1. Introduction
Cities are the center of economic activities and cultural exchanges, representing the economic and cultural conditions of a region [
1]. Therefore, urbanization is an extremely important indicator when evaluating the level of development in a region [
2]. Urbanization is mainly manifested by the increase in the proportion of urban population to the total population and the expansion of urban land area [
3,
4]. At the same time, it also involves a series of processes such as industrial structure upgrading and natural environment development [
5,
6,
7]. Currently, the measurement of urbanization level in a region mainly includes two indicators: land urbanization and population urbanization [
8,
9]. Urban development requires a large amount of land and population [
10]. In the past few decades, urban land has expanded rapidly around the world, and the total area of cities has multiplied [
10,
11]. Currently, more than half of the world’s population lives in urban areas, and this number is expected to increase to 5 billion by 2030 [
12].
During urban expansion, a large amount of cultivated land, forest land, and shrubland is converted to urban land use [
13], which leads to many environmental problems such as urban heat islands [
14], increased carbon emissions [
15], and urban waterlogging [
16], which pose a serious threat to local sustainable development [
17,
18]. Many scholars have studied the types and spatial forms of urban expansion, as well as the driving forces of urban expansion, in order to provide references for sustainable urban development [
19]. The LEI (Landscape Expansion Index) is an index based on the spatiotemporal dynamics of urban land growth. The LEI divides urban expansion types into three categories based on the spatial relationship between newly added urban land and existing urban land: the infilling type, the edge-expansion type, and the outlying type [
20]. The LEI can not only quantify the landscape patterns of urban construction land growth but also analyze the process of landscape pattern changes between multiple time points from the perspective of urban landscape research [
21]. Jiao proposed an inverse S-shaped urban land density function, which is a function describing the attenuation of urban construction land density with distance. This function can quantify the spatial form of urban expansion [
22]. GeoDetector is a commonly used statistical plugin that can be used to detect spatial heterogeneity of geographic factors and reveal their driving forces [
23]. Due to its ability to reflect the interaction between driving factors and response variables, GeoDetector has been widely applied in fields such as urban development and ecological security [
24,
25,
26]. Liu et al. and Xu et al. used the geographic detector to analyze the driving factors of urban spatial expansion and proposed that population is a key factor affecting urban expansion [
21,
27].
As the cost of childbirth rises and attitudes toward childbirth change, China’s birth rate has sharply declined [
28]. From a national perspective, in 2022, China’s total population experienced negative growth for the first time, indicating that China’s population problem has further intensified. Currently, China faces a series of demographic problems such as gender imbalance [
29,
30], uneven distribution of population [
31,
32], aging population [
33], and decreasing working-age population [
34,
35]. In the past few decades, due to factors such as abundant labor [
36] and resources [
37], convenient transportation [
38,
39], etc., multinational companies have deployed a large number of labor-intensive and resource-oriented industries in China’s coastal regions. However, with the increase in China’s labor costs and the decrease in the working-age population, the demographic dividend has gradually disappeared, and manufacturing has begun to shift to Southeast Asia, affecting China’s economic development [
40].
In addition to the impact on economic development, the accelerated process of population aging and the decline in the working-age population will increase social burdens [
41,
42]. Moreover, the growing number of elderly people due to aging has given rise to a huge service market. However, due to low entry barriers, inadequate punishment, regulation, and management measures in this industry, the quality of service personnel varies greatly, and there are often instances of elder abuse [
33,
43,
44]. To tackle the aging population problem, the government should increase corresponding investment and establish an effective and strict set of industry regulations [
33,
43]. To address the shortage of working-age population, the promotion of automation and intelligent technology and the development of high-tech industries are urgent. At the urban level, with the improvement in transportation infrastructure, the resistance for rural working-age population to move to cities for employment decreases [
45]. A large rural working-age population actively migrate to cities for higher pay and better social welfare [
46]. Therefore, urban population growth is rapid, urban demand for land increases, and urban spatial expansion is fast [
47]. With the decrease in rural population migration and birth rates, the urban population growth rate slows down, and the rate of urban spatial expansion gradually decreases. Currently, in many parts of China, young people go out to work while the elderly and children stay in rural areas, resulting in a phenomenon of rural hollowness [
48]. Some cities are also likely to face a shortage of population. To cope with this change, urban planners and managers should plan urban land reasonably, improve land use efficiency, promote high-quality urban development, and formulate plans and policies that are conducive to sustainable urban development.
The expansion of urban land area is the main indicator of urban spatial expansion [
49]. There are three main categories of assessment methods for urban expansion: the first is the boundary assessment method, which defines the “city” based on administrative division data. This method can evaluate urban expansion over a long period but cannot distinguish between urban and rural areas within the “city” [
50]. The second is the threshold method, which uses nighttime light data to build a threshold segmentation model, dividing urban and rural areas in remote sensing images, evaluating the urban extent, and calculating the expansion intensity. This method can distinguish between urban and rural areas within the “city” but has limitations in data availability for conducting long-term urban expansion assessments and low segmentation accuracy [
51]. The third is the function equation method, which is based on land use data, establishes a function model, defines the urban boundary, and analyzes urban spatial form. Compared to the other two methods, this approach is relatively accurate and suitable for long-term urban expansion assessments. Xuecao Li et al. used global impervious surface data to build a global urban boundary dataset, employing kernel density analysis and domain expansion algorithm [
52]. Jianxin Yang et al. explored the process of urban expansion and analyzed urban spatial form based on land use data and Gaussian function model [
53]. Jiao Limin constructed the urban land density function based on land use data for 1900, 2000, and 2010 to define the urban scope [
22].
In the past few decades, China’s economic growth has provided strong support for urbanization [
54,
55,
56]. The process of land urbanization and population urbanization in China is rapidly advancing [
57,
58,
59]. To reveal the relationship between urban expansion and population density changes in the development process of China, this paper selected 34 cities from over 300 cities in China. Based on land use data from 2000 to 2020, the spatial and temporal differences of urban expansion were analyzed using inverse s-shaped function model and Pearson correlation coefficient. On this basis, the correlation between urban expansion and population density changes was explored, providing a reference for sustainable urban development in China.
3. Results
3.1. Land Use Change
According to the land use data during the study period, an analysis of the dynamic changes in land use and land cover is presented in
Table 2,
Table 3 and
Table 4. For detailed parameters, please refer to
Table A1 (
Appendix A).
According to the land use transfer matrix (
Table 2), land use type area (
Table 3) and land use type proportion (
Table 4), the land use changes from 2000 to 2020 were analyzed. The areas of impervious land and cropland had the highest changes, with an increase of 22,320.46 km
2 for impervious land and a decrease of 22,001.84 km
2 for cropland. The increase in impervious land area was mainly due to the conversion from cropland. Cropland decreased by 22,001.84 km
2, resulting in a decrease in its proportion from 64.2% to 58.7%. Forest increased by 2329.42 km
2, with its proportion rising from 17.53% to 18.11%. The proportion of impervious land increased from 9.42% to 15.00%, with an increase of 22,320.46 km
2. Grassland decreased by 3194.07 km
2, resulting in a decrease in its proportion from 6.38% to 5.59%. Wetland increased by 690.70 km
2, with its proportion rising from 2.30% to 2.48%. Shrub, snow, barren, and wetland had relatively small areas and insignificant changes.
3.2. Changes in Population Density
Population density data was extracted from the WorldPOP dataset to analyze changes in urban population density. The detailed data are shown in
Table 5.
In 2000, the average urban population density of sample cities was 3355 people/km2. Heze had the smallest population density in 2032 people/km2, and Nanning had the highest population density of 7353 people/km2. In 2005, the average urban population density of sample cities was 2913 people/km2. Heze had the smallest population density of 1695 people/km2, and Nanning had the highest population density of 6010 people/km2. In 2010, the average urban population density of sample cities was 2461 people/km2. Heze had the smallest population density of 1429 people/km2, and Nanning had the highest population density of 4662 people/km2. In 2015, the average urban population density of sample cities was 2229 people/km2. Heze had the smallest population density of 1234 people/km2, and Chengdu had the highest population density of 4377 people/km2. In 2020, the average urban population density of sample cities was 2202 people/km2. Heze had the smallest population density of 1113 people/km2, and Shanghai had the highest population density of 4893 people/km2.
The mean rate of change in urban population density between 2000 and 2005 was −0.026. Xi’an had the fastest decrease in population density, while Datong had the slowest. The mean rate of change in urban population density between 2005 and 2010 was −0.032. Only Beijing experienced positive growth in urban population density. Hefei had the fastest decrease in population density, while Beijing had the slowest. The mean rate of change in urban population density between 2010 and 2015 was −0.022. Six cities, including Changzhou, Wuxi, Beijing, Chengdu, Tianjin, and Shanghai, experienced positive growth in urban population density. Suzhou(a) had the fastest decrease in population density, while Shanghai had the slowest. The mean rate of change in urban population density between 2015 and 2020 was −0.006. Several cities, including Harbin, Zhengzhou, Xi’an, Huhhot, Jinan, Suzhou(a), Wuxi, Changzhou, Tianjin, Beijing, Chengdu, and Shanghai, experienced positive growth in population density. Fuyang had the fastest decrease in population density, while Beijing had the slowest.
3.3. Urban Spatial Expansion and Changes in Population Density
Based on the inverse S-shaped function, the urban land density function of the sample city is calculated. The mean R2 value of the function is 0.99, with a minimum value of 0.95, indicating high fitting accuracy and accurate reflection of changes in urban land density.
- (1)
The parameter “a” is the slope parameter of the function, which reflects the compactness of urban space. The higher the value of parameter “a”, the higher the ratio of land density between the core area and suburban area, and the more compact the urban space. In the sample city, the range of parameter “a” is 2.63–6.00. During the study period, the average value of parameter “a” in the sample city decreased year by year, with values of 4.43 (2000), 4.25 (2005), 4.15 (2010), 4.03 (2015), and 4.00 (2020), indicating a transformation from compact to loose urban spatial form.
- (2)
Parameter “c” represents the land density value of the urban fringe area, with a range of 0.02–0.44 in the sample city. Cities such as Tianjin, Beijing, and Liaoyang have high land density values in their urban fringe areas due to urban expansion leading to urban integration.
- (3)
Parameter “d” represents the radius of the city. In the sample cities, it includes large cities with radii exceeding 40 km, such as Beijing and Shanghai, as well as small cities with radii less than 10 km. The range of city radius in the sample cities is between 5.00 and 44.28 km. The average value of city radius has been increasing year by year, with values of 11.61 (2000), 13.29 (2005), 15.35 (2010), 17.01 (2015), and 17.95 (2020).
Between 2000 and 2005, the average urban spatial expansion rate was 0.026, with Harbin having the smallest rate at 0.011 and Suzhou(a) having the largest rate at 0.063. There was a strong negative correlation between the urban spatial expansion rate and population density change rate, with a Pearson correlation coefficient of −0.655. Between 2005 and 2010, the average urban spatial expansion rate was 0.029, with Kaifeng having the smallest rate at 0.009 and Hefei having the largest rate at 0.063. There was a strong negative correlation between the urban spatial expansion rate and population density change rate, with a Pearson correlation coefficient of −0.760. Between 2010 and 2015, the average urban spatial expansion rate was 0.022, with Tianjin having the smallest rate at 0.010 and Suzhou(b) having the largest rate at 0.040. There was a very strong negative correlation between the urban spatial expansion rate and population density change rate, with a Pearson correlation coefficient of −0.868. Between 2015 and 2020, the average urban spatial expansion rate was 0.012, with Anshan having the smallest rate at 0.002 and Fuyang having the largest rate at 0.028. There was a strong negative correlation between the urban spatial expansion rate and population density change rate, with a Pearson correlation coefficient of −0.813.
3.4. Urban Spatial Expansion Form and Changes in Population Density
Calculation urban spatial compactness Kp, where Kp represents the ratio of the range of decrease in urban land density to the city radius and can be used to analyze urban spatial growth patterns. If the increase in Kp value exceeds 0.01 compared to the previous time point, the urban spatial growth pattern is the loose type; if the decrease in Kp value exceeds 0.01, the urban spatial growth pattern is the compact type; if the change in Kp value is less than 0.1, it is considered the stable type. The correlation between urban space expansion and population density changes is shown in
Figure 5, while the relationship between urban spatial expansion patterns and population density changes is illustrated in
Figure 6.
Between 2000 and 2020, the average Kp values of 34 sample cities were 0.3069 (2000), 0.3195 (2005), 0.3254 (2010), 0.3334 (2015), and 0.3353 (2020). Only five cities, Datong, Xi’an, Handan, Huhhot, and Nanning, had decreasing Kp values.
Specifically, from 2000 to 2005, the average Kp value of sample cities increased by 0.0128. Datong had the largest decrease in Kp value, reaching 0.0315, while Suzhou had the largest increase, at 0.0748. The number of loose type, stable type, and compact type cities were 19, 9, and 6, respectively.
From 2005 to 2010, the average Kp value of sample cities increased by 0.0059. Datong had the largest decrease in Kp value, reaching 0.0707, while Xuchang had the largest increase, at 0.0569. The number of loose type, stable type, and compact type cities were 16, 9, and 9, respectively.
From 2010 to 2015, the average Kp value of sample cities increased by 0.0059. Datong had the largest decrease in Kp value, reaching 0.0633, while Shenyang had the largest increase, at 0.0399. The number of loose type, stable type, and compact type cities were 19, 12, and 3, respectively.
From 2015 to 2020, the average Kp value of sample cities increased by 0.0019. Datong had the largest decrease in Kp value, reaching 0.0355, while Fuyang had the largest increase, at 0.0347. The number of loose type, stable type, and compact type cities were 8, 22, and 4, respectively.
Before 2015, loose-type cities dominated urban spatial expansion, while after 2015, stable-type cities became the dominant form. The number of stable-type cities increased from 9 to 22. The average Kp value change rate of the sample cities decreased year by year. Except for 2005–2010, the population density decline rate of compact-type cities was slightly faster than that of loose-type cities. In other periods, when the urban spatial expansion form was loose type, the population density decline rate was faster than that of compact-type cities.
4. Discussion
During the early stage of urbanization in China, while transportation facilities gradually improved, there existed significant discrepancies in economic and social security levels among different cities. To obtain better salaries and benefits, workers actively migrated to cities with superior economic conditions, leading to massive population mobility. From 2000 to 2010, the permanent populations of some cities almost doubled [
63,
64]. The rapid population and economic growth promoted urban spatial expansion. After the 2008 financial crisis, the cost of living in urban areas gradually increased, particularly with the rapid rise of housing prices. The increase in housing prices is closely related to China’s household registration, education system, and population size. Due to the high degree of integration between housing, household registration, and education in economically developed urban areas with large populations, housing prices surged, lowering incentives for childbirth and residency within these regions [
65].
Population is the most commonly used indicator when examining the driving factors that cause urban expansion [
47,
66,
67]. In 2022, China’s population experienced negative growth for the first time, while China’s urbanization rate reached 65.22%. This is of immense significance for China’s urban development. As the urbanization process advances, the number of rural laborers entering cities to settle will gradually decrease. The concept of utilizing demographic dividends to promote urban sustainable development is gradually losing its feasibility due to this phenomenon. However, a decrease in the total population can promote high-quality urban development. Due to its massive population size, cities consume large amounts of resources, generate a lot of pollutants, and face challenges in environmental governance [
68,
69]. A reduction in the total population can help alleviate resource and environmental pressures, improve environmental quality, and promote sustainable development [
70]. A decrease in the population can also promote the development of high-tech and high value-added industries by enterprises, improving production efficiency and reducing labor costs, as well as pushing forward the development of intelligent and mechanized industries. Given that China’s housing prices rapidly increased due to the quick population and economic growth in the past, a decrease in the population can also help “cool down” the real estate market [
71,
72,
73]. This study explores the relationship between the speed and form of urban spatial expansion and changes in population density, which has positive implications for handling the relationship between space and population growth, promoting sustainable urban development, and achieving high-quality urban development.