Exploring the Spatial Coupling Characteristics and Influence Mechanisms of Built Environment and Green Space Pattern: The Case of Shanghai
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Sources and Preprocessing
2.3. Construction of Research Indicators
2.3.1. Attention Mechanism and Deep Neural Network (DNN) for Weight Calculation
2.3.2. K-Means Clustering Analysis
- Dispersed Natural Zone: Low in both urban and ecological development; includes scattered natural areas like wetlands and grasslands with weak spatial integration.
- Urban Dominated Coordination Zone: High built environment intensity with moderate green land support; coordination is maintained through compact development and vertical greening.
- Green-Oriented Transition Zone: Rich in green space but underdeveloped in urban infrastructure; low coordination reflects untapped synergy potential.
2.3.3. Nonlinear Modeling and Interpretation
2.4. Research Technical Framework Roadmap
3. Results
3.1. Spatial Distribution Characteristics of the Comprehensive Indices for Built Environment and Green Space Pattern
3.2. Spatial Clustering Patterns and Coupling Relationship Identification
3.3. Mechanism Analysis of Influencing Factors
3.3.1. Overall Feature Importance Analysis
3.3.2. Threshold Effects
4. Discussion
4.1. Spatial Distribution of Built Environment and Green Space Patterns
4.2. Coupling Relationships and Spatial Clustering
4.3. Policy Recommendations
4.3.1. Zonal Differentiation and Tailored Spatial Governance Mechanisms
- In the Urban Dominant Coordination Zone, due to its high coupling coordination, high-density built environment, and strong green space compensation characteristics, the future planning of the core area should prioritize enhancing the layered integration and multifunctional use of green infrastructure. In contrast, the surrounding areas with low coordination should focus on green space development. During the construction process, reference should be made to the threshold effects of indicator thresholds to set corresponding thresholds for each green space development, ensuring that construction achieves the optimal coordination range. Additionally, the promotion of vertical greening, rooftop gardens, and pocket parks is encouraged to facilitate micro-ecological renewal and quality improvement in densely populated urban core areas [93,94]. Simultaneously, protecting urban ecological red lines and achieving a sustainable development model that combines high-density built environments with green penetration is of critical importance. Taking Singapore as an example, the city implemented the “City in a Garden” strategy under extremely limited land resources and widely applied measures such as green roofs, three-dimensional green walls, and sky gardens. Since the launch of the “Sky Garden Incentive Programme” in 2009, Singapore has constructed over 100 hectares of green roofs and vertical greening as of 2023, effectively alleviating the urban heat island effect and improving air quality.
- The Green-Oriented Transition Zones possess substantial green space resources but relatively underdeveloped built environments, resulting in moderate coupling coordination. In this zone, emphasis should be placed on preserving green space patterns and integrating urban development with green space planning to avoid fragmented urban sprawl that undermines existing ecological configurations. Priority should be given to planning green space, protecting ecological land, and constructing ecological corridors to enhance its ecological reserve function and support a smooth transition towards green and low-carbon urban districts [95].
- The Dispersed Natural Zone is primarily composed of ecologically sensitive landscapes such as wetlands, grasslands, and water bodies, characterized by low built environment intensity and fragmented spatial distribution. Rather than reflecting development–ecology conflict, its low coupling coordination degree stems from minimal urban integration and functional disconnection. Therefore, planning in this zone should emphasize ecological protection over urban expansion. Strategic priorities include maintaining ecological integrity through strict land-use controls and redline enforcement, enhancing habitat quality via targeted ecological restoration, and improving spatial connectivity by integrating these dispersed patches into broader green space networks [96]. Where minimal development is unavoidable, eco-sensitive design and nature-based solutions should be adopted to ensure that ecological functions are not compromised. This approach ensures that the zone serves as a resilient ecological reserve, supporting regional biodiversity and landscape sustainability.
4.3.2. Urban Expansion Guidance and Institutional Support
5. Conclusions
5.1. The Main Conclusions of This Sdy
- (1)
- There are significant spatial differences between the built environment and green space patterns. High values of the Built Environment Index (BEI) are concentrated in central urban areas, while high values of the Green Space Pattern Index (GLPI) are predominantly distributed in peripheral ecological zones, revealing the typical contradiction between the expansion of urban grey infrastructure and the retreat of green spaces.
- (2)
- The coupling coordination degree (CCD) exhibits obvious spatial heterogeneity. Areas with high built environments and moderate green space patterns (such as urban core areas) demonstrate higher coordination levels, while areas rich in ecological resources but underdeveloped built environments show lower coordination levels. Peripheral areas with fragmented infrastructure and incomplete green space layouts exhibit the lowest coupling coordination degree.
- (3)
- K-Means clustering analysis identified three main spatial types, which were analyzed in conjunction with coupling coordination degree and the spatial heterogeneity of built environment and green space patterns to examine the characteristics of different spatial types. These are: first, the Urban Dominant Coordination Zone, characterized by dense built environment and well-developed green space configuration, exhibiting mature coordination mechanisms; second, the Green-Oriented Transition Zone, rich in ecological resources but with weak built environment, offering significant development potential but low coordination levels; Third, the Dispersed Natural Zone: both built environment and green space pattern indices are low, with minimal ecological intervention, presenting a natural preservation state.
- (4)
- Machine learning analysis based on LightGBM and SHAP indicates that structural indicators of the built environment (such as average compactness, weighted height, and land use diversity) are the primary drivers of coupling coordination, while green space pattern indicators, though ecologically significant, have a relatively minor influence in the model.
5.2. Limitations and Future Research
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Indicators | No. | Variable | VIF |
---|---|---|---|
Built Environment Indicators (BEI) | 1 | Building Density | 3.418191 |
2 | Weighted Average Height | 1.430039 | |
3 | Road Density | 1.342832 | |
4 | POI Density | 1.471579 | |
5 | Green Space Ratio | 1.043532 | |
6 | Population Density | 2.111864 | |
7 | Bus Stop Density | 1.189187 | |
8 | Average Compactness | 2.710779 | |
9 | Land Use Diversity | 1.488116 | |
10 | Water Body Ratio | 1.869330 | |
Green Space Pattern Indicators(GSPI) | 11 | Green Coverage Ratio | 2.965984 |
12 | Largest Patch Index | 1.584769 | |
13 | Number of Patches | 2.914436 | |
14 | Shape Index | 1.237455 | |
15 | Aggregation Index | 3.330684 |
Linear Regression | Random Forest | LightGBM | XGBoost | |
---|---|---|---|---|
MAE | 0.005321 | 0.002167 | 0.002086 | 0.002123 |
MSE | 0.000088 | 0.000027 | 0.000024 | 0.000026 |
RMSE | 0.009384 | 0.005216 | 0.004881 | 0.005097 |
R2 | 0.973189 | 0.991717 | 0.992746 | 0.992090 |
Residual plot |
Variable | Attention_Weight |
---|---|
Building Density | 0.09701068 |
Weighted Average Height | 0.111377545 |
Road Density | 0.082808815 |
POI Density | 0.099431455 |
Green Space Ratio | 0.10096676 |
Population Density | 0.096694775 |
Bus Stop Density | 0.11039864 |
Average Compactness | 0.104573995 |
Land Use Diversity | 0.08181346 |
Water Body Ratio | 0.1149288 |
Variable | Attention_Weight |
---|---|
Green Coverage Ratio | 0.212185 |
Largest Patch Index | 0.269961 |
Number of Patches | 0.121384 |
Shape Index | 0.185129 |
Aggregation Index | 0.211341 |
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Chen, R.; Chen, Z.; Xie, M.; Shi, R.; Chen, K.; Chen, S. Exploring the Spatial Coupling Characteristics and Influence Mechanisms of Built Environment and Green Space Pattern: The Case of Shanghai. Sustainability 2025, 17, 6828. https://doi.org/10.3390/su17156828
Chen R, Chen Z, Xie M, Shi R, Chen K, Chen S. Exploring the Spatial Coupling Characteristics and Influence Mechanisms of Built Environment and Green Space Pattern: The Case of Shanghai. Sustainability. 2025; 17(15):6828. https://doi.org/10.3390/su17156828
Chicago/Turabian StyleChen, Rongxiang, Zhiyuan Chen, Mingjing Xie, Rongrong Shi, Kaida Chen, and Shunhe Chen. 2025. "Exploring the Spatial Coupling Characteristics and Influence Mechanisms of Built Environment and Green Space Pattern: The Case of Shanghai" Sustainability 17, no. 15: 6828. https://doi.org/10.3390/su17156828
APA StyleChen, R., Chen, Z., Xie, M., Shi, R., Chen, K., & Chen, S. (2025). Exploring the Spatial Coupling Characteristics and Influence Mechanisms of Built Environment and Green Space Pattern: The Case of Shanghai. Sustainability, 17(15), 6828. https://doi.org/10.3390/su17156828