Predictive Measurement of the Structure of Land Use in an Urban Agglomeration Space
Abstract
:1. Introduction
2. Measurement of the Structure of Land Use in the Urban Agglomeration Space
2.1. Method
2.2. Data and Results
3. Prediction for the Structure of Land Use in Urban Agglomeration Space
3.1. Method
3.2. Data and Results
4. Conclusions
- (1)
- The perspective used in this study for measuring the fractal is different from the traditional measurement method used in previous studies that separately analyzed the fractal feature of different land use types. The method proposed in this study can obtain the measurement of the fractal feature and the fractal measure of the relationship between different land use types by grouping different types of land as one overall sample collection, which can recap some innovations and reference values for the relative predictive measure of the land use structure in space from the field of fractals.
- (2)
- The prediction method used in this paper regards the development and evolution of land use in urban agglomeration space as a black box that does not need to be detected, which is different from the traditional measurement methods used in previous studies that rely on complex transformation rules by subjective abstraction. Our approach applies the gray prediction method and the allometry model to realize the prediction of the “local” through the prediction of the “entirety”. This can avoid the incompleteness and subjectivity in the mining of the complex evolution law, such as the selections of factors and judgment criteria, and can avoid using reductionism. The approach obtains the predictive fractal measurement on the structure of land use with higher efficiency by only needing to predict the “entirety” instead of repeating the same predictions for each type of land separately. It can provide some innovative reference for the improvement of the land use development goals or related regulatory policies.
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Year | Boundary Dimension | Stability Index S |
---|---|---|
1990 | 1.854 | 0.354 |
1995 | 1.800 | 0.300 |
2000 | 1.805 | 0.305 |
2005 | 1.814 | 0.314 |
2010 | 1.805 | 0.305 |
2015 | 1.804 | 0.304 |
Year | Original Area/m2 | Simulation (Prediction) Area/m2 | Residual Error/m2 | Relative Error/% |
---|---|---|---|---|
1990 | 75,308,293,669 | 75,308,293,669 | - | - |
1995 | 77,583,545,808 | 77,435,169,842 | 148,375,966 | 0.191 |
2000 | 78,212,536,933 | 78,339,887,796 | −127,350,863 | −0.163 |
2005 | 79,077,344,520 | 79,255,176,072 | −177,831,551 | −0.225 |
2010 | 80,341,676,686 | 80,181,158,166 | 160,518,520 | 0.200 |
2015 | (80,489,246,119) | (81,117,959,023) | 628,712,903 | 0.781 |
2020 | - | (82,065,705,042) | - | - |
2025 | - | (83,024,524,103) | - | - |
First-Level Type | Control Value/m2 | Predicted Value/m2 | Relative Error/% | ||
---|---|---|---|---|---|
2015 | 2015 | 2020 | 2025 | 2015 | |
Built-up land | 15,681,730,864 | 16,099,047,598 | 17,362,973,275 | 18,726,128,928 | 2.661 |
Cultivated land | 59,286,570,034 | 60,139,381,219 | 60,054,307,424 | 59,969,353,976 | 1.438 |
Forestry land | 1,607,041,921 | 1,618,905,493 | 1,762,435,107 | 1,918,689,831 | 0.738 |
Grass land | 1,393,238,489 | 1,374,197,195 | 1,402,846,262 | 1,432,092,602 | −1.367 |
Water area | 2,291,987,657 | 2,286,443,778 | 2,404,009,889 | 2,527,621,103 | −0.242 |
Unused land | 228,677,151 | 210,280,588 | 203,636,738 | 197,202,802 | −8.045 |
First-Level Type | Control Value/m | Predicted Value/m | Relative Error/% | ||
---|---|---|---|---|---|
2015 | 2015 | 2020 | 2025 | 2015 | |
Built-up land | 4,287,521 | 4,340,524 | 4,525,789 | 4,718,962 | 1.236 |
Cultivated land | 5,494,681 | 5,837,889 | 5,964,840 | 6,094,553 | 6.246 |
Forestry land | 477,534 | 476,587 | 509,900 | 545,542 | −0.198 |
Grass land | 427,690 | 428,968 | 441,962 | 455,349 | 0.299 |
Water area | 710,355 | 720,746 | 755,799 | 792,557 | 1.463 |
Unused land | 70,389 | 64,817 | 63,014 | 61,262 | −7.916 |
Year | Boundary Dimension | Stability Index |
---|---|---|
2015 | 1.638 | 0.138 |
2005 | 1.646 | 0.146 |
2010 | 1.654 | 0.154 |
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Liu, F.; Zheng, X.; Huang, Q. Predictive Measurement of the Structure of Land Use in an Urban Agglomeration Space. Sustainability 2018, 10, 65. https://doi.org/10.3390/su10010065
Liu F, Zheng X, Huang Q. Predictive Measurement of the Structure of Land Use in an Urban Agglomeration Space. Sustainability. 2018; 10(1):65. https://doi.org/10.3390/su10010065
Chicago/Turabian StyleLiu, Fei, Xinqi Zheng, and Qing Huang. 2018. "Predictive Measurement of the Structure of Land Use in an Urban Agglomeration Space" Sustainability 10, no. 1: 65. https://doi.org/10.3390/su10010065
APA StyleLiu, F., Zheng, X., & Huang, Q. (2018). Predictive Measurement of the Structure of Land Use in an Urban Agglomeration Space. Sustainability, 10(1), 65. https://doi.org/10.3390/su10010065