Analysis of the Spatio-Temporal Patterns of Shrinking Cities in China: Evidence from Nighttime Light
Abstract
:1. Introduction
2. Materials
2.1. Study Area
2.2. Nighttime Light Data
3. Methods
3.1. Identifying Shrinking Cities
3.2. Measuring Urban Shrinkage Intensity
3.3. Spatio-Temporal Evolution Process of Shrinking Cities
3.3.1. Standard Deviational Ellipse (SDE)
3.3.2. Spatial Autocorrelation
4. Results
4.1. Spatial Distribution and Urban Shrinkage Intensity of Shrinking Cities
4.2. Spatial-temporal Evolution of Shrinking Cities
4.3. Analysis of Spatial pattern of Shrinking Cities/Growing Cities
5. Discussion
5.1. Validation of Identified Results
5.2. Chinese Shrinking Cities Pattern Compared to That of Growing Cities
5.3. Contributions and Limitations
5.4. Policy Implications
5.4.1. Inspirations from EU Shrinking Cities Related Projects
5.4.2. For the NEC and NWC Economic Regions
5.4.3. Playing the Leading Role of Growth Poles in Shrinking Regions
6. Conclusions
- About 34.9% of cities in China have experienced or are experiencing shrinking, which is widely distributed throughout the entire country. The urban shrinkage phenomenon is most severe in northeast and northwest China.
- Temporally, the number of shrinking cities fluctuates, and 2015 and 2020 are the peak shrinkage years. Spatially, the shrinking cities show a northeast-to-southwest distribution, and spatial dispersion is clear. The shrinking center of gravity moved northwest from Zhumadian, Henan Province to Yan’an, Shaanxi Province, and then moved southeast to Shiyan, Hubei Province.
- The shrinkage and growth of cities appear to have spatial autocorrelation. The northeast region is the shrinkage hotspot during the first two stages, and the southwest part of SWC is the growth aggregation area. Throughout the entire study period, the aggregation degree of shrinkage continuously decreased (L-L) and the aggregation trend of growth continuously increased (H-H), indicating that the radiative driving effect of the growth pole is further enhanced. The severe shrinkage in the northeast area was slightly alleviated in the late stage. The impact of COVID-19 on areas with export-oriented economies, such as the southeast coast, cannot be ignored.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Year | City | |
---|---|---|
2012 | 337 | Beijing |
2013 | 293 | Shanghai |
2014 | 308 | Beijing |
2015 | 359 | Beijing |
2016 | 603 | Shanghai |
2017 | 398 | Shanghai |
2018 | 470 | Shanghai |
2019 | 528 | Shanghai |
2020 | 506 | Shenzhen |
Authors | Definitions of Shrinking Cities |
---|---|
Oswalt and Rieniets [3] | Cities where the total population loss is more than 10% or the average annual population loss for three consecutive years is more than 1%. |
Shrinking Cities International Research Network (SCIRN) [50,51] | Cities with a population of more than 10,000, experienced two years of population loss. |
Wu and Li [52] | Ten years later, the urban population has decreased, and the population growth rate has been negative for more than three natural years. |
Time Span | Area/km2 | Long Axis/km | Short Axis/km | Rotation Angle/Degree |
---|---|---|---|---|
2012–2014 | 3,880,182 | 1041 | 1185 | 18 |
2015–2017 | 5,446,731 | 4090 | 3947 | 84 |
2018–2020 | 5,279,090 | 1269 | 1323 | 24 |
2012–2014 | 2015–2017 | 2018–2020 | |
---|---|---|---|
Moran’s I | 0.049 | 0.081 | 0.183 |
z-score | 7.958 | 10.091 | 22.759 |
p-value | 0 | 0 | 0 |
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Wang, Q.; Xin, Z.; Niu, F. Analysis of the Spatio-Temporal Patterns of Shrinking Cities in China: Evidence from Nighttime Light. Land 2022, 11, 871. https://doi.org/10.3390/land11060871
Wang Q, Xin Z, Niu F. Analysis of the Spatio-Temporal Patterns of Shrinking Cities in China: Evidence from Nighttime Light. Land. 2022; 11(6):871. https://doi.org/10.3390/land11060871
Chicago/Turabian StyleWang, Qi, Zhongling Xin, and Fangqu Niu. 2022. "Analysis of the Spatio-Temporal Patterns of Shrinking Cities in China: Evidence from Nighttime Light" Land 11, no. 6: 871. https://doi.org/10.3390/land11060871
APA StyleWang, Q., Xin, Z., & Niu, F. (2022). Analysis of the Spatio-Temporal Patterns of Shrinking Cities in China: Evidence from Nighttime Light. Land, 11(6), 871. https://doi.org/10.3390/land11060871