Policies for Equity in Access to Urban Green Space: A Spatial Perspective of the Chinese National Forest City Policy
Abstract
:1. Introduction
2. The thorough Examination of NFCC Policy
2.1. The Origin of NFCC Policy
2.2. Policy Evolution Process
- Initial (2004–2006)
- 2.
- Development (2007–2013)
- 3.
- Maturation (2014-Present)
2.3. Evolution of the Selection Criteria
2.3.1. NFCC Initial Selection Indicator
2.3.2. NFCC Selection Indicators at the Development Stage
2.3.3. NFCC Selection Indicators following COVID-19
2.4. Goals and Benefits
2.5. Impact of NFCC on Inequalities in Green Space Allocations
3. Materials and Methods
3.1. Data Sources
3.2. Research Methodology
3.2.1. Nearest Neighbour Index
3.2.2. Geographic Concentration
3.2.3. Imbalance Index
3.2.4. Kernel Density Estimation
3.2.5. Pearson Correlation Coefficient
3.2.6. Geographic Detector
3.3. The Framework of Research
4. Results
4.1. Synopsis of the Study Topics
4.2. Examination of NFCC Spatial Properties
4.2.1. Pattern of Spatial Dispersion
4.2.2. Equitable Dispersion in Space
- The level of spatial distribution concentration
- The level of spatial distribution equilibrium
4.2.3. Characteristics of Spatial Distribution Density
- “Three centres” refers to six high-density core areas. One had Beijing (7) as the core, radiating to the Hebei (9) high-density area; another was centred on Chongqing (6), radiating to Sichuan (12) and Guizhou provinces (5); finally, the last one was a single central region with Guangdong as a single core. The kernel density index of the high-density region was in the range of 0.60 to 1.40.
- A few medium-density and low-density zones were indicated by multiple scattered points and lamellar extension. The middle- and low-density area in the east is a continuous high-value area that displayed a lamellar distribution with a diminishing kernel density value. Middle- and low-density regions were found to be mostly dispersed over the Central, Southern, Northeastern, and Western regions.
- In conclusion, the East had a higher concentration of NFCCs than the West, and the South had a higher concentration than the North. The northwest inland parts were found to be sparsely populated, with the majority of NFCCs being concentrated in the southeast coastal areas that are more commercially developed.
5. Factors Affecting NFCC Geographical Dispersion
5.1. Elements of the Natural Environment
5.1.1. Place and Elevation
5.1.2. Hydroclimatic Circumstances
5.2. Aspects of Society and Economy
5.2.1. Populace
5.2.2. National Forest Resources
5.2.3. Variations in the Number of Cities across Provinces
5.2.4. Economic Development Level
5.2.5. Analysis of the Explanatory Power of Social and Economic Factors
- 1.
- Ecotope
- 2.
- Social economy
- 3.
- Traffic factor
- 4.
- Cultural factors
- 5.
- Public health
6. Discussion
- There is a need to strengthen the public service function of green resource cities. The requirement of enhancing the ecological well-being of residents is reflected in the construction of NFCCs.
- Considering the particularity of China’s social system, urban and rural areas are part of the human settlement environment. The problem of environmental injustice is common in urban suburbs and rural areas, and thus NFCCs should optimise suburban and rural spaces, establish linkages, and provide equal ecological benefits.
- China is a socialist country, so the central government should encourage local governments to play an active role through working with communities and encouraging the public to participate in the construction of forest cities.
- Local authorities in the western region should be aware that although the western region has a challenging environment that is not conducive to vegetation planting, the low population density of the region allows the government to undertake higher-quality green space development and utilise landscape management in compact cities in order to address inequalities in terms of the use of green space in specific areas.
- In the development of NFCC indicators to be used to address inequalities in urban green space, this study recommends the inclusion of public health indicators. Although current research suggests that the variable of public health has a weak impact on the development of NFCCs, health as a benefit of green space equity should not be overlooked.
- Local governments should follow the NFCC indicators in order to enhance the coverage of green spaces and forests if they want to solve the problem of green space inequality. Moreover, this study suggests that the development of industries derived from green resources should not be neglected. Through upgrading the economy, the inequality of green space distribution can be solved.
- In addition, attention must be paid to ensuring that the economy is not built in an uncontrolled manner to address environmental inequalities, as uncontrolled expansion of built-up areas can also deteriorate the ecology of the area and create green space inequalities.
7. Conclusions
- The selection criteria for NFCC policy have evolved steadily, having a diversified development trend towards all fields of social human settlements in the future. The policy theme has also changed from an early focus on green resources and ecological restoration to the equality of social green space. This change reflects the fact that the Chinese authorities have gradually attached importance to the harmonious development of green resources in terms of society and the economy in the process of urbanisation. The Chinese government’s demand for the equality of green space reflects the uniqueness of the national political system.
- The spatial distribution of NFCCs currently presents an uneven feature, mainly characterised by obvious spatial clustering characteristics. At the regional scale, there are three core-density regions, three high-density regions with a large radiation range, and several low-core regions, and these regional scales showed a laminar extension trend. In the whole country, NFCCs are bounded by Hu Weiyong’s population density dividing line, showing a dense distribution in the east and a sparse cohesive distribution in the west.
- Both the natural environment and socioeconomic factors drive such policy pattern differences. For example, socioeconomic factors, ecological environment, urban population density, per capita GDP, and some cultural and tourism industries are all significant factors that affect the distribution. At the same time, natural factors such as terrain and climate also affect the spatial distribution characteristics of NFCCs to varying degrees. These important factors also significantly affect UGS equity.
- The uneven spatial distribution brought about by such policies will also affect the direction of national strategic development. For example, the uneven spatial distribution of NFCCs has formed an urban agglomeration system. The Chinese government has found the law behind this and tried to establish a construction system based on forest urban agglomeration settlements to strengthen the ecological spatial integration among cities. Moreover, this distribution led the government to consider supporting strategies for the national development strategy, such as the current Chinese government trying to provide ecological support for the “China Silk Road Economic Belt” and “Coastal Economic Belt” through the NFCC policy in an attempt to develop a sustainable green ecological balance.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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---|---|---|---|
John F. Kennedy administration | 1962 | U.S. | In a survey of outdoor recreation resources, the term “urban forest” is used for the first time to link the seemingly contradictory factors of city and forest together. |
Gene W. Grey | 1978 | U.S. | Urban forests include street trees, parks, neighbourhood parks, and all trees in residential areas, all an important part of the urban environment. |
Robert W. Miller | 1980 | U.S. | Forest cities should be the sum of all vegetation in densely populated areas and around the city, covering many areas including suburbs and metropolitan areas. |
Paul H. Gobster | 1994 | U.S. | Urban forests are defined as all woody plants and their associated plants in cities and around densely populated areas, being the sum of a series of block stands. |
Andrea L. Flack | 1996 | DE | The concept of an urban forest in a broad sense is put forward. An urban forest includes all the forests in and around a city. |
No | Operation | Index |
---|---|---|
1 | Nearest neighbour | R = 0.728825 |
2 | Geographic concentration | G = 22.67066967 |
3 | Imbalance | S = 0.389480805 |
4 | Kernel density estimation | 0.15~1.80 |
No | Administrative Region | NFCC Amount | Percentage/% | Total Percentage/% |
---|---|---|---|---|
1 | Shandong | 18.00 | 8.22 | 8.22 |
2 | Zhejiang | 18.00 | 8.22 | 16.44 |
3 | Henan | 17.00 | 7.76 | 24.20 |
4 | Guangdong | 14.00 | 6.39 | 30.59 |
5 | Jiangxi | 13.00 | 5.94 | 36.53 |
6 | Sichuan | 12.00 | 5.48 | 42.01 |
7 | Anhui | 12.00 | 5.48 | 47.49 |
8 | Hubei | 11.00 | 5.02 | 52.51 |
9 | Guangxi | 10.00 | 4.57 | 57.08 |
10 | Fujian | 10.00 | 4.57 | 61.64 |
11 | Jiangsu | 9.00 | 4.11 | 65.75 |
12 | Hebei | 9.00 | 4.11 | 69.86 |
13 | Shaanxi | 8.00 | 3.65 | 73.52 |
14 | Liaoning | 8.00 | 3.65 | 77.17 |
15 | Hunan | 8.00 | 3.65 | 80.82 |
16 | Beijing | 7.00 | 3.20 | 84.02 |
17 | Yunnan | 6.00 | 2.74 | 86.76 |
18 | Chongqing | 6.00 | 2.74 | 89.50 |
19 | Inner Mongolia | 5.00 | 2.28 | 91.78 |
20 | Guizhou | 5.00 | 2.28 | 94.06 |
21 | Jilin | 4.00 | 1.83 | 95.89 |
22 | Xinjiang | 2.00 | 0.91 | 96.80 |
23 | Shanxi | 2.00 | 0.91 | 97.72 |
24 | Tibet | 1.00 | 0.46 | 98.17 |
25 | Qinghai | 1.00 | 0.46 | 98.63 |
26 | Ningxia | 1.00 | 0.46 | 99.09 |
27 | Heilongjiang | 1.00 | 0.46 | 99.54 |
28 | Gansu | 1.00 | 0.46 | 100.00 |
29 | Tianjin | 0.00 | 0.00 | 100.00 |
30 | Shanghai | 0.00 | 0.00 | 100.00 |
31 | Macao | 0.00 | 0.00 | 100.00 |
32 | Hong Kong | 0.00 | 0.00 | 100.00 |
33 | Hainan | 0.00 | 0.00 | 100.00 |
34 | Taiwan (R.O.C.) | 0.00 | 0.00 | 100.00 |
Division of Administration | Quantity | Percentage/% | Total Percentage/% |
---|---|---|---|
East | 80 | 36.53% | 36.53% |
Central | 36 | 16.44% | 52.97% |
Southwest | 30 | 13.70% | 66.67% |
South | 24 | 10.96% | 77.63% |
North | 23 | 10.50% | 88.13% |
Northwest | 13 | 5.94% | 94.06% |
Northeast | 13 | 5.94% | 100.00% |
Classification of Density | Quantity | Region of Administration | Zone of Kernel Density |
---|---|---|---|
Core-density | 18 | Zhejiang * | 1.40–1.80 |
13 | Jiangxi | 1.00–1.40 | |
10 | Fujian | 1.00–1.40 | |
18 | Shandong * | 1.40–1.80 | |
9 | Jiangsu | 1.00–1.40 | |
12 | Anhui | 1.00–1.40 | |
17 | Henan * | 1.40–1.80 | |
2 | Shanxi | 1.00–1.40 | |
High-density | 7 | Beijing * | 1.00–1.40 |
9 | Hebei | 0.60–1.00 | |
14 | Guangdong * | 1.00–1.40 | |
6 | Chongqing * | 1.00–1.40 | |
12 | Sichuan | 0.60–1.00 | |
5 | Guizhou | 0.60–1.00 | |
Medium-density | 8 | Hunan | 0.60–1.00 |
10 | Guangxi | 0.60–1.00 | |
11 | Hubei | 0.60–1.00 | |
8 | Liaoning | 0.60–1.00 | |
Low-density | 8 | Shaanxi | 0.15–0.60 |
6 | Yunnan | 0.15–0.60 | |
5 | Inner Mongolia | 0.15–0.60 | |
4 | Jilin | 0.15–0.60 | |
1 | Heilongjiang | 0.15–0.60 | |
1 | Gansu | 0.15–0.60 | |
1 | Qinghai | 0.15–0.60 | |
1 | Ningxia | 0.15–0.60 | |
2 | Xinjiang | 0.15–0.60 | |
1 | Tibet | 0.15–0.60 |
Region of Administration | GDP per Capita (CNY) | The Percentage of NFCC (%) |
---|---|---|
Shandong | 85,973 | 37.50% |
Zhejiang | 118,830 | 51.43% |
Henan | 62,071 | 44.74% |
Guangdong | 101,796 | 25.93% |
Jiangxi | 71,009 | 65.00% |
Sichuan | 67,785 | 38.71% |
Anhui | 73,687 | 54.55% |
Hubei | 92,170 | 30.56% |
Guangxi | 52,215 | 52.63% |
Fujian | 126,845 | 43.48% |
Jiangsu | 144,475 | 45.00% |
Hebei | 56,888 | 26.47% |
Shaanxi | 82,885 | 61.54% |
Liaoning | 68,515 | 25.81% |
Hunan | 73,498 | 27.59% |
Beijing | 190,091 | 700.00% |
Yunnan | 61,736 | 40.00% |
Chongqing | 90,688 | 600.00% |
Inner Mongolia | 96,496 | 26.32% |
Guizhou | 52,348 | 38.46% |
Jilin | 55,033 | 14.29% |
Xinjiang | 68,526 | 11.11% |
Shanxi | 73,686 | 9.09% |
Tibet | 58,269 | 14.29% |
Qinghai | 60,776 | 33.33% |
Ningxia | 69,925 | 4.55% |
Heilongjiang | 50,883 | 3.23% |
Gansu | 44,986 | 7.14% |
Criterion Layer | Factor Layer |
---|---|
T1: Ecotope | X1: Forestry area |
X2: Urban green space | |
X3: Park green area | |
X4: Number of parks | |
X5: Park area | |
X6: Green coverage rate of built-up area | |
X7: Forest coverage rate | |
X8: Number of national forest parks | |
X9: Number of national nature reserves | |
T2: Social economy | X10: Density of population |
X11: GDP per capita | |
X12: Residents’ consumption level | |
T3: Traffic factor | X13: Rail mileage |
X14: Highway mileage | |
T4: Cultural factor | X15: Number of tourist attractions |
X16: Gross tourism income | |
X17: Tourist arrivals | |
T5: Public health | X18: Air quality (PM2.5 concentration) |
X19: Category A and B statutory reporting of infectious disease incidence |
Factor Layer | q Statistic |
---|---|
X1: Forestry area | 0.02 |
X2: Urban green space | 0.62 |
X3: Park green area | 0.56 |
X4: Number of parks | 0.62 |
X5: Park area | 0.48 |
X6: Green coverage rate of built-up area | 0.32 |
X7: Forest coverage rate | 0.43 |
X8: Number of national forest parks | 0.52 |
X9: Number of national nature reserves | 0.09 |
X10: Density of population | 0.63 |
X11: GDP per capita | 0.21 |
X12: Residents’ consumption level | 0.35 |
X13: Rail mileage | 0.12 |
X14: Highway mileage | 0.26 |
X15: Number of tourist attractions | 0.56 |
X16: Gross tourism income | 0.53 |
X17: Tourist arrivals | 0.36 |
X18: Air quality (PM2.5 concentration) | 0.23 |
X19: Category A and B statutory reporting of infectious disease incidence | 0.28 |
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Zhang, Z.; Cenci, J.; Zhang, J. Policies for Equity in Access to Urban Green Space: A Spatial Perspective of the Chinese National Forest City Policy. Forests 2024, 15, 608. https://doi.org/10.3390/f15040608
Zhang Z, Cenci J, Zhang J. Policies for Equity in Access to Urban Green Space: A Spatial Perspective of the Chinese National Forest City Policy. Forests. 2024; 15(4):608. https://doi.org/10.3390/f15040608
Chicago/Turabian StyleZhang, Zhenyu, Jeremy Cenci, and Jiazhen Zhang. 2024. "Policies for Equity in Access to Urban Green Space: A Spatial Perspective of the Chinese National Forest City Policy" Forests 15, no. 4: 608. https://doi.org/10.3390/f15040608
APA StyleZhang, Z., Cenci, J., & Zhang, J. (2024). Policies for Equity in Access to Urban Green Space: A Spatial Perspective of the Chinese National Forest City Policy. Forests, 15(4), 608. https://doi.org/10.3390/f15040608