.88 | 0.20 | Low-Intensity Expansion |
2005–2010 | 129.78 | 25.96 | 0.16 | ||
2010–2015 | 86.00 | 17.20 | 0.10 | ||
2015–2020 | 135.04 | 27.01 | 0.16 | ||
2000–2020 | 515.23 | 25.76 | 0.15 | ||
SW | 2000–2005 | 8.09 | 1.62 | 0.02 | Low-Intensity Expansion |
2005–2010 | 21.68 | 4.34 | 0.06 | ||
2010–2015 | 4.04 | 0.81 | 0.01 | ||
2015–2020 | 20.24 | 4.05 | 0.05 | ||
2000–2020 | 54.05 | 2.70 | 0.04 | ||
SSW | 2000–2005 | 3.78 | 0.76 | 0.02 | Low-Intensity Expansion |
2005–2010 | 24.90 | 4.98 | 0.14 | ||
2010–2015 | 17.88 | 3.58 | 0.10 | ||
2015–2020 | −9.35 | −1.87 | −0.05 | ||
2000–2020 | 37.21 | 1.86 | 0.05 | ||
WWS | 2000–2005 | 8.74 | 1.75 | 0.01 | Low-Intensity Expansion |
2005–2010 | 61.48 | 12.30 | 0.10 | ||
2010–2015 | 26.33 | 5.27 | 0.04 | ||
2015–2020 | 3.90 | 0.78 | 0.01 | ||
2000–2020 | 100.45 | 5.02 | 0.04 | ||
WS | 2000–2005 | 49.61 | 9.92 | 0.05 | Low-Intensity Expansion |
2005–2010 | 269.48 | 53.90 | 0.26 | ||
2010–2015 | 197.19 | 39.44 | 0.19 | ||
2015–2020 | −72.08 | −14.42 | −0.07 | ||
2000–2020 | 444.21 | 22.21 | 0.11 | ||
WN | 2000–2005 | 92.25 | 18.45 | 0.14 | Medium-Intensity Expansion |
2005–2010 | 330.77 | 66.15 | 0.51 | ||
2010–2015 | 285.77 | 57.15 | 0.44 | ||
2015–2020 | 116.14 | 23.23 | 0.18 | ||
2000–2020 | 824.93 | 41.25 | 0.32 | ||
WWN | 2000–2005 | 15.93 | 3.19 | 0.02 | Low-Intensity Expansion |
2005–2010 | 281.24 | 56.25 | 0.35 | ||
2010–2015 | 130.71 | 26.14 | 0.17 | ||
2015–2020 | −15.72 | −3.14 | −0.02 | ||
2000–2020 | 412.16 | 20.61 | 0.13 | ||
NNW | 2000–2005 | 115.09 | 23.02 | 0.19 | Medium-Intensity Expansion |
2005–2010 | 425.97 | 85.19 | 0.70 | ||
2010–2015 | 130.97 | 26.19 | 0.21 | ||
2015–2020 | 197.90 | 39.58 | 0.32 | ||
2000–2020 | 869.94 | 43.50 | 0.36 | ||
NW | 2000–2005 | 92.38 | 18.48 | 0.11 | Medium-Intensity Expansion |
2005–2010 | 613.01 | 122.60 | 0.70 | ||
2010–2015 | 84.10 | 16.82 | 0.10 | ||
2015–2020 | −44.69 | −8.94 | −0.05 | ||
2000–2020 | 744.80 | 37.24 | 0.21 |
Year | Type | Factor Type | p Value | Correlation Coefficient | Regression Model | Driving Type |
---|---|---|---|---|---|---|
2000 | Low-Intensity Expansion Area | Technological Development | 0.000 | 0.952 *** | Y = 171.497 + 18.746 × 1 | Single Factor |
Medium-Intensity Expansion Area | Industrial Structure | 0.000 | −0.900 *** | Y = 4541.619 − 74.298 × 8 | Single Factor | |
High-Intensity Expansion Area | Socioeconomic, Environmental Humanities | 0.001 | 0.897 **/−0.564 * | Y = 410.722 + 0.134 × 6 − 474.532 × 14 | Dual Factors | |
2010 | Low-Intensity Expansion Area | Socioeconomic | 0.003 | 0.908 **/0.773 * | Y= −240.819 + 52.685 × 5 + 4.570 × 4 | Dual Factors |
Medium-Intensity Expansion Area | Technological Development, Socio-economic, Industrial Structure | 0.000 | 0.793 ***/−0.773 ***/0.472 * | Y = 1905.551 + 12.890 × 1 − 41.705 × 10 − 25.539 × 5 | Multiple Factors | |
High-Intensity Expansion Area | Socioeconomic, Environmental Humanities | 0.000 | 0.919 ***/−0.577 * | Y = 301.941 + 0.121 × 6 − 857.297 × 14 | Dual Factors | |
2020 | Low-Intensity Expansion Area | Industrial Structure, Environmental Humanities, Transportation Facilities | 0.000 | 0.988 ***/0.462 */0.512 * | Y= −2537.241 + 0.099 × 17 + 40.429 × 8 + 19.952 × 12 | Multiple Factors |
Medium-Intensity Expansion Area | Technological Development | 0.003 | 0.769 *** | Y= −560.616 + 169.980 × 1 | Single Factor | |
High-Intensity Expansion Area | Socioeconomic, Environmental Humanities | 0.000 | 0.896 ***/0.884 ***/−0.598 * | Y = 376.045 + 0.095 × 7 + 0.114 × 6 − 544.779 × 14 | Multiple Factors |
Year | Region Type | Dominant Driving Factor | Correlation Coefficient | Constant | Unstandardized Coefficient | Standardized Coefficient | Adjusted R2 | D-W Test |
---|---|---|---|---|---|---|---|---|
2000 | Low-Intensity Expansion Area | Percentage of Green Inventions in Total Annual Regional Invention Applications | 0.952 *** | 171.497 | 18.746 | 0.982 | 0.957 | 2.734 |
Medium-Intensity Expansion Area | Proportion of Secondary Industry Value Added to GDP | −0.900 *** | 4541.619 | −74.298 | −0.9 | 0.790 | 1.956 | |
High-Intensity Expansion Area | Number of Large-Scale Industrial Enterprises | 0.897 ** | 410.722 | 0.134 | 0.800 | 0.870 | 2.060 | |
Forest Coverage Rate | −0.564 * | −474.532 | −2.455 | |||||
2010 | Low-Intensity Expansion Area | Area of Land Requisitioned in the Current Year | 0.908 ** | −240.819 | 52.685 | 0.699 | 0.963 | 1.733 |
Local Fiscal General Budget Expenditure | 0.773 * | 4.570 | 0.444 | |||||
Medium-Intensity Expansion Area | Percentage of Green Inventions in Total Annual Regional Invention Applications | 0.793 *** | 1905.551 | 127.890 | 0.834 | 0.867 | 2.387 | |
Proportion of Secondary Industry Employment | −0.773 *** | −41.705 | −0.597 | |||||
Area of Land Requisitioned in the Current Year | 0.472 | −25.539 | −0.463 | |||||
High-Intensity Expansion Area | Number of Large-Scale Industrial Enterprises | 0.919 *** | 301.941 | 0.121 | 0.820 | 0.926 | 0.773 | |
Forest Coverage Rate | −0.577 | −857.297 | −0.330 | |||||
2020 | Low-Intensity Expansion Area | Highway Freight Volume | 0.988 *** | −2537.241 | 0.099 | 0.892 | 1.000 | 1.821 |
Proportion of Secondary Industry Value Added to GDP | 0.462 | 40.429 | 0.175 | |||||
Per Capita Park Green Area | 0.512 | 19.952 | 0.075 | |||||
Medium-Intensity Expansion Area | Percentage of Green Inventions in Total Annual Regional Invention Applications | 0.769 *** | −560.616 | 169.980 | 0.769 | 0.551 | 2.388 | |
High-Intensity Expansion Area | Total Retail Sales of Consumer Goods | 0.896 *** | 376.045 | 0.095 | 0.556 | 0.994 | 1.991 | |
Number of Large-Scale Industrial Enterprises | 0.884 *** | 0.114 | 0.432 | |||||
Forest Coverage Rate | −0.598 * | −544.779 | −0.193 |
Spatial Element | 2000 | 2010 | 2020 | ||||||
---|---|---|---|---|---|---|---|---|---|
Low-Intensity Expansion Area | Medium-Intensity Expansion Area | High-Intensity Expansion Area | Low-Intensity Expansion Area | Medium-Intensity Expansion Area | High-Intensity Expansion Area | Low-Intensity Expansion Area | Medium-Intensity Expansion Area | High-Intensity Expansion Area | |
Distance from Major Railway (X18) | 0.002 | 0.009 | 0.051 | 0.007 | 0.026 | 0.086 | 0.01 | 0.038 | 0.115 |
Distance from Major Highway (X19) | 0.003 | 0.005 | 0.023 | 0.006 | 0.017 | 0.052 | 0.01 | 0.027 | 0.064 |
Distance from Major River (X20) | 0.007 | 0.015 | 0.007 | 0.011 | 0.026 | 0.012 | 0.012 | 0.027 | 0.012 |
Relief Degree (X21) | 0.026 | 0.030 | 0.041 | 0.030 | 0.042 | 0.080 | 0.034 | 0.046 | 0.097 |
Slope (X22) | 0.016 | 0.022 | 0.029 | 0.019 | 0.030 | 0.058 | 0.022 | 0.033 | 0.071 |
Elevation (X23) | 0.024 | 0.028 | 0.036 | 0.029 | 0.037 | 0.069 | 0.033 | 0.040 | 0.084 |
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Zhai, D.; Zhang, X.; Zhuo, J.; Mao, Y. Driving the Evolution of Land Use Patterns: The Impact of Urban Agglomeration Construction Land in the Yangtze River Delta, China. Land 2024, 13, 1514. https://doi.org/10.3390/land13091514
Zhai D, Zhang X, Zhuo J, Mao Y. Driving the Evolution of Land Use Patterns: The Impact of Urban Agglomeration Construction Land in the Yangtze River Delta, China. Land. 2024; 13(9):1514. https://doi.org/10.3390/land13091514
Chicago/Turabian StyleZhai, Duanqiang, Xian Zhang, Jian Zhuo, and Yanyun Mao. 2024. "Driving the Evolution of Land Use Patterns: The Impact of Urban Agglomeration Construction Land in the Yangtze River Delta, China" Land 13, no. 9: 1514. https://doi.org/10.3390/land13091514
APA StyleZhai, D., Zhang, X., Zhuo, J., & Mao, Y. (2024). Driving the Evolution of Land Use Patterns: The Impact of Urban Agglomeration Construction Land in the Yangtze River Delta, China. Land, 13(9), 1514. https://doi.org/10.3390/land13091514