Spatiotemporal Evolution of Land-Use Landscape Patterns Under Park City Construction: A GIS-Based Case Study of Shenyang’s Main Urban Area (2000–2020)
Abstract
1. Introduction
2. Materials and Methods
2.1. Overview of the Study Area
2.2. Data Sources and Processing
2.3. Research Methods
2.3.1. Land Use Transfer Matrix Model
2.3.2. Single Land Use Dynamics
2.3.3. Comprehensive Land Use Dynamics
2.3.4. Center of Gravity Migration Model Construction
2.3.5. Landscape Pattern Index Research Methodology
3. Results
3.1. Transformational Land Use Change
3.1.1. Land Use Changes
3.1.2. Land Use Transfer Matrices
3.1.3. Changes in Land Use Dynamics
3.1.4. Landscape Center of Gravity Shift
3.2. Landscape Pattern Index
3.2.1. Landscape Index Analysis at the Patch Type Level
3.2.2. Landscape Index Analysis at the Landscape Level
3.3. The Current State of Park City Development in Shenyang
4. Discussion
4.1. Urbanization Rates Are Positively Correlated with Changes in Land Use Landscape Patterns
4.2. Negative Coupling Between the Evolution Pattern of Land Use and the Demand for Park City Construction in Shenyang City
4.3. The Evolution Law of Land Use Patterns and Park City Construction Strategies in the Main Urban Area of Shenyang City
4.3.1. Macro-Level: Overall Ecological Planning and Control Strategy Based on Urban Renewal
4.3.2. Meso-Level: Public Governance Strategy Based on Public Participation Throughout the Life Cycle
4.3.3. Micro-Level: All-Ages, Multi-Scale, Detailed Design Strategy Based on Public Needs
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Calculation Level | Landscape Pattern Index | English Abbreviation | Meaning | Calculation Formula |
---|---|---|---|---|
Patch class level | Patch class area | CA | The patch class area (CA) quantifies the compositional structure of the landscape, that is, reflecting how much of the landscape area is composed of this patch type. As CA approaches 0, it indicates that the patch type is increasingly rare in the landscape; when CA equals the total landscape area (TA), the landscape is entirely dominated by a single patch type. | , where is the area of the patch . |
Patch class level | Number of patches | NP | The number of patches (NP) serves as a straightforward metric for landscape heterogeneity and fragmentation. A higher NP indicates a greater degree of landscape fragmentation. | , where is the number of patches included in patch type in the landscape. |
Patch class level | Patch density | PD | Patch density (PD) is an index that reflects the number of patches per unit area. | , where is the number of patches contained in patch type in the landscape; is the area of the entire landscape, including the background that exists within the landscape. |
Patch class level | Percent of landscape | PLAND | The percentage of landscape (PLAND) is an index used to measure the relative abundance ratio of a patch type within a landscape. | , where represents the area of individual patches of that type ; is the area of patches ; is the area of the entire landscape, including the background that exists within the landscape. |
Patch class level | Largest patch index | LPI | The largest patch index (LPI) quantifies landscape dominance, with higher values indicating greater dominance. | , where is the area of the largest patch within a landscape type or the entire landscape, and is the total area of that landscape type or the entire landscape. |
Patch class level | Landscape shape index | LSI | The landscape shape index (LSI) quantifies the complexity of a landscape’s shape. A higher LSI value indicates a more intricate landscape configuration. | , where is the total area of a certain landscape type or the total area of the landscape. is the total length of a landscape type boundary or the overall landscape boundary. |
Patch class level | Interspersion and juxtaposition index | IJI | The interspersion and juxtaposition index (IJI) quantifies the ratio of actual to maximum spread for a set of patch types. | , where is the total edge length between patch and patch ; is the number of patch types in the landscape. |
Patch class level | Cohesion index | COHESION | The patch cohesion index (COHESION) assesses the natural connectivity among these patch types. Patch cohesion is particularly sensitive to aggregation levels below the penetration threshold. As patch distribution becomes more aggregated, the patch cohesion index rises, reflecting increased natural connectivity. | , where is the perimeter of the patch ; is its area; and is the total number of grids in the landscape. Total landscape area () excludes interior background. |
Patch class level | Aggregation index | AI | The aggregation index (AI) quantifies the likelihood of adjacent placement of various patch types, encompassing similar nodes within the same categories, on a landscape map. | , where is the number of nodes between the patch type cells based on the haploidy method; max is the maximum number of nodes between the patch type cells based on the haploidy method; and is the actual value of divided by the maximum value of when the type is clustered together to the maximum extent. |
Landscape level | Total landscape area | TA | The total landscape area (TA) denotes the overall area of the landscape, serving as a fundamental parameter for deriving numerous other metrics. | , where is the total landscape area. |
Landscape level | Number of patches | NP | The number of patches (NP) represents the total count of patches within the landscape, excluding those in the background and on the boundary. | , where is the total number of patches in the landscape. |
Landscape level | Patch density | PD | The patch density (PD), defined as the number of patches per unit area, serves as an indicator of landscape fragmentation. | , where is the total number of patches in the landscape; is the total area of the landscape. The unit is units/KM2. |
Landscape level | Largest patch index | LPI | The largest patch index (LPI) represents the proportion of the largest patch area relative to the entire landscape area, serving as a metric for assessing the dominance of the largest patch within the landscape. | , where is the area of the patch ; is the total area including the landscape interior background. |
Landscape level | Landscape shape index | LSI | The landscape shape index (LSI) offers a standardized measure of total edge or edge density, which can be adjusted based on landscape size. | , where is the patch perimeter; is the patch area. |
Landscape level | Contagion index | CONTAG | The contagion index (CONTAG) indicates the degree of aggregation or the spatial trend of various patch types within the landscape, thereby describing the extent of landscape heterogeneity. A lower CONTAG value signifies a more even distribution of landscape elements and reduced landscape heterogeneity. | , where is the area proportion of patch type in the landscape, is the number of nodes between patch type and patch type landscape based on the doubling method, and is the number of landscape types. |
Landscape level | Interspersion and juxtaposition index | IJI | The interspersion and juxtaposition index (IJI) quantifies the dispersion or mixing attributes of patch types within the landscape. | , where is the total length of edges in the landscape between patches and ; is the total length of edges in the entire landscape excluding background; is the number of patch types in the landscape. |
Landscape level | Cohesion index | COHESION | The patch cohesion index (COHESION) assesses the inherent connectivity of the relevant patch types. It is responsive to the level of aggregation below the penetration threshold. As the patch type becomes more aggregated in distribution, the patch cohesion index increases as the natural connectivity increases. | , where is the perimeter of the patch ; is its area; is the total number of grids in the landscape. Total landscape area () excluding interior background. |
Landscape level | Patch richness index | PR | The patch richness index (PR) offers a basic evaluation of landscape composition but lacks the ability to indicate the comparative richness among various patch types. | , where is the number of patch types in the landscape, excluding patch types in landscape boundaries. |
Landscape level | Shannon diversity index | SHDI | Shannon’s diversity index (SHDI) quantifies landscape heterogeneity by considering the variety of landscape elements and their proportional changes. A higher SHDI value indicates a more evenly distributed landscape and lower heterogeneity. | , where is the percentage of area occupied by landscape type and is the number of landscape types. |
Landscape level | Shannon evenness index | SHEI | Shannon’s evenness index (SHEI) assesses landscape heterogeneity based on the proportional distribution of different landscape types within the total area. A higher SHEI value signifies a more balanced landscape distribution and reduced heterogeneity. | , where is the percentage of area occupied by landscape type ; is the number of landscape types. |
Landscape level | Aggregation index | AI | The aggregation index (AI) quantifies the likelihood of neighboring patch types, including similar nodes within the same type, on a landscape map. | , where is the number of nodes between cells of patch type based on the haploidy method; max is the maximum number of nodes between cells of patch type based on the haploidy method; is the percentage of area occupied by landscape type ; is the actual value of divided by the maximum value of when the type is clustered together to the maximum extent. |
Landscape level | Diversion index | DIVISION | The landscape division index (DIVISION) assesses the extent of isolation between individual patches within landscape types. | , where is the area of the patch ; is the area of the entire landscape. |
Land Use Type | Year Period | Cultivated Land (km2) | Forest Land (km2) | Grassland (km2) | Water Area (km2) | Construction Land (km2) | Unutilized Land (km2) |
---|---|---|---|---|---|---|---|
Cultivated Land | 2000–2005 | 2550.2616 | 2.1726 (3.26%) | 0.3897 (0.58%) | 0.0531 (0.08%) | 64.0611 (96.03%) | 0.0351 (0.05%) |
2005–2010 | 2178.9054 | 52.2981 (13.68%) | 17.7372 (4.64%) | 49.5954 (12.98%) | 257.7096 (67.42%) | 4.8951 (1.28%) | |
2010–2015 | 2310.5115 | 2.0322 (5.34%) | 0.2097 (0.55%) | 0.3987 (1.05%) | 35.3304 (92.90%) | 0.0612 (0.16%) | |
2015–2020 | 2033.2674 | 11.6226 (4.09%) | 10.6110 (3.74%) | 23.1642 (8.16%) | 229.9248 (80.97%) | 8.6355 (3.04%) | |
2000–2020 | 1951.5285 | 47.4246 (7.13%) | 25.8624 (3.89%) | 66.2823 (9.96%) | 511.659 (76.89%) | 14.2164 (2.14%) | |
Forest Land | 2000–2005 | 3.8511 (55.06%) | 351.6075 | 0.2295 (3.28%) | 0.0189 (0.27%) | 2.8143 (40.24%) | 0.0801 (1.15%) |
2005–2010 | 58.0293 (58.89%) | 255.6207 | 5.7087 (5.79%) | 4.9626 (5.04%) | 27.5400 (27.95%) | 2.2905 (2.32%) | |
2010–2015 | 1.7784 (77.46%) | 325.2177 | 0.0972 (4.23%) | 0.1215 (5.29%) | 0.2862 (12.47%) | 0.0126 (0.55%) | |
2015–2020 | 14.8869 (64.71%) | 304.6734 | 0.8046 (3.50%) | 0.4905 (2.13%) | 6.7203 (29.21%) | 0.1017 (0.44%) | |
2000–2020 | 56.6667 (53.98%) | 253.6146 | 5.3802 (5.12%) | 4.0806 (3.89%) | 38.2347 (36.42%) | 0.6246 (0.59%) | |
Grassland | 2000–2005 | 0.9747 (76.75%) | 0.2358 (18.57%) | 48.8214 | 0.0018 (0.14%) | 0.0576 (4.54%) | 0.0000 (0.00%) |
2005–2010 | 20.3310 (45.83%) | 15.6807 (35.35%) | 5.1048 | 0.4050 (0.91%) | 7.6527 (17.25%) | 0.2943 (0.66%) | |
2010–2015 | 0.1953 (50.70%) | 0.1125 (29.21%) | 29.3715 | 0.0063 (1.64%) | 0.0675 (17.52%) | 0.0036 (0.93%) | |
2015–2020 | 1.4094 (28.31%) | 0.6192 (12.44%) | 24.7536 | 0.0720 (1.45%) | 2.8782 (57.81%) | 0.0000 (0.00%) | |
2000–2020 | 19.3635 (43.08%) | 15.0903 (33.57%) | 5.1444 | 0.1611 (0.36%) | 10.0017 (22.25%) | 0.3303 (0.73%) | |
Water Area | 2000–2005 | 0.1134 (22.74%) | 0.0261 (5.23%) | 0.0198 (3.97%) | 46.4283 | 0.3393 (68.05%) | 0.0000 (0.00%) |
2005–2010 | 4.5072 (66.12%) | 1.0035 (14.72%) | 0.1179 (1.73%) | 39.6891 | 0.9810 (14.39%) | 0.2070 (3.04%) | |
2010–2015 | 0.4059 (69.07%) | 0.0774 (13.17%) | 0.0081 (1.38%) | 98.4312 | 0.0963 (16.39%) | 0.0000 (0.00%) | |
2015–2020 | 3.7287 (23.30%) | 0.8415 (5.26%) | 0.7227 (4.52%) | 83.0610 | 2.2986 (14.37%) | 8.4096 (52.56%) | |
2000–2020 | 3.0168 (28.24%) | 0.9909 (9.28%) | 0.6867 (6.43%) | 36.2439 | 1.2924 (12.10%) | 4.6962 (43.96%) | |
Construction Land | 2000–2005 | 5.3919 (97.78%) | 0.1062 (1.93%) | 0.0081 (0.15%) | 0.0036 (0.07%) | 571.7097 | 0.0045 (0.08%) |
2005–2010 | 85.0653 (92.81%) | 2.8638 (3.12%) | 0.9783 (1.07%) | 1.7757 (1.94%) | 547.3620 | 0.9738 (1.06%) | |
2010–2015 | 4.2579 (91.56%) | 0.2124 (4.57%) | 0.0459 (0.99%) | 0.1017 (2.19%) | 837.6336 | 0.0324 (0.70%) | |
2015–2020 | 41.9085 (85.07%) | 1.8450 (3.74%) | 2.9529 (5.99%) | 2.2680 (4.60%) | 824.1651 | 0.2916 (0.59%) | |
2000–2020 | 65.2050 (88.08%) | 2.5839 (3.49%) | 2.6721 (3.61%) | 2.8395 (3.83%) | 503.1954 | 0.7281 (0.98%) | |
Unutilized Land | 2000–2005 | 0.5481 (93.12%) | 0.0036 (0.61%) | 0.0000 (0.00%) | 0.0000 (0.00%) | 0.0369 (6.27%) | 8.1378 |
2005–2010 | 1.7055 (31.06%) | 0.0468 (0.85%) | 0.1098 (2.00%) | 2.5911 (47.18%) | 1.0386 (18.91%) | 2.7657 | |
2010–2015 | 0.0765 (62.96%) | 0.0252 (20.74%) | 0.0000 (0.00%) | 0.0027 (2.22%) | 0.0171 (14.07%) | 11.3049 | |
2015–2020 | 3.1104 (40.15%) | 0.1179 (1.52%) | 0.0171 (0.22%) | 2.4282 (31.34%) | 2.0736 (26.77%) | 3.6675 | |
2000–2020 | 2.5308 (30.80%) | 0.0153 (0.19%) | 0.1161 (1.41%) | 1.8765 (22.84%) | 3.6774 (44.76%) | 0.5103 |
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Index Classification | Landscape Pattern Index | English Abbreviation | Unit | Calculation Level |
---|---|---|---|---|
Area characteristic index | Patch class area | CA | ha | Patch class level |
Area characteristic index | Total landscape area | TA | ha | Patch class level/Landscape level |
Area characteristic index | Percent of landscape | PLAND | % | Patch class level |
Area characteristic index | Largest patch index | LPI | % | Patch class level/Landscape level |
Density size and difference index | Number of patches | NP | - | Patch class level/Landscape level |
Density size and difference index | Patch density | PD | n/100 ha | Patch class level/Landscape level |
Shape index | Landscape shape index | LSI | - | Patch class level/Landscape level |
Aggregation/dispersion index | Aggregation index | AI | % | Patch class level/Landscape level |
Aggregation/dispersion index | Interspersion and juxtaposition index | IJI | % | Patch class level |
Aggregation/dispersion index | Contagion index | CONTAG | % | Landscape level |
Aggregation/dispersion index | Diversion index | DIVISION | % | Landscape level |
Connectivity index | Cohesion index | COHESION | - | Patch class level/Landscape level |
Diversity index | Patch richness index | PR | - | Landscape level |
Diversity index | Shannon diversity index | SHDI | - | Landscape level |
Diversity index | Shannon evenness index | SHEI | - | Landscape level |
Land Use Type | 2000 | 2005 | 2010 | 2015 | 2020 | |||||
---|---|---|---|---|---|---|---|---|---|---|
Area (km2) | Ratio (%) | Area (km2) | Ratio (%) | Area (km2) | Ratio (%) | Area (km2) | Ratio (%) | Area (km2) | Ratio (%) | |
Cultivated Land | 2616.97 | 71.53 | 2561.14 | 70.00 | 2348.54 | 64.19 | 2317.23 | 63.34 | 2098.31 | 57.35 |
Forest Land | 358.60 | 9.80 | 354.15 | 9.68 | 327.51 | 8.95 | 327.68 | 8.96 | 319.72 | 8.74 |
Grassland | 50.09 | 1.37 | 49.47 | 1.35 | 29.76 | 0.81 | 29.73 | 0.81 | 39.86 | 1.09 |
Water Area | 46.93 | 1.28 | 46.51 | 1.27 | 99.02 | 2.71 | 99.06 | 2.71 | 111.48 | 3.05 |
Construction Land | 577.22 | 15.78 | 639.02 | 17.47 | 842.28 | 23.02 | 873.43 | 23.87 | 1068.06 | 29.19 |
Unutilized Land | 8.73 | 0.24 | 8.26 | 0.23 | 11.43 | 0.31 | 11.41 | 0.31 | 21.11 | 0.58 |
Total | 3658.54 | 100 | 3658.54 | 100 | 3658.54 | 100 | 3658.54 | 100 | 3658.54 | 100 |
Land Use Type | 2000–2005 | 2005–2010 | 2010–2015 | 2015–2020 | 2000–2020 | |||||
---|---|---|---|---|---|---|---|---|---|---|
Area (km2) | Ratio (%) | Area (km2) | Ratio (%) | Area (km2) | Ratio (%) | Area (km2) | Ratio (%) | Area (km2) | Ratio (%) | |
Cultivated Land | −55.83 24 | −0.42 67 | −212.5 971 | −1.66 02 | −31.31 82 | −0.26 67 | −218.9 142 | −1.88 95 | −518.6 619 | −0.99 10 |
Forest Land | −4.44 96 | −0.24 82 | −26.63 82 | −1.50 43 | 0.16 38 | 0.01 00 | −7.95 78 | −0.48 57 | −38.8 818 | −0.54 21 |
Grassland | −0.62 28 | −0.24 87 | −19.7 118 | −7.96 94 | −0.02 43 | −0.01 63 | 10.1 295 | 6.81 38 | −10.2 294 | −1.02 11 |
Water Area | −0.42 12 | −0.17 95 | 52.51 32 | 22.58 36 | 0.04 32 | 0.00 87 | 12.42 18 | 2.50 79 | 64.55 70 | 6.87 85 |
Construction Land | 61.79 49 | 2.14 11 | 203.2 650 | 6.36 18 | 31.14 72 | 0.73 96 | 194.6 295 | 4.45 67 | 490.8 366 | 4.25 17 |
Unutilized Land | −0.46 89 | −1.07 47 | 3.16 89 | 7.67 52 | −0.01 17 | −0.02 05 | 9.69 12 | 16.98 02 | 12.37 95 | 7.09 31 |
Year Period | Cultivated Land | Forest Land | Grassland | Water Area | Construction Land | Unutilized Land | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Migratory Direction * | Migration Distance (km) | Migratory Direction | Migration Distance (km) | Migratory Direction | Migration Distance (km) | Migratory Direction | Migration Distance (km) | Migratory Direction | Migration Distance (km) | Migratory Direction | Migration Distance (km) | |
2000–2005 | Northeast 64.2° | 0.01 83 | East 101.2° | 0.29 04 | Northeast 54.4° | 0.52 85 | West 267.8° | 0.12 10 | Southwest 241.7° | 0.11 50 | Northeast 50.4° | 0.64 51 |
2005–2010 | Northeast 8.4° | 0.19 97 | East 90.3° | 4.45 68 | Southwest 232.5° | 3.49 60 | Southwest 220.6° | 10.08 21 | Southeast 126.6° | 0.18 13 | Northeast 44.1° | 4.46 29 |
2010–2015 | Southwest 234.6° | 0.10 94 | Southeast 127.1° | 0.01 04 | South 185.3° | 0.01 81 | South 175.2° | 0.03 13 | Northeast 35.1° | 0.31 52 | West 270.5° | 0.07 14 |
2015–2020 | Southeast 150.1° | 0.18 98 | East 107.8° | 0.26 21 | Northeast 31.0° | 5.33 33 | Northwest 336.0° | 1.58 96 | Southwest 213.0° | 0.52 87 | Northeast 31.2° | 32.60 12 |
2000–2020 | Southeast 133.6° | 0.51 72 | East 91.9° | 5.01 97 | Northwest 331.6° | 9.37 59 | Southwest 239.0° | 11.82 40 | South 179.7° | 1.14 02 | Northeast 45.6° | 37.78 06 |
Year | Land Use Type | CA (ha) | PLAND (%) | NP | PD (n/100 ha) | LPI (%) | LSI | IJI | COHESION | AI |
---|---|---|---|---|---|---|---|---|---|---|
2000 | Cultivated Land | 261,692.37 | 71.5301 | 73 | 0.02 | 42.6781 | 28.8027 | 68.3011 | 99.9644 | 98.3683 |
Forest Land | 4692.69 | 1.2827 | 47 | 0.0128 | 0.5973 | 15.6608 | 53.7139 | 98.9987 | 93.5468 | |
Grassland | 57,722.40 | 15.7776 | 861 | 0.2353 | 5.8928 | 31.8015 | 18.7907 | 98.1170 | 96.1484 | |
Water Area | 5009.13 | 1.3692 | 181 | 0.0495 | 0.1111 | 23.0254 | 52.175 | 95.8014 | 90.6209 | |
Construction Land | 35,860.14 | 9.8019 | 273 | 0.0746 | 1.9917 | 32.4505 | 40.1305 | 99.2058 | 95.0075 | |
Unutilized Land | 872.64 | 0.2385 | 10 | 0.0027 | 0.0661 | 7.0254 | 45.7849 | 97.2828 | 93.8161 | |
2005 | Cultivated Land | 256,113.72 | 70.0044 | 126 | 0.0344 | 41.4174 | 31.1313 | 66.4349 | 99.9614 | 98.2127 |
Forest Land | 4650.57 | 1.2712 | 52 | 0.0142 | 0.5958 | 15.7604 | 55.4782 | 98.9947 | 93.4727 | |
Grassland | 63,901.89 | 17.4665 | 859 | 0.2348 | 6.5951 | 34.032 | 18.9879 | 98.7869 | 96.0735 | |
Water Area | 4946.85 | 1.3521 | 180 | 0.0492 | 0.0955 | 23.6951 | 52.3578 | 95.7717 | 90.276 | |
Construction Land | 35,415.18 | 9.6801 | 286 | 0.0782 | 2.0027 | 33.7347 | 41.0491 | 99.2025 | 94.7716 | |
Unutilized Land | 825.75 | 0.2257 | 11 | 0.003 | 0.0659 | 6.8333 | 50.6951 | 97.2210 | 93.8319 | |
2010 | Cultivated Land | 9901.89 | 2.7065 | 74 | 0.0202 | 1.5976 | 16.9187 | 56.9775 | 99.3443 | 95.1818 |
Forest Land | 234,854.37 | 64.1934 | 103 | 0.0282 | 29.1269 | 34.0062 | 62.4538 | 99.9417 | 97.9554 | |
Grassland | 84,228.39 | 23.0224 | 1104 | 0.3018 | 9.5928 | 36.0537 | 26.4263 | 98.9631 | 96.3724 | |
Water Area | 32,751.36 | 8.952 | 257 | 0.0702 | 2.2001 | 32.2154 | 44.5941 | 99.3213 | 94.8146 | |
Construction Land | 1142.64 | 0.3123 | 31 | 0.0085 | 0.0752 | 9.3496 | 61.5642 | 96.7705 | 92.5018 | |
Unutilized Land | 2975.67 | 0.8133 | 100 | 0.0273 | 0.0564 | 16.9203 | 67.2483 | 95.5505 | 91.1879 | |
2015 | Cultivated Land | 9906.21 | 2.7077 | 75 | 0.0205 | 1.5569 | 16.8599 | 57.5176 | 99.3189 | 95.2017 |
Forest Land | 231,722.46 | 63.3374 | 129 | 0.0353 | 28.4393 | 34.1592 | 61.9966 | 99.9402 | 97.9316 | |
Grassland | 87,343.11 | 23.8737 | 1096 | 0.2996 | 9.7198 | 35.8432 | 26.8628 | 99.0541 | 96.4582 | |
Water Area | 32,767.74 | 8.9565 | 261 | 0.0713 | 2.2043 | 31.7266 | 45.4837 | 99.3213 | 94.8984 | |
Construction Land | 1141.47 | 0.312 | 31 | 0.0085 | 0.0751 | 9.3097 | 61.7287 | 96.7750 | 92.5298 | |
Unutilized Land | 2973.24 | 0.8127 | 104 | 0.0284 | 0.0565 | 16.7967 | 67.4296 | 95.5409 | 91.2492 | |
2020 | Cultivated Land | 11,148.39 | 3.0472 | 90 | 0.0246 | 1.5825 | 17.5412 | 71.6622 | 99.2847 | 95.2862 |
Forest Land | 2110.59 | 0.5769 | 30 | 0.0082 | 0.2467 | 6.355 | 81.3569 | 98.2242 | 96.4717 | |
Grassland | 209,831.13 | 57.3537 | 103 | 0.0282 | 25.9337 | 35.9551 | 60.2458 | 99.9342 | 97.7091 | |
Water Area | 106,806.06 | 29.1936 | 1050 | 0.287 | 13.4458 | 33.6159 | 28.4687 | 99.3479 | 97.0029 | |
Construction Land | 31,971.96 | 8.739 | 239 | 0.0653 | 2.1899 | 31.8701 | 45.6447 | 99.3351 | 94.8078 | |
Unutilized Land | 3986.19 | 1.0896 | 96 | 0.0262 | 0.2657 | 16.6983 | 74.9581 | 97.2145 | 92.5035 |
Year | TA (ha) | NP (ha) | PD (n/100 ha) | LPI (%) | LSI | CONTAG (%) | IJI (%) | COHESION (%) | PR | SHDI | SHEI | AI (%) | DIVISION (%) |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
2000 | 365,849.37 | 1445 | 0.3950 | 42.6781 | 27.1977 | 71.5793 | 52.1899 | 99.8803 | 6 | 0.8877 | 0.4954 | 97.5098 | 0.7324 |
2005 | 365,853.96 | 1514 | 0.4138 | 41.4174 | 29.0207 | 70.7957 | 51.1834 | 99.8764 | 6 | 0.9079 | 0.5067 | 97.3285 | 0.7454 |
2010 | 365,854.32 | 1669 | 0.4562 | 29.1269 | 30.7157 | 68.1557 | 50.9048 | 99.8433 | 6 | 0.9936 | 0.5545 | 97.1626 | 0.8316 |
2015 | 365,854.23 | 1696 | 0.4636 | 28.4393 | 30.7131 | 67.9116 | 50.8244 | 99.8415 | 6 | 1.0022 | 0.5593 | 97.1631 | 0.8363 |
2020 | 365,854.32 | 1608 | 0.4395 | 25.9337 | 31.2586 | 65.7364 | 51.6639 | 99.8349 | 6 | 1.0766 | 0.6009 | 97.1117 | 0.8544 |
2000– 2020 | 4.95 | 163 | 0.0445 | −16.7444 | 4.0609 | −5.8429 | −0.5260 | −0.0454 | 0 | 0.1889 | 0.1055 | −0.3981 | 0.1220 |
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Peng, C.; Huang, L.; Yang, L.; Li, Y.; Zhang, W. Spatiotemporal Evolution of Land-Use Landscape Patterns Under Park City Construction: A GIS-Based Case Study of Shenyang’s Main Urban Area (2000–2020). Sustainability 2025, 17, 7360. https://doi.org/10.3390/su17167360
Peng C, Huang L, Yang L, Li Y, Zhang W. Spatiotemporal Evolution of Land-Use Landscape Patterns Under Park City Construction: A GIS-Based Case Study of Shenyang’s Main Urban Area (2000–2020). Sustainability. 2025; 17(16):7360. https://doi.org/10.3390/su17167360
Chicago/Turabian StylePeng, Conghe, Leichang Huang, Lixin Yang, Yu Li, and Weikang Zhang. 2025. "Spatiotemporal Evolution of Land-Use Landscape Patterns Under Park City Construction: A GIS-Based Case Study of Shenyang’s Main Urban Area (2000–2020)" Sustainability 17, no. 16: 7360. https://doi.org/10.3390/su17167360
APA StylePeng, C., Huang, L., Yang, L., Li, Y., & Zhang, W. (2025). Spatiotemporal Evolution of Land-Use Landscape Patterns Under Park City Construction: A GIS-Based Case Study of Shenyang’s Main Urban Area (2000–2020). Sustainability, 17(16), 7360. https://doi.org/10.3390/su17167360