Spatio-Temporal Evolution Features and Impact Factors of Urban Expansion in Underdeveloped Cities: A Case Study of Nanchang, China
Abstract
:1. Introduction
2. Literature Review
2.1. Monitoring Urban Expansion
2.2. Uneven Urban Land Expansion
2.3. Driving Forces of Urban Expansion
3. Materials and Methods
3.1. Study Area
3.2. Data Sources and Processing
- (1)
- NPP-VIIRS nighttime light data derive from the US National Oceanic and Atmospheric Administration (https://www.noaa.gov/, accessed on 17 February 2022). In the data processing, the built-up area is extracted using the threshold segmentation method. The average digital number (DN) value for 2020 ranges from 0 to 190. After preprocessing the NPP-VIIRS data such as cropping, projection conversion, and correction, we compared data with Google Images, conducted experiments, and analyzed the selection of the threshold. We found that DN = 2 is the optimal threshold for binarization. Therefore, DN ≥ 2 was set as urban land and DN < 2 was set as non-urban land.
- (2)
- The land-use data for Nanchang City were obtained from the interpretation of Landsat TM/ETM+/OLI data from 1990 to 2020. 30 m resolution image for 1990 to 2020 covering the study area was downloaded (e.g., LT05_L1TP_122040_19901123_20220210_02_T1, LC08_L1TP_122040_20181127_20220216_01_T1) from the U.S. Geological Survey (http://www.usgs.gov/, accessed on 10 February 2022). The period for image selection is October to December, and the selected images are as high-quality as possible. The remote sensing images were first subjected to radiometric calibration, atmospheric correction, image mosaicking, and image cropping in ENVI5.3 software, and then the images were cut using the built-up area extracted from NTL data. Support vector machines (SVM) have been used several times in geographic analysis [43,86,87]. Many researchers have added spatial information (such as image texture) and comprehensively used data from different sensors to improve accuracy [43,88]. We use the SVM classification method by combining multi-feature information to classify land into construction land, water area, cultivated land, forest land, grassland, and unused land, then extracting Construction land. Quantitative accuracy evaluation was then performed on the confusion matrix. We found that the overall accuracy is 85.31–93.94% and the Kappa coefficient is 0.84–0.90 in all years, which meets data accuracy and consistency requirements.
- (3)
- For influencing factors, the study selected 16 exploratory variables from the two dimensions of driving force and resistance (Table 1), including decentralization (GDP [24,89], fixed asset investment [70], urban planning [65], local fiscal budget expenditures [64,90]), marketization (non-state-owned enterprise income [52,64]), globalization (foreign direct investment [75,76,77]), urbanization (urbanization rate [91,92], population density [93,94], distance to city center [60,61], distance to county center [60,61], infrastructure such as distance to national highway, distance to highway, and distance to railway [95]). Natural geographic resistance factors include elevation, slope, and distance from rivers [6,60,61].
3.3. Methods
3.3.1. Research Flowchart
3.3.2. Urban Expansion Index Analysis
3.3.3. Classification of Urban Expansion
3.3.4. Gravity-Center Shift Model
3.3.5. Analyzing the Strength of Influencing Factors by Geodetector
4. Results
4.1. Urban Expansion Characteristics in Nanchang
4.1.1. The Spatio-Temporal Characteristics of Urban Expansion in Nanchang
4.1.2. Urban Growth Type
4.1.3. Spatial Shift of the Gravity Center of Urban Construction Land in Nanchang
4.1.4. Nanchang Expansion Direction Analysis
- (1)
- Before 1990, the urban construction of Nanchang focused on the old inner-city area on the east side of the Ganjiang River, while urban expansion in the west and north of Nanchang was blocked by the Ganjiang River. From 1990 to 2000, Nanchang gradually focused on the development of crossing the river to the northwest. The NW direction expands the fastest, with an AGR of 12.51%, and the N, W, and SW directions expanded rapidly, with AGRs of 11.08%, 9.65%, and 9.17%, while the AGR in the E, NE, and SE directions are lower, only 3.46%, 4.53%, and 4.64%, respectively. During this period, Nanchang City successively opened bridges across the river, such as the Nanchang Bridge and Bayi Bridge, and planned and constructed key urban construction projects such as the Nanchang High-tech Development Zone, Economic and Technological Development Zone, and Changbei University Town, which promoted the cross-river outlying expansion of urban construction land.
- (2)
- From 2000 to 2010, urban construction land in Nanchang entered a period of outlying expansion. The government was committed to creating an urban pattern of “one river and two banks.” The scale of the construction of new districts on the west bank of the Ganjiang River continues to expand. The SW, NW, and S orientations expanded rapidly, with AGR of 15.64%, 13.06%, and 12.45%, respectively. As mentioned above, during this period, the overall urban planning of Nanchang City proposed the development strategy of “develop in the western area, expand in the eastern area, restrict in the northern area, and extend in the southern area”. “To develop in the western area” mainly refers to focusing on the development of the Honggutan New Area and Hongjiaozhou Area on the west bank of the Ganjiang River. “To expand in the eastern area” mainly refers to the eastward expansion of urban construction, focusing on the development of high-tech development zones, Yao Lake, and the surrounding areas of Aixi Lake. “To restrict in the northern area” means restriction of the northward expansion of urban construction. “To extend in the southern area” mainly refers to the extension of urban construction to the south along the Ganjiang River, focusing on the development of the Changnan Area, Xiaolan Economic Development Zone, Liantang Town, and other areas in the south.
- (3)
- From 2010 to 2020, the fastest expansion rate of urban land occurred in the SW direction, with an AGR of 12.45%. The AGR in the S and NE directions was 8.90% and 8.75%, respectively. Except for the increase in the AGR in the NE direction, the AGR in all other directions decreased. During this period, urban construction shifted from multi-directional expansion to the local key expansion of Honggutan and Xinjian Districts on the west bank of the Ganjiang River. The key expansion areas include Chaoyang New Town, Honggutan New Area, Jiulong Lake New Town, the New Economic Development Zone, and the Airport Economic Zone.
4.2. Factors Influencing Urban Land Expansion in Nanchang
4.2.1. The Value and Spatial Distribution of Impact Factors
4.2.2. The Strength of Influencing Factors
4.3. Nanchang’s Urban Planning as the Main Driving Force
5. Discussion and Conclusions
- (1)
- Over the past 30 years, urban construction land in Nanchang has continued to expand. The urban construction land area increased by 385.22 km2, with an expansion intensity of 0.18% and an AGR of 6.2%, which is a low-strength with medium-speed expansion. As the capital city of Jiangxi Province, Nanchang City has advantages in policy, economy, and transportation; its construction land expansion process is not only the result of rapid economic growth, but also the spatial expression of urbanization policy. However, in general, compared with developed cities such as Beijing, Shanghai, Guangzhou, and Shenzhen, Nanchang’s expansion rate is slower, and the expansion intensity is lower. Expansion occurred in three stages: slow-strength with low-speed expansion during 1990–2000, low-strength with medium-speed expansion during 2000–2010, and medium-strength with low-speed expansion during 2010–2020.
- (2)
- The types of spatial expansion of construction land are mainly edge expansion and outlying expansion, whereas infilling expansion is weak, which is a representative feature of the expansion of underdeveloped cities. Urban development relies mainly on the outward sprawl of the city to achieve rapid economic growth rather than the infill expansion of the inner city. Previous studies have shown that rapidly expanding cities are likely to grow with edge expansion, whereas small cities tend to grow in an outlying pattern [2,103]. The expansion types of Nanchang City have a typical pattern of edge expansion and outlying expansion, which is consistent with the previous results on the type of expansion for small cities and rapidly expanding cities. At the same time, it also shows that the future development of underdeveloped cities needs to adopt more infilling expansion to improve the quality of urban development.
- (3)
- From the perspective of the expansion direction and shift of the gravity center from 1990 to 2020, the center of gravity of urban land in Nanchang shifted 3552 m to the northwest, and the directions of SW, NW, S, N, and W expanded significantly.
- (4)
- The influence of each factor on the expansion of Nanchang’s land use varies significantly during the study period. Urban planning policy has the strongest influence and is the dominant driving factor for urban expansion, whereas natural geographic factors have the weakest influence. However, natural geographic conditions, such as resistance factors, have different effects at different stages. From 1990 to 2000, the resistance factor of natural geography (e.g., rivers, lakes, and mountains) had a significant impact on urban land expansion due to underdeveloped economic conditions. After 2000, since the rapid economic development and improvement of infrastructure, the expansion of urban land in Nanchang gradually overcame the obstacles of natural geographic factors. From the perspective of driving factors, urban planning and the urbanization rate played a significant role from 1990 to 2000. From 2000 to 2010, urban expansion is dominated by decentralization, urbanization, globalization, and marketization, while urban planning policies still maintained a significant positive impact. From 2010 to 2020, globalization, marketization, and decentralization continued to play an important role; however, the strength of their roles decreased, and the active role of urban planning policies was still significant.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Time | Number of Counties | Number of District | Name of County or District | Administrative Division Changes | GDP (Billion Yuan) |
---|---|---|---|---|---|
1983 | 4 | 5 | Donghu District, Xihu District, Qingyunpu District, Wanli District, Suburban District, Nanchang County, Xinjian County, Jinxian County, Anyi County | Anyi County and Jinxian County were incorporated into Nanchang City | 21.2 |
2002 | 4 | 5 | Donghu District, Xihu District, Qingyunpu District, Wanli District, Qingshanhu District, Nanchang County, Xinjian County, Jinxian County, Anyi County | Suburban District renamed Qingshan Lake District | 552.37 |
2015 | 3 | 6 | Donghu District, Xihu District, Qingyunpu District, Wanli District, Qingshanhu District, Xinjian District, Nanchang County, Jinxian County, Anyi County | Transforming Xinjian county into an urban district | 3778.82 |
2019 | 3 | 6 | Donghu District, Xihu District, Qingyunpu District, Qingshanhu District, Honggutan District, Xinjian District, Nanchang County, Jinxian County, Anyi County | Withdraw Wanli District and merge it into Xinjian District; the newly established Honggutan District | 5536.66 |
Planning | Related Information |
---|---|
The Urban Master Plan of Nanchang City (1981–2000) | The development of the land “is centered on the inner-city area. The Changbei area and Luojia Industrial Zone should closely connect with the inner-city area, and set up some satellite towns such as Wanli, Shigang, and Liantang on the periphery.” |
Land Use Plan of Nanchang City (1997–2010) | “Changnan City will develop moderately, Changbei City will be built in a centralized manner and will be scaled, and the new construction land quotas will be mainly arranged in the towns such as Dongxin and Liantang; basically, a city development pattern of ‘one river and two banks’ will be formed.” |
The Urban Master Plan of Nanchang City (2001–2020) | Put forward the development strategy “develop in the western area, expand in the eastern area, restrict in the northern area, extension in the southern area.” “With the development of the central city as the core and the traffic line as the main axis (for outward expansion), the central city should first develop Changbei New City, and arranges a large number of small and medium-sized towns on the periphery.” |
Land Use Plan of Nanchang City (2006–2020) | Efforts will be made to form an overall spatial pattern of “taking the Ganjiang River as the main axis, forming one river with two banks, two city cores in the north and the south, developing east and west urban areas around the Ganjiang River, and forming group-like and network-like development.” |
Nanchang’s Fourteenth Five-Year Plan for National Economic and Social Development and Outline of Long-term Goals for 2035 | Establish the urban spatial development orientation of “Nanchang develops to the south,” form a metropolis with mountains, rivers, and lakes, and build a spatial layout of “leading by one (Gangjiang) river, integrating the north and south parts of the city, connecting three rings (connecting the urban areas with three rapid traffic ring lines in the city), and surrounded by five stars (the periphery of the city consists of five sub-center groups and functional areas that are closely connected with the main urban area)” |
Appendix B
1 | The base map is the administrative division map of 2020. Honggutan District is a new district set aside from the Xinjian District in 2019, so no relevant available data is available. The values of Honggutan District shown in the Figure are historical data of the Xinjian District. |
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Variable Category | Description | Variable | Variable Types/Assignments | Sources |
---|---|---|---|---|
Independent variable | Urban construction land expansion area (km2) | Land expansion(Y) | Use the natural breakpoint method to divide into six grades | Extracted from remote sensing images |
Globalization | Foreign direct investment (yuan) | FDI (X1) | Use the natural breakpoint method to divide into six grades | Nanchang Statistical Yearbook |
Marketization | Non-state-owned enterprise income (100 million yuan) | NSOEI (X2) | Use the natural breakpoint method to divide into six grades | |
Decentralization | Fixed asset investment (100 million yuan) | FAI (X3) | Use the natural breakpoint method to divide into six grades | |
Public finance expenditure (100 million yuan) | PFE (X4) | Use the natural breakpoint method to divide into six grades | ||
GDP (10,000 yuan/km2) | GDP (X5) | Use the natural breakpoint method to divide into six grades | GDP Grid dataset from the China Resources and Environmental Science Data Center (https://www.resdc.cn/, accessed on 20 June 2022) | |
Urban planning | UP (X6) | Binary variables (0: Non-planned urban area; 1: Planned urban area) | The Urban Master Plan of Nanchang City (1981–2000), The Urban Master Plan of Nanchang City (2001–2020), The Urban Master Plan of Nanchang County (2008–2030), The Urban Master Plan of Wanli District (2013–2030), The Urban Master Plan of Nanchang County (2011–2030), The Urban Master Plan of Anyi County (2010–2030), The Urban Master Plan of Jinxian County (2010–2030) | |
Urbanization | Urbanization rate | UR (X7) | Use the natural breakpoint method to divide into six grades | Nanchang Statistical Yearbook |
Population density (10,000 people/km2) | PD (X8) | Use the natural breakpoint method to divide into six grades | Population Grid dataset from the China Resources and Environmental Science Data Center (https://www.resdc.cn/, accessed on 20 June 2022) | |
Distance to the city center (m) | DisTocity (X9) | Use the natural breakpoint method to divide into six grades | City center map and county center map computed using the Euclidean Distance and Zonal Statistics tool in ArcGIS 10.2. (original map sourced National Catalogue Ser-vice For Geographic Information, https://www.webmap.cn/, accessed on 20 June 2022) | |
Distance to county (District) center (m) | DisTocounty (X10) | Use the natural breakpoint method to divide into six grades | ||
Distance to the national way (m) | DisTonationalway (X11) | Use the natural breakpoint method to divide into six grades | National way, highway, and railway maps were calculated using the Euclidean Distance Analysis tool in ArcGIS 10.2 (original map sourced from National Catalogue Service For Geographic Information, https://www.webmap.cn/, accessed on 20 June 2022) | |
Distance to the highway (m) | DisTohighway (X12) | Use the natural breakpoint method to divide into six grades | ||
Distance to railway (m) | DisTorailway (X13) | Use the natural breakpoint method to divide into six grades | ||
Natural geographic conditions | Elevation (m) | Elevation (X14) | Use the natural breakpoint method to divide into six grades | Geospatial Data Cloud (http://www.gscloud.cn, accessed on 20 June 2022) |
Slope (Degree) | Slope (X15) | Use the natural breakpoint method to divide into six grades | Slope map calculated using the Slope tool in ArcGIS 10.2 | |
Distance to the river (m) | DisToriver (X16) | Use the natural breakpoint method to divide into six grades | River map computed using the Euclidean Distance Analysis and Zonal Statistics tool in ArcGIS 10.2 (original map sourced from National Catalogue Service For Geo-graphic Information, https://www.webmap.cn/, accessed on 20 June 2022) |
Period | Increased Area (km2) | AI (km2) | UEI/% | AGR (%) | Stage |
---|---|---|---|---|---|
1990–1995 | 33.41 | 6.68 | 0.09 | 7.58 | low-strength with medium-speed |
1995–2000 | 17.32 | 3.46 | 0.05 | 2.99 | low-strength with low-speed |
1990–2000 | 50.73 | 5.07 | 0.07 | 5.26 | low-strength with low-speed |
2000–2005 | 58.83 | 11.77 | 0.16 | 7.94 | low-strength with medium-speed |
2005–2010 | 75.59 | 15.12 | 0.21 | 7.08 | medium strength with medium-speed |
2000–2010 | 134.42 | 13.44 | 0.19 | 7.51 | low-strength with medium-speed |
2010–2015 | 134.25 | 26.85 | 0.37 | 8.66 | medium strength with high speed |
2015–2020 | 65.82 | 13.16 | 0.18 | 3.13 | low-strength with low-speed |
2010–2020 | 200.07 | 20.01 | 0.28 | 5.86 | medium-strength with low-speed |
1990–2020 | 385.22 | 12.84 | 0.18 | 6.20 | low-strength with medium-speed |
Variable Category | Variable | q Statistic | ||
---|---|---|---|---|
1990–2000 | 2000–2010 | 2010–2020 | ||
Globalization | FDI (X1) | 0.138 *** | 0.217 *** | 0.100 *** |
Marketization | NSOEI (X2) | 0.163 *** | 0.212 *** | 0.033 *** |
Decentralization | FAI (X3) | 0.156 *** | 0.116 *** | 0.055 *** |
PFE (X4) | 0.023 *** | 0.180 *** | 0.043 *** | |
GDP (X5) | 0.132 *** | 0.311 *** | 0.086 *** | |
UP (X6) | 0.395 *** | 0.504 *** | 0.455 *** | |
Urbanization | UR (X7) | 0.262 *** | 0.187 *** | 0.097 *** |
PD (X8) | 0.150 *** | 0.230 *** | 0.066 *** | |
DisTocity (X9) | 0.192 *** | 0.202 *** | 0.255 *** | |
DisTocounty (X10) | 0.234 *** | 0.305 *** | 0.207 *** | |
DisTonationalway (X11) | 0.068 *** | 0.075 *** | 0.077 *** | |
DisTohighway (X12) | 0.022 *** | 0.036 *** | 0.038 *** | |
DisTorailway (X13) | 0.086 *** | 0.115 *** | 0.147 *** | |
Natural geographic conditions | Elevation (X14) | 0.021 *** | 0.011 *** | 0.018 *** |
Slope (X15) | 0.009 *** | 0.012 *** | 0.011 *** | |
DisToriver (X16) | 0.021 *** | 0.024 *** | 0.023 *** |
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Liao, K.; Huang, W.; Wang, C.; Wu, R.; Hu, Y. Spatio-Temporal Evolution Features and Impact Factors of Urban Expansion in Underdeveloped Cities: A Case Study of Nanchang, China. Land 2022, 11, 1799. https://doi.org/10.3390/land11101799
Liao K, Huang W, Wang C, Wu R, Hu Y. Spatio-Temporal Evolution Features and Impact Factors of Urban Expansion in Underdeveloped Cities: A Case Study of Nanchang, China. Land. 2022; 11(10):1799. https://doi.org/10.3390/land11101799
Chicago/Turabian StyleLiao, Kaihuai, Wenyan Huang, Changjian Wang, Rong Wu, and Yang Hu. 2022. "Spatio-Temporal Evolution Features and Impact Factors of Urban Expansion in Underdeveloped Cities: A Case Study of Nanchang, China" Land 11, no. 10: 1799. https://doi.org/10.3390/land11101799
APA StyleLiao, K., Huang, W., Wang, C., Wu, R., & Hu, Y. (2022). Spatio-Temporal Evolution Features and Impact Factors of Urban Expansion in Underdeveloped Cities: A Case Study of Nanchang, China. Land, 11(10), 1799. https://doi.org/10.3390/land11101799