Multidimensional Identification of County-Level Shrinkage by Improved Mapping of Urban Entities Based on Time-Series Remote Sensing Data: A Case Study of Yangtze River Delta Urban Agglomerations
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Area and Data Sources
2.2. Data and Methods
2.2.1. Remote Sensing Products and Preprocessing
2.2.2. Identification of Urban Entities
2.2.3. Quantification of Multidimensional Shrinking
2.2.4. Spatiotemporal Pattern Analysis
3. Results
3.1. Spatiotemporal Variations in Urban Entities
3.2. Multidimensional County-Level Shrinking Dynamics
3.3. Spatiotemporal Patterns of Urban Shrinking in the Yangtze River Delta
4. Discussion
4.1. Spatiotemporal Characteristics of County-Level Shrinking in the Yangtze River Delta
4.2. Optimal Dimension for Remote-Sensing-Based County-Level Shrinking Monitoring
4.3. Uncertainty and Management
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
CLCD | China Land Cover Dataset |
YRD-UA | Yangtze River Delta urban agglomerations |
DMSP-OLS | Defense Meteorological Satellite Program Operational Linescan System |
NPP-VIIRS | National Polar-orbiting Partnership Visible Infrared Imaging Radiometer Suite |
GDP | gross domestic product |
LISA | local indicators of spatial association |
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Provincial-Level | City (Municipality and Prefecture-Level) | County Number |
---|---|---|
Shanghai | Shanghai | 16 |
Jiangsu | Nanjing, Wuxi, Changzhou, Suzhou, Nantong, Yancheng, Yangzhou, Zhenjiang, Taizhou | 68 |
Zhejiang | Hangzhou, Ningbo, Wenzhou, Jiaxing, Huzhou, Shaoxing, Jinhua, Zhoushan, Taizhou | 75 |
Anhui | Hefei, Wuhu, Ma’anshan, Tongling, An’qing, Chuzhou, Chizhu, Xuancheng | 56 |
Source | Description | Spatial Resolution | Usage |
---|---|---|---|
NPP-VIIRS-like | Nighttime light raster | 500 m | Average brightness calculation from economic dimension |
CLCD | Land use maps | 30 m | Urban entity identification, built-up area calculation for empty city index from population dimension, area calculation of ecological land and non-construction land for ecological land proportion from space dimension |
LandScan Global | Population raster | 1000 m | Total population calculation for empty city index from population dimension |
City | Radius (km) | Criterion |
---|---|---|
Shanghai | 9.8 | The commuting distance listed in the report. |
Nanjing | 8.8 | |
Wuxi | 7.4 | |
Changzhou | 7 | |
Suzhou | 7.9 | |
Nantong | 8.6 | |
Hangzhou | 8.1 | |
Ningbo | 7.3 | |
Wenzhou | 6.6 | |
Shaoxing | 7.9 | |
Yancheng, Jiaxing, Jinhua, Taizhou_Z, Hefei | 8.3 | The average commuting distance of megacities listed in the report. |
Yangzhou, Zhenjiang, Taizhou_J, Huzhou, Wuhu, An’qing, Chuzhou | 7.7 | The average commuting distance of Type I large cities listed in the report. |
Zhoushan, Ma’anshan, Tongling, Chizhu, Xuancheng | 8 | The average commuting distance of Type II large cities listed in the report. |
Shrinking Trajectories | Subtype | Characteristic |
---|---|---|
Continuous shrinkage | / | Shrinking in all four 5-year periods (2003–2023) |
Episodic shrinkage | Periodic shrinkage | Shrinking over the period, with a stable or even growing rate in at least one 5-year period (shrinking in 2008–2023 or 2013–2023) |
Discontinued shrinkage | Shrinking over the period, with a stable or even growing rate in at least one 5-year period (shrinking in 2003–2018, 2003–2013 or 2008–2018) | |
Temporary shrinkage | / | Shrinking in at least one 5-year period or discontinued for two 5-year periods |
Consistency | Dimension | Period | Number of County-Level Units |
---|---|---|---|
Three-dimensional consistency | Economic, population and space dimensions | 2003–2008 | 0 |
2008–2013 | 1 | ||
2013–2018 | 9 | ||
2018–2023 | 14 | ||
Two-dimensional consistency | Economic and population dimensions | 2003–2008 | 52 |
2008–2013 | 8 | ||
2013–2018 | 17 | ||
2018–2023 | 6 | ||
Economic and space dimensions | 2003–2008 | 1 | |
2008–2013 | 1 | ||
2013–2018 | 6 | ||
2018–2023 | 9 | ||
Population and space dimensions | 2003–2008 | 0 | |
2008–2013 | 24 | ||
2013–2018 | 43 | ||
2018–2023 | 78 | ||
None | Economic dimension | 2003–2008 | 66 |
2008–2013 | 4 | ||
2013–2018 | 12 | ||
2018–2023 | 0 | ||
Population dimension | 2003–2008 | 33 | |
2008–2013 | 87 | ||
2013–2018 | 70 | ||
2018–2023 | 38 | ||
Space dimension | 2003–2008 | 0 | |
2008–2013 | 9 | ||
2013–2018 | 23 | ||
2018–2023 | 53 |
Consistency | Dimension | Province | Number of County-Level Units |
---|---|---|---|
Three-dimensional consistency | Economic, population and space dimensions | Shanghai | 2 (all temporary) |
Jiangsu | 7 (1 periodic and 6 temporary) | ||
Zhejiang | 3 (all temporary) | ||
Anhui | 7 (all temporary) | ||
Two-dimensional consistency | Economic and population dimensions | Shanghai | 2 (all temporary) |
Jiangsu | 6 (all temporary) | ||
Zhejiang | 4 (all temporary) | ||
Anhui | 4 (1 periodic and 3 temporary) | ||
Economic and space dimensions | Shanghai | 1 (all temporary) | |
Jiangsu | 15 (all temporary) | ||
Zhejiang | 17 (all temporary) | ||
Anhui | 16 (1 periodic and 15 temporary) | ||
Population and space dimensions | Shanghai | 4 (2 periodic and 2 temporary) | |
Jiangsu | 7 (all periodic) | ||
Zhejiang | 6 (1 periodic and 5 temporary) | ||
Anhui | 2 (1 periodic and 1 temporary) | ||
None | Economic, population, or space dimension | Shanghai | 1 |
Jiangsu | 4 | ||
Zhejiang | 10 | ||
Anhui | 3 |
Dimension | Period | Moran’s I | p-Value |
---|---|---|---|
Economic | 2003–2008 | 0.10 | 0.011 |
2008–2013 | −0.03 | 0.47 | |
2013–2018 | 0.00 | 0.36 | |
2018–2023 | 0.00 | 0.06 | |
Population | 2003–2008 | 0.11 | 0.005 |
2008–2013 | 0.28 | 0.000 | |
2013–2018 | 0.00 | 0.13 | |
2018–2023 | 0.11 | 0.011 | |
Space | 2003–2008 | 0.00 | 0.009 |
2008–2013 | 0.07 | 0.06 | |
2013–2018 | 0.14 | 0.000 | |
2018–2023 | 0.19 | 0.000 |
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Chen, L.; Liu, M.; Man, W. Multidimensional Identification of County-Level Shrinkage by Improved Mapping of Urban Entities Based on Time-Series Remote Sensing Data: A Case Study of Yangtze River Delta Urban Agglomerations. Remote Sens. 2025, 17, 2536. https://doi.org/10.3390/rs17142536
Chen L, Liu M, Man W. Multidimensional Identification of County-Level Shrinkage by Improved Mapping of Urban Entities Based on Time-Series Remote Sensing Data: A Case Study of Yangtze River Delta Urban Agglomerations. Remote Sensing. 2025; 17(14):2536. https://doi.org/10.3390/rs17142536
Chicago/Turabian StyleChen, Lin, Mingyue Liu, and Weidong Man. 2025. "Multidimensional Identification of County-Level Shrinkage by Improved Mapping of Urban Entities Based on Time-Series Remote Sensing Data: A Case Study of Yangtze River Delta Urban Agglomerations" Remote Sensing 17, no. 14: 2536. https://doi.org/10.3390/rs17142536
APA StyleChen, L., Liu, M., & Man, W. (2025). Multidimensional Identification of County-Level Shrinkage by Improved Mapping of Urban Entities Based on Time-Series Remote Sensing Data: A Case Study of Yangtze River Delta Urban Agglomerations. Remote Sensing, 17(14), 2536. https://doi.org/10.3390/rs17142536