Spatial Dynamics of Land Green Utilization Efficiency in Chinese Urban Agglomerations
Abstract
1. Introduction
- (1)
- Deepening the micro-empirical validation of the core–periphery theory by challenging the traditional “trickle-down” assumption in environmental economics. Unlike conventional wisdom that assumes developed core cities inevitably generate positive green spillovers for their surroundings, this study utilizes Spatial Markov chains to provide robust quantitative evidence of the “backwash effect” in LGUE. It reveals how core cities, while concentrating high-quality capital and technology, may simultaneously exacerbate an “inefficiency lock-in” in peripheral areas through resource siphoning and pollution displacement. This mechanism substantially enriches the theoretical explanations of regional environmental inequality.
- (2)
- Expanding the spatial heterogeneity perspective of the Environmental Kuznets Curve (EKC) by identifying a counterintuitive “scale-efficiency inversion.” Breaking away from the linear assumption that larger economic aggregates inherently yield higher green efficiency, this study empirically demonstrates that less-developed central and western inland agglomerations often outperform economically advanced eastern coastal regions in relative static efficiency. This finding highlights the theoretical significance of “congestion effects” and historical path dependence in developed areas, alongside the profound “latecomer advantages” in clean technology adoption enjoyed by inland regions.
- (3)
- Constructing a cohesive “State–Dynamic–Interaction–Mechanism” analytical closed-loop to comprehensively decipher spatial non-equilibrium. Moving beyond the simple aggregation of multiple models, this study systematically integrates methods to address sequential research questions: employing the Super-SBM model for static baseline measurement, the GML index for dynamic productivity decomposition, the Dagum Gini and Spatial Markov chains to capture asymmetric spatial overlapping and interactions, and finally, the MGWR model to reveal the multiscale spatial heterogeneity of micro-level drivers.
2. Literature Review and Theoretical Framework
2.1. Literature Review
2.1.1. Efficiency Measurement and Temporal Evolution
2.1.2. Spatial Spillovers and Regional Disparities
2.1.3. Driving Mechanisms and Spatial Heterogeneity
2.2. Theoretical Framework and Mechanistic Analysis
2.2.1. Spatial Interactions: Trickle-Down and Backwash Effects
2.2.2. Spatial Heterogeneity and Localized Responses
3. Methodology and Data
3.1. Delineation of the Study Area
3.2. Indicator System Construction
3.2.1. Input Indicators
3.2.2. Output Indicators
3.2.3. Explanatory Variables
3.2.4. Data Sources and Processing
3.3. Methodology and Model Specification
3.3.1. Super-SBM Model with Undesirable Outputs
3.3.2. Global Malmquist–Luenberger (GML) Index
3.3.3. Kernel Density Estimation
3.3.4. Global Spatial Autocorrelation and Spatial Markov Chains
3.3.5. Dagum Gini Coefficient and Decomposition
3.3.6. Multiscale Geographically Weighted Regression (MGWR)
3.3.7. Model Implementation Details
4. Empirical Results
4.1. Static Evolution of LGUE: Evidence of Scale-Efficiency Divergence
- Static Analysis of Allocative Efficiency
- 2.
- Temporal Evolution and Regional Heterogeneity
4.2. Spatiotemporal Distribution and Sources of Inequality
4.2.1. Distributional Evolution of LGUE
4.2.2. Decomposition of Spatial Inequality
- Temporal Evolution of Overall Inequality and Its Core Drivers
- 2.
- Matrix Analysis of Cross-Regional Disparities
4.3. Dynamic Decomposition of LGUE Growth Drivers
4.3.1. Dynamic Convergence and Internal Differentiation
4.3.2. Decomposition of Growth Momentum
4.4. Spatial Interaction Mechanisms of LGUE Evolution
4.4.1. Path Dependence and Club Convergence
4.4.2. Spatial Interaction Effects
5. Spatial Heterogeneity of Driving Mechanisms
5.1. MGWR Model Applicability Diagnostics
5.2. Spatiotemporal Heterogeneity of Driving Mechanisms
5.2.1. Economic Development Level
5.2.2. Population Density
5.2.3. Industrial Structure
5.2.4. Foreign Direct Investment (FDI)
5.2.5. Financial Level
5.3. Robustness Check
6. Discussion and Limitations
6.1. Discussion of Main Findings
6.1.1. Mechanisms of the Backwash Effect
6.1.2. Spatial Heterogeneity of Driving Factors
6.2. Limitations and Future Research
7. Conclusions
8. Policy Implications
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Urban Agglomeration | Tier | Region | No. of Cities | Core Cities | Population (10,000 Persons) | GDP (100 Million Yuan) | Per Capita GDP (10,000 Yuan/Person) |
|---|---|---|---|---|---|---|---|
| Yangtze River Delta (YRD) | World | Eastern | 40 | Shanghai, Nanjing, Hangzhou, Hefei | 23,756.09 | 324,723.82 | 13.67 |
| Pearl River Delta (PRD) | World | Eastern | 9 | Guangzhou, Shenzhen | 7915.82 | 119,893.42 | 15.15 |
| Middle Reaches of the Yangtze River (MYR) | National | Central | 29 | Wuhan, Changsha, Nanchang | 12,426.00 | 129,045.00 | 10.39 |
| Chengdu–Chongqing (CC) | National | Western | 16 | Chengdu, Chongqing | 9700.77 | 88,848.09 | 9.16 |
| Shandong Peninsula (SPUA) | Regional | Eastern | 16 | Jinan, Qingdao | 10,070.21 | 98,668.50 | 9.80 |
| Central Plains (CPUA) | Regional | Central | 17 | Zhengzhou | 9530.73 | 62,958.02 | 6.61 |
| Variables | Obs | Mean | Std. Dev. | Min | Max | VIF |
|---|---|---|---|---|---|---|
| Dependent Variable | ||||||
| Super-SBM Efficiency (LGUE) | 1651 | 0.785 | 0.245 | 0.158 | 1.234 | - |
| Input Indicators | ||||||
| Urban construction land area | 1651 | 203.393 | 257.831 | 21.000 | 1701.61 | - |
| Capital stock | 1651 | 125.462 | 122.291 | 11.372 | 1058.91 | - |
| Non-agricultural employment | 1651 | 82.857 | 117.473 | 7.740 | 951.85 | - |
| Total energy consumption | 1651 | 371.956 | 529.059 | 9.250 | 4365.32 | - |
| Technology expenditure ratio | 1651 | 25.188 | 20.634 | 1.827 | 178.571 | - |
| Desirable Outputs | ||||||
| Regional GDP | 1651 | 400.324 | 545.782 | 29.326 | 4605.84 | - |
| Local fiscal revenue | 1651 | 408.191 | 798.288 | 17.071 | 8312.50 | - |
| Green coverage rate | 1651 | 42.102 | 3.906 | 14.764 | 58.110 | - |
| Undesirable Outputs | ||||||
| CO2 emissions | 1651 | 433.212 | 407.840 | 18.690 | 3074.20 | - |
| Industrial wastewater | 1651 | 7.492 | 7.673 | 0.214 | 71.307 | - |
| SO2 emissions | 1651 | 310.190 | 455.151 | 2.120 | 5313.40 | - |
| Industrial solid waste | 1651 | 24.324 | 69.242 | 0.097 | 1859.87 | - |
| Explanatory Variables | ||||||
| Economic level | 1651 | 66.084 | 37.557 | 10.090 | 206.278 | 2.14 |
| Population density | 1651 | 624.958 | 357.660 | 95.000 | 3005.00 | 1.52 |
| Industrial structure | 1651 | 43.360 | 9.814 | 18.080 | 84.605 | 1.87 |
| Foreign direct investment | 1651 | 19.316 | 16.184 | 0.085 | 93.172 | 1.36 |
| Financial development level | 1651 | 2.548 | 1.058 | 0.764 | 7.976 | 1.79 |
| Year | G | Gw | Gb | Gt | CC | CPUA | MYR | PRD | SPUA | YRD |
|---|---|---|---|---|---|---|---|---|---|---|
| 2011 | 0.1768 | 0.0347 | 0.0510 | 0.0911 | 0.1493 | 0.1833 | 0.1610 | 0.1836 | 0.1335 | 0.1698 |
| 2014 | 0.1718 | 0.0331 | 0.0513 | 0.0874 | 0.1335 | 0.1968 | 0.1508 | 0.1673 | 0.1202 | 0.1733 |
| 2017 | 0.1775 | 0.0340 | 0.0367 | 0.1067 | 0.1377 | 0.1788 | 0.1668 | 0.1978 | 0.1869 | 0.1668 |
| 2020 | 0.1761 | 0.0327 | 0.0541 | 0.0893 | 0.1183 | 0.1647 | 0.1676 | 0.2017 | 0.1490 | 0.1621 |
| 2023 | 0.1716 | 0.0325 | 0.0660 | 0.0731 | 0.0901 | 0.1271 | 0.1539 | 0.1978 | 0.1758 | 0.1650 |
| Mean | 0.1754 | 0.0336 | 0.0522 | 0.0897 | 0.1230 | 0.1751 | 0.1597 | 0.1843 | 0.1560 | 0.1687 |
| Model Diagnostics | OLS | GWR | MGWR |
|---|---|---|---|
| Residual Sum of Squares (RSS) | 121.737 | 106.666 | 79.256 |
| Akaike Information Criterion (AICc) | 367.735 | 366.562 | 356.021 |
| 0.041 | 0.160 | 0.376 | |
| Adjusted R-squared | −0.007 | 0.064 | 0.247 |
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Chen, M.; Lee, H.; Xu, H.; Liu, L. Spatial Dynamics of Land Green Utilization Efficiency in Chinese Urban Agglomerations. Land 2026, 15, 1046. https://doi.org/10.3390/land15061046
Chen M, Lee H, Xu H, Liu L. Spatial Dynamics of Land Green Utilization Efficiency in Chinese Urban Agglomerations. Land. 2026; 15(6):1046. https://doi.org/10.3390/land15061046
Chicago/Turabian StyleChen, Meiqi, Hyukku Lee, Hongjin Xu, and LingLi Liu. 2026. "Spatial Dynamics of Land Green Utilization Efficiency in Chinese Urban Agglomerations" Land 15, no. 6: 1046. https://doi.org/10.3390/land15061046
APA StyleChen, M., Lee, H., Xu, H., & Liu, L. (2026). Spatial Dynamics of Land Green Utilization Efficiency in Chinese Urban Agglomerations. Land, 15(6), 1046. https://doi.org/10.3390/land15061046

