Parks and People: Spatial and Social Equity Inquiry in Shanghai, China
Abstract
1. Introduction
2. Study Area and Data
2.1. Study Area
2.2. Study Object
2.3. Data Preparation
2.3.1. Data Type and Source
2.3.2. Data Cleaning
2.3.3. Data Reliability Verification
3. Methods
3.1. Accessibility Measurement
3.1.1. Calculation of Actual Service Radius Based on Residents’ Real Travel Intentions
3.1.2. Enhanced Gaussian-Based Two-Step Floating Catchment Area (EG2SFCA)
3.2. Urban Park Equity Measurement Based on Accessibility Results
3.2.1. Spatial Equity
- (1)
- Global Univariate Moran’s I
- (2)
- Local Univariate Moran’s I
3.2.2. Social Equity
- (1)
- Global Bivariate Moran’s I Analysis
- (2)
- Local Bivariate Moran’s I Analysis
- (3)
- Spatial Lag Regression Model Analysis
4. Results
4.1. Accessibility Calculation Results
- (1)
- Pocket Parks: There are 68 pocket parks with an actual service radius of 5521 m, covering 9225 residential communities. As shown in Figure 3a, the accessibility of residential communities within the inner ring is significantly higher than those in the middle and outer rings. This distribution pattern reflects the concentrated layout of parks in the inner ring.
- (2)
- Community Parks: There are 114 community parks with an actual service radius of 5762 m, covering 9430 residential communities. From Figure 3b, it can be seen that the accessibility in the inner and middle rings is higher than in the outer ring. This is due to the larger service radius of community parks, as well as the higher number of parks in the inner and middle rings, resulting in these areas having multiple parks covering their residential communities and significantly improving accessibility.
- (3)
- District Parks: There are 67 district parks with an actual service radius of 7290 m, providing full coverage of 9502 residential communities. From Figure 3c, the communities with high accessibility are mainly distributed in areas where district parks are concentrated, with the accessibility pattern showing dispersion across the inner, middle, and outer rings. This suggests that the accessibility distribution of district parks is significantly influenced by their spatial layout.
- (4)
- Urban Parks: There are 11 urban parks with an actual service radius of 9622 m, covering all 9502 residential communities. From Figure 3d, the accessibility in the “middle ring to outer ring” region is higher than in the inner ring. This result aligns with the accessibility findings based on the planned service radius. High-accessibility communities are concentrated around urban parks, indicating that urban parks have a significant impact on the accessibility of these communities.
4.2. Spatial Equity Calculation Results
- (1)
- High–High Clustering (H-H Cluster): A total of 3155 communities belong to the high–high clustering type, which are concentrated in the northeastern and southwestern parts of the central urban area. The northeastern region is primarily located in Yangpu District and Pudong New Area, while the southwestern region covers parts of Xuhui District and Minhang District. High–high clustering areas typically have larger urban parks, which provide higher accessibility to nearby communities. Examples include Century Park, Shanghai Gongqing Forest Park, Qiantan Leisure Park, Shanghai Botanical Garden, Minhang Sports Park, and Minhang Cultural Park. The layout of these large parks significantly improves accessibility in these areas, creating a highly accessible spatial clustering pattern.
- (2)
- Low–Low Clustering (L-L Cluster): There are 4763 low–low type communities, mainly distributed in two areas. ① Inside the inner ring: Communities in Huangpu, Jing’an, and Hongkou districts, where high population density and insufficient park resources lead to a supply–demand imbalance, resulting in low accessibility clustering. ② Northwest between the inner and outer rings: Communities in Putuo, Changning, Jing’an, and Baoshan districts, where the limited number and uneven distribution of parks further exacerbate the phenomenon of low accessibility. The wide distribution and large number of low–low clustering communities reflect an imbalance between the supply and demand for park resources in the central urban area of Shanghai.
4.3. Social Equity Calculation Results
- (1)
- High–High Clustering (H-H Cluster): A total of 1010 communities belong to the high–high clustering type, primarily distributed between the inner ring and middle ring along both sides of the Huangpu River, covering parts of Yangpu District, Pudong New Area, and Xuhui District. This area has a superior geographic location in the city center, where housing prices are generally high. Additionally, large parks, such as Century Park, Shanghai Gongqing Forest Park, Qiantan Leisure Park, and Shanghai Botanical Garden, are located in proximity. The concentrated distribution of these park resources leads to a spatial feature of high housing prices and high accessibility in these communities.
- (2)
- Low–Low Clustering (L-L Cluster): There are 2800 communities in the low–low clustering category, mainly distributed on the northwest side between the inner and outer rings, including parts of Baoshan District, Changning District, Putuo District, and Jing’an District. These areas have a limited number of large parks, with only one large city-level park, Daning Park, and a lack of small or medium-sized parks offering broad coverage, which results in lower park accessibility. At the same time, housing prices in these areas are also low, presenting a dual disadvantage of low housing prices and low accessibility.
- (3)
- Low–High Clustering (L-H Cluster): A total of 2145 communities belong to the low–high clustering type, primarily located in the northeastern and southwestern parts between the inner and middle rings, as well as some areas along the outer ring. These communities have relatively low housing prices, but are surrounded by several large parks, such as Shanghai Gongqing Forest Park, Expo Park, Jinxi Culture Park, and parks near the outer ring, such as Gaodong Park, Jinhai Wetland Park, and Mianqing Park. The park resources in these areas provide good accessibility services to the residents, resulting in a characteristic of low housing prices but high accessibility.
- (4)
- High–Low Clustering (H-L Cluster): There are 1963 communities in the high–low clustering type, primarily distributed in the central urban area within the inner ring. These areas are home to a large number of older communities with high population density. However, due to limited land resources, there are not enough large parks, and green space provision is relatively scarce, resulting in lower accessibility. At the same time, these areas are economically active and commercially developed, with relatively high housing prices. This mismatch between resources and demand leads to a typical spatial mismatch of high housing prices and low accessibility.
- (5)
- Spatial Lag Regression Analysis Results
- ①
- Positive Correlation Between Housing Prices and Accessibility: In communities with housing prices ranging from CNY 0 to 50,000 and those exceeding CNY 110,000, a positive correlation between housing prices and park accessibility is observed. This indicates that areas with higher housing prices tend to have better park resources.
- ②
- Stronger Positive Correlation in High-Price Communities: For example, in communities within the inner ring where housing prices exceed CNY 110,000, the regression coefficient is as high as 1.2375, significantly higher than that of communities with housing prices between CNY 0 and CNY 50,000 (with a regression coefficient of 0.5202). This trend is similarly significant in the areas between the inner and middle rings.
- ③
- Negative Correlation and Spatial Mismatch: In the region between the middle and outer rings, the regression coefficient for the accessibility of communities with housing prices ranging from CNY 0 to CNY 50,000 is −0.3497, indicating that low-priced areas actually enjoy higher park accessibility. This aligns with the spatial mismatch phenomenon observed in the high–low and low–high clusters.
5. Discussion
5.1. Comparison of Park Accessibility Categories
- (1)
- District parks and City parks have better accessibility than Pocket parks and Community parks
- (2)
- Spatial Distribution and Layout of Park Accessibility Are Highly Consistent
5.2. Spatial Inequity in Accessibility Distribution: Renewal of Micro-Spaces
- (1)
- Lower Accessibility in the Inner Ring Area: Residential communities within the Inner Ring area, which is the city’s core, generally exhibit lower levels of accessibility. This region is characterized by high land value and concentrated population density. The intense land development in this area restricts the planning and implementation of new large-scale urban parks, exacerbating the deficiency in park accessibility. Furthermore, the limited number and uneven distribution of existing parks further constrain the service capacity for these communities, resulting in overall low accessibility. From the perspective of urban development trajectory, inner-ring areas were typically prioritized in early-stage development, when the planning philosophy emphasized concentrated commercial and residential functions while neglecting balanced allocation of public spaces. This historical legacy has resulted in persistent challenges for subsequent park development.
- (2)
- Significant Spatial Autocorrelation of Accessibility: High-accessibility areas are predominantly concentrated in the northeastern and southwestern parts between the Inner and Outer Ring roads, while low-accessibility areas are more prevalent in the northwestern part of the central urban area. This phenomenon indicates that the park accessibility of residential communities demonstrates a spatial clustering effect, following a distinct and predictable pattern. This clustering is influenced not only by the distribution of parks but also by factors such as population density and the spatial distribution of residential communities. This clustering phenomenon reflects the systemic nature of resource allocation in urban planning, where park distribution is inherently shaped by urban functional zoning, transportation networks, and historical development trajectories.
- (3)
- Marked Spatial Imbalance in Accessibility Distribution: The regional differences in the distribution of parks and population density are the primary contributors to spatial imbalance. In areas with high population density and scarce park resources (such as certain parts of the Inner Ring area), residential communities tend to exhibit low levels of accessibility. In contrast, areas with abundant park resources and relatively balanced population distribution (such as those near the Outer Ring) generally exhibit higher accessibility for residential communities. In urban planning practices, developers and municipal authorities are inclined to construct large-scale residential communities with correspondingly sized parks in the outer-ring periphery, serving as a strategy to attract population decentralization and alleviate pressure on inner-ring areas. In contrast, due to land scarcity in inner-ring zones, park development faces high costs and technical complexities, while resource allocation tends to prioritize maintaining existing economic functional infrastructure, resulting in comparatively limited park resources.
5.3. Spatial Differentiation of Social Equity: Optimization of Resource Allocation
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Data Types | Data Subclasses | Data Sources | Research Purposes |
---|---|---|---|
Spatial data | Park (Name, Boundary AOI, Area, Category) | Shanghai Bureau of Greening and Green Appearance | Accessibility, equity |
Administrative boundary data (Administrative District, Street, Community) | Gaode map | Accessibility | |
Community (name, boundary) | Gaode map | Accessibility | |
Path planning data (Walking, driving) | Gaode map API | Accessibility | |
100 m × 100 m grid population data | WorldPOP | Accessibility | |
Park visitor data | LBS visitor data | Position location | Accessibility |
Location positioning | Position location | Accessibility | |
Residential community resident data | Residential housing price data | Anjuke | Equity |
Population of the community | Population Grid | Accessibility |
Indicators | Traditional Method | Refined Method | Proposed in This Study |
---|---|---|---|
Supply Indicators | Population distribution grid | Population at residential community level | ● |
Population at district level | |||
Population at street level | |||
Demand Indicators | Park area | Classified urban parks | ● |
Distance Indicators | Euclidean distance | Actual road network distance | ● |
Travel time | |||
Path planning API | ● | ||
Introduction of distance decay function | ● | ||
Search Radius | Fixed radius | Hierarchical/classified thresholds | ● |
Within the Inner Ring Road | Inner Ring to Middle Ring Road | Middle Ring to Outer Ring Road | ||||
---|---|---|---|---|---|---|
Price Range (Yuan/Square Meter) | Coefficient | p-Value | Coefficient | p-Value | Coefficient | p-Value |
0–50,000 | 0.5202 ** | 0.0059 | 0.2214 * | 0.0280 | −0.3497 ** | 0.0070 |
50,000–70,000 | −0.2044 | 0.1517 | 0.2548 | 0.8425 | −0.2136 * | 0.0173 |
70,000–90,000 | −0.1813 * | 0.0713 | 0.7704 * | 0.0129 | 0.2726 | 0.3901 |
90,000–11,000 | 0.2544 | 0.0416 | −0.5452 | 0.2757 | 2.2228 * | 0.0206 |
>110,000 | 1.2375 *** | 0.0001 | 1.1496 ** | 0.0052 | −0.2858 | 0.7281 |
Pocket Park_5521m | Community Park_6762m | Regional Park_7299m | Urban Park_9622m | |
---|---|---|---|---|
Lower Bound (Q0) | 0 | 0 | 0.15 | 0.02 |
Lower Quartile (Q1) | 0.01 | 0.18 | 0.50 | 0.28 |
Median (Q2) | 0.03 | 0.24 | 0.59 | 0.57 |
Upper Quartile (Q3) | 0.04 | 0.27 | 0.67 | 0.87 |
Upper Bound (Q4) | 0.06 | 0.38 | 1.60 | 2.48 |
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Peng, X.; Yin, X. Parks and People: Spatial and Social Equity Inquiry in Shanghai, China. Sustainability 2025, 17, 5495. https://doi.org/10.3390/su17125495
Peng X, Yin X. Parks and People: Spatial and Social Equity Inquiry in Shanghai, China. Sustainability. 2025; 17(12):5495. https://doi.org/10.3390/su17125495
Chicago/Turabian StylePeng, Xi, and Xiang Yin. 2025. "Parks and People: Spatial and Social Equity Inquiry in Shanghai, China" Sustainability 17, no. 12: 5495. https://doi.org/10.3390/su17125495
APA StylePeng, X., & Yin, X. (2025). Parks and People: Spatial and Social Equity Inquiry in Shanghai, China. Sustainability, 17(12), 5495. https://doi.org/10.3390/su17125495