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Article

Temporal Evolution and Convergence Patterns of Urban Expansion in China: Evidence from 315 Cities over Two Decades

1
School of Environment and Disaster Management, Institute of Disaster Prevention, Langfang 065201, China
2
Hebei Key Laboratory of Resource and Environmental Disaster Mechanism and Risk Monitoring, Sanhe 065201, China
3
Key Laboratory of Regional Sustainable Development Modeling, Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing 100101, China
4
College of Resource and Environment, University of Chinese Academy of Sciences, Beijing 100049, China
5
Zhongke Shandong Dongying Institute of Geography, Dongying 257509, China
6
College of Economics and Management, China Agricultural University, Beijing 100083, China
7
College of Geoscience and Surveying Engineering, China University of Mining and Technology, Beijing 100083, China
*
Author to whom correspondence should be addressed.
ISPRS Int. J. Geo-Inf. 2025, 14(7), 241; https://doi.org/10.3390/ijgi14070241
Submission received: 27 April 2025 / Revised: 18 June 2025 / Accepted: 20 June 2025 / Published: 24 June 2025

Abstract

Rapid urbanization in China has driven the continuous expansion of urban land over many years. While most studies have examined the scale, speed, and spatial distribution of urban expansion, few have explored its temporal evolution and convergence patterns. To address this gap, the present study employs kernel density estimation (KDE) and the log t regression test to analyze urban expansion across 315 Chinese cities from 2000 to 2022. Our results reveal that the per capita urban area increased by a factor of 1.58 amid a fluctuating process on a national scale. Moreover, the log t regression test rejects convergence at national and regional levels while identifying six distinct convergence clubs. The evolutionary trajectories of these clubs have diverged over time, with inter-club gaps stabilizing and their spatial distribution exhibiting significant agglomeration. These findings indicate that urban expansion in China remains characterized by multiple equilibria, with imbalanced growth having stabilized. Consequently, effective urban planning, along with the diffusion of capital and technology, may promote a shift towards global convergence in urban expansion dynamics.

1. Introduction

Urban expansion is closely associated with the United Nation’s Sustainable Development Goals (SDGs) and affects the sustainable development of society and the environment [1,2]. Urban expansion leads to a dramatic loss of natural land [3,4], influences the carbon balance [5,6], is associated with urban morphology [7,8], increases the pressure to manage urban thermal environments [9,10], etc. As one of the countries that has experienced the most rapid urbanization, China has expanded urban land, attracting widespread attention [11,12]. Due to the spatiotemporal heterogeneity of urban expansion, adaptive policies need to be provided in a timely manner to promote high-quality urban development. China’s urban development strategy has gone through different development stages, from “strictly controlling the scale of large cities and rationally developing medium-sized and small cities” to “coordinated development of large, medium, and small cities and small towns” and then to “decelerating urbanization and improving quality development”. China has proposed regional integrated development policies based on the characteristics of different regions, such as the rise of the central region, the development of the western region, and the revitalization of the northeast region to promote urbanization in central and western China [13]. The temporal and spatial pattern analysis of urban expansion can provide a reference for the formulation of relevant policies.
Many studies have analyzed the spatiotemporal pattern of urban expansion in China. For example, Wu et al. [14] analyzed the urban expansion area and the expansion rate in China as a whole and in its east, central, west, and northeast regions from 2000 to 2015, and they found obvious differences among the four regions. Hu et al. [15] analyzed the spatiotemporal characteristics of urban expansion in 23 urban agglomerations in China and found that their urban area increased by a total of 280.9%, with the growth area and growth rate of the eastern coastal urban agglomerations being significantly higher than those of the urban agglomerations in the inland regions. Zhao et al. [16] analyzed the urban expansion of 32 large cities in China from 1978 to 2010 and found obvious differences in the growth rate of urban areas between cities, with the size of the city being negatively correlated with the growth rate. Liu et al. [17] analyzed urban expansion in the Min-Delta region and found that it increased by 2.26 times between 1995 and 2015, although the spatial trajectories of urban expansion were anisotropic. These studies analyzed the spatiotemporal characteristics of urban expansion at different scales and found significant differences in urban expansion between different regions or cities; however, whether the future trends of these differences will converge needs to be tested further.
Convergence in mathematics refers to the tendency of a variable sequence to a certain value along a path. This concept was used in the framework of neoclassical economics to test whether economic development in different regions tends to the same level [18]. Many researchers further developed the approaches and proposed σ-convergence [19], absolute β-convergence [19,20], conditional β-convergence [20,21], and club convergence [22]. In fact, economic development is a manifestation of changes in multiple production factors. Many studies have applied the convergence test to innovation efficiency [23], energy utilization efficiency [24], and other aspects. There are also many related studies on urban land use. For example, Li et al. [25] used σ-convergence and β-convergence to test the convergence of land expansion in 268 cities at or above the prefecture level in China from 2006 to 2019 and found that there was overall convergence and club convergence in the three regions of east, central, and west China. Zeng et al. [26] analyzed the club convergence characteristics of urban expansion in the Beijing–Tianjin–Hebei region using β-convergence and found that significant convergence only exists in regions with low urban expansion or regions with low urban expansion surrounded by high urban expansion. Ge et al. [27] analyzed the convergence of land use efficiency of cities in the Yangtze River Economic Belt and found that absolute β-convergence and conditional β-convergence exist in the entire Yangtze River Basin and the upper, middle, and lower reaches of the basin.
The existing studies have provided useful references for convergence analysis of urban expansion; however, the following shortcomings still exist: First, for research, most studies focus on regional scales, and research on the overall country scale (whole of China) is not comprehensive; for example, in-depth research on the test and identification of club convergence is lacking [25]. Second, for research data, studies generally use a collection of multiple cross-sectional data rather than longitudinal time series data, which increases the uncertainty of the results. Third, for research methods, existing studies usually use the σ-convergence and β-convergence test methods; however, changes in σ can only explain differences in the research period and cannot provide information on the convergence trends; additionally, the negative β coefficient in the β-convergence test cannot adequately indicate the regional convergence [28]. Furthermore, the club convergence test typically separates clubs by geographical location without objective and reasonable standards [26], which may lead to contradictory conclusions [28].
Therefore, this study applies the log t regression test developed by Phillips and Sul [29,30] to explore the evolution and convergence of urban expansion across 315 Chinese cities from 2000 to 2022. This method compensates for the limitations of previous studies by taking into consideration the time-varying variability among individuals. To prevent the bias introduced by artificial categorization, the clustering algorithm is utilized to find convergence clubs. Each convergence club’s evolution path is illustrated using relative transition path analysis. This study is intended to provide a new perspective on urban expansion convergence in China and offer empirical support and policy insights for investigating the coordinated development of urban expansion.

2. Materials and Methods

The analysis framework for urban expansion convergence is shown in Figure 1. Firstly, the long time series dataset for urban expansion of cities at the prefecture level and above is prepared for testing convergence. Secondly, the coefficient of variation (CV) and kernel density estimation (KDE) are applied to explore the differences in variation in urban expansion across cities. The change in CV over time can measure the variation in urban expansion among cities, and KDE further indicates the differences in urban expansion by displaying the data distribution pattern across urban expansion. Finally, the log t regression test and the club cluster method are used to test the convergence of urban expansion based on the behavior of urban expansion in transition. Three transition patterns can be distinguished: convergence, divergence, and club convergence. Convergence indicates that all cities share a common steady state; divergence implies that cities with heterogeneous evolution paths do not tend to a single stable state, and club convergence suggests that all cities converge to multiple steady state equilibria [29,30].
We examine the variations in urban expansion among cities and test convergence at national and regional scales. China is divided into four regions based on social and economic development: east, central, west, and northeast (Figure 2). This division is an important basis on which China formulates regional development policies. In the regional development plan, China has clearly proposed the overall development strategy of “adhering to the promotion of the development of the Western region, revitalizing old industrial bases such as the Northeast, promoting the rise of the Central region, encouraging the Eastern region to accelerate development”.
These four regions have different social and economic development. The eastern region is the most developed region, with a high per capita GDP and an optimized industrial structure. It is located on the coast and is closely connected with the international market. The economy of the central region is developing rapidly, but it is still behind that of the eastern region. It is an important transportation hub and industrial base in China, connecting the east and the west, as well as the north and the south. The western region lags behind in economic development, but it is rich in resources. It is also an important channel and bridge between China and Southwest Asia, Central Asia, and Europe, and plays an important role in the construction of the “Belt and Road”. The northeast region was an important industrial base in China, with a strong economic foundation in the past; however, its economic growth has slowed down, and it has faced development difficulties. It is an important industrial base and a resource-based city concentration area.

2.1. Data

Per capita urban land is used as an indicator to investigate urban expansion convergence. The urban land area data come from the annual China land cover dataset (CLCD) created by Yang and Huang [31], which was generated from Landsat imagery using a random forest classifier and the Google Earth Engine (GEE) platform. The dataset comprises many land cover types, including data on impervious surfaces in China collected annually from 1985 to 2022 at a resolution of 30 m. The study period between 2000 and 2022 is selected, and impervious surfaces data are extracted for cities at the prefecture level and above. The urban population was drawn from the China City Statistical Yearbook (2001–2023). The per capita urban areas of 315 cities from 2000 to 2022 are obtained; the numbers of cities included in the east, center, west, and northeast are 89, 80, 113, and 37, respectively. The cities’ distributions are shown in Figure 2.

2.2. Coefficient of Variation

The coefficient of variation (CV) is used to measure the differences in urban expansion among cities using the following equation:
C V = σ μ
where σ is the standard variance of urban expansion, and μ is the mean value of urban expansion.

2.3. Kernel Density Estimation

Kernel density estimation (KDE) is a commonly used nonparametric statistical method for smoothing the probability density of one-dimensional or multi-dimensional data samples. In contrast to a histogram, KDE does not require the “bin width” to be divided in advance but generates a continuous and smooth density curve by placing a “kernel function” at each sample point and accumulating all kernel function values.
Kernel density estimation (KDE) is used to explore the evolution characteristics of urban expansion. If x1, x2, …, xn are samples from an unknown distribution, KDE can be defined by the following equation:
f ( x ) = 1 N d i = 1 N K ( x i - x d )
where N is the total number of cities, d is bandwidth, xi is the per capita urban area of the city i, and K(•) is the kernel function. Different kernel functions will give different estimated results. The Gaussian kernel function is chosen to estimate the probability density function. The bandwidth of KDE is automatically calculated by Silverman’s rule of thumb to balance smoothness and resolution.
KDE complements the shortcomings of the mean value and the CV index. The mean value of urban expansion only represents the overall situation, and the CV index can only measure the overall degree of dispersion in urban expansion. KDE shows the overall distribution pattern of urban expansion by displaying the left and right movements and the change in the height of the density peak. By comparing the movement and changes in the shape of the kernel density curve in different periods, it is possible to judge the transformation and data distribution of the urban expansion.

2.4. Convergence Test Methods

2.4.1. Common Methods for Convergence Test

The term “convergence” comes from the neoclassical economic growth theory, which is used to describe whether an indicator (such as per capita income, gross domestic product, etc.) of different economic entities (such as countries, regions, or cities) gradually tends to the same or stable range. If different economies gradually converge along similar evolutionary paths and demonstrate a persistent grouping phenomenon, it is referred to as club convergence.
Five test methods are usually used to examine convergence: cross-sectional regression, panel data regression, statistic index method, cointegration and unit root test, and log t test. The first and second regression methods are used to test β convergence [20,22,32]. They investigate the relationship between the initial value and its growth rate. Convergence is confirmed if the relationship is a negative correlation; as a result, cities with low per capita urban areas have faster growth than cities with high per capita urban areas. The σ convergence is frequently tested using statistical indices [33], such as the coefficient of variation (CV), the Theil index, and the Gini index. The fourth method, the cointegration and unit root test, is used to examine stochastic convergence by testing for the existence of a shared steady trend between two cities using time series data [34]. The fifth, log t test regression, has advantages that other methods do not have. It considers individual heterogeneity and provides a spectrum of transitional behavior from divergence to club convergence and overall convergence [29,30]. Therefore, log t test regression is applied to explore the convergence of urban expansion in China.

2.4.2. The Log t Regression

The log t regression accommodates the heterogeneity among the 315 cities and allows a wide range of possible time paths without the assumption of trend stationarity in other time series methodologies. Hence, we can trace any city’s transition path of urban expansion toward the steady-state level, enabling us to identify different types of transition behaviors. Following Phillips and Sul [29,30], the data should be filtered for the cycle components and spatial effects using the hp filter method and the Gi Statistic before using log t regression.
It should be noted that although urban planning and land supply policies have an important impact on urban expansion, the log t convergence framework does not require complete market equilibrium conditions. Its core lies in comparing the relative evolution paths between different entities [29,30]. A number of empirical studies have shown that convergence analysis using log t regression is effective [35]. For example, Liu et al. [36] applied log t regression to identify the convergence club of per capita industrial pollutant emissions in China. Cialani and Mortazavi [37] identified the convergence clubs of CO2 emissions among 28 European countries based on log t regression. Therefore, the log t regression can be used to examine the convergence of urban expansion in China, even though it is affected by urban planning and policies.
(1)
Time-varying factor model
The panel data of per capita urban land, Xit, are decomposed as
X i t = g i t + a i t
where git denotes systematic components such as permanent common components, and ait represents transitory components. The equation has no assumptions and can present many time-varying processes, including linear, nonlinear, stationary, and nonstationary processes. The equation can be transformed to identify the common components in the panel, namely,
X i t = g i t + a i t u t u t = δ i t u t
where u t represents a common trend in the panel data and δ i t is the loading coefficient and measures the idiosyncratic distance between X i t and u t .
(2)
Log t regression test
Phillips and Sul [25] assume the loading coefficient δ i t as follows:
δ i t = δ i + δ i t ε i t , δ i t = δ i l o g ( t ) t a , t 1 , δ i > 0   f o r   a l l   i
The null and alternative hypotheses can be characterized as follows:
H 0 : δ i = δ   a n d   a 0
H 1 : δ i δ   o r   a < 0
The hypothesis can be tested using log t regression:
log H 1 H t 2 log log t = a + b l o g t + ε t ,
f o r t = r T , r T + 1 , , T   w i t h   r > 0
It is recommended that r be 0.3 when T is less than 50. The estimated b ^ converges to 2a. The null hypothesis can be tested using a one-sided t-test. If t b ^ is less than −1.65, the convergence hypothesis is rejected at the 5% level.
(3)
Club clustering method
When convergence in the whole panel is rejected, convergence in subgroups of the panel should be examined. Phillips and Sul developed a data-driven algorithm, and the steps are summarized as follows [29]:
Step 1: Sort per capita urban land. Sort the cities in decreasing order according to the per capita urban land use in the previous year.
Step 2: Form a core group. Select the first k cities in the sorted panel data to form a core group Gk (where 2 ≤ k < N). Perform the log t regression on this core group and calculate the t-statistic, tk. The core group’s size k* is subject to the following conditions:
k * = a r g m a x t k s u b j e c t   t o min t k > 1.65 .
Step 3: Sieve the club members. Add cities that are not assigned to Gk one at a time to Gk and run the t-test. If the t-statistic is greater than the criterion c*, the city can be included in the initial convergence club.
Step 4: Stop the rule. Perform the log t regression on the group formed by the remaining cities that are not in the initial convergence club. If t b ^ > 1.65 , this group is convergent; otherwise, repeat steps 2 and 3 to identify smaller convergence groups.

3. Results

3.1. Urban Expansion Characteristics and Trends

Different urban expansion trends can be seen on national and regional scales (Figure 3). On a national scale, the per capita urban land grew 1.58 times over time, from 115.9 m2 to 182.8 m2, and the growth rate slowed down slightly after 2014. The per capita urban land increased 1.41 times from 2000 to 2014 and 1.12 times from 2014 to 2022. On a regional scale, urban land in all four regions expanded from 2000 to 2022, although stratified heterogeneity was observed. The per capita urban land expansion remained the same over the 23 years: northeast, east, center, and west (from largest to smallest). The gap in urban expansion also remained relatively stable. In terms of growth, the northeast increased 1.44 times, from 252.7 m2 to 363.7 m2; the east also increased 1.44 times, from 148.5 m2 to 213.2 m2; the center increased 1.56 times, from 110.5 m2 to 172.2 m2; and the west increased 2.1 times, from 53 m2 to 111.3 m2. Based on the results, the western region had the highest growth.
Figure 4 shows kernel density curves of urban expansion at national and regional scales at five different periods. On a national scale, the kernel density peaks in 2005 and 2010 move to the right, while the others move to the left. The movement of the kernel density peak indicates that the growth of urban expansion changes from a short-term acceleration to a slowdown. The height of the kernel density peak increases slightly, except between 2020 and 2022, suggesting that the differences in urban expansion growth change little. Urban expansion growth first accelerated and then slowed, as indicated by the kernel density peak in the east, center, and west, which first moves to the right and then to the left. In contrast, the kernel density peak of the northeast shifts directly to the left, indicating a continuous slowdown in urban expansion. The kernel density peak height for the east is in the form of an “N,” showing that urban expansion growth is increasing, decreasing, and then increasing. For the center and west, the shifts in the kernel density peaks present a “V,” indicating that urban expansion decreases and then increases. For the northeast, the height of the kernel density peak fluctuates in an “M” shape, indicating the variations in urban expansion growth.
CV changes reveal the evolution of the disparities in per capita urban land between cities. Figure 5 shows that CV declined slightly, by about 0.1, on national and regional scales. On a national scale, the CV decreased from 0.97 to 0.88, indicating a reduction in urban expansion in different cities. On a regional scale, the CV of the western region was significantly higher than that of the others, and the highest and lowest CV values were 1.49 and 1.39 in 2001 and 2022, respectively. The CV values and tendencies of the eastern and northeastern regions were comparable. The average CV value for the two regions is approximately 0.62, with variations ranging from 0.57 to 0.65. The CV for the center region decreased from 0.6 to 0.44. The CV change suggests that urban expansion has a convergent tendency on a national scale. However, the reduction in CV is not evident in the four regions; thus, the convergence test should be investigated further.

3.2. The Transition Paths of Urban Expansion

On a national scale, the relative transition parameters of 309 cities range from 0.1 to 1.6 (Figure 6), and most paths trend to unity (the convergence state) over time, although the difference was still significant by 2022. Furthermore, some dynamic paths show the opposite tendency. Some paths lead to unity (e.g., DongGuan), while some gradually veer away from it (e.g., Aksu). Thus, the trend of relative transition parameters changing is consistent with the change in CV values, and the disparity in urban expansion among cities narrows but does not completely disappear.
On a regional scale, all the paths of urban expansion within the four regions do not converge to unity (Figure 7). In the eastern region, the relative transition parameter of urban expansion moves from divergency to four distinct states—a state greater than unity, a state near unity, a state somewhat less than unity, and a state considerably less than unity. In the center region, the path nears but does not quite reach unity, and most cities are still far from united by 2022. In the western region, the relative transition parameters of each city remain significantly different. The maximum and minimum values of the parameter are 2.04 and −1.15 in 2000, and change to −0.78 and 1.73 in 2022, and the maximum and minimum values in 2000 and 2022 differ by 3.19 and 2.51; thus, the gap in urban expansion is much larger than in other regions. In the northeastern region, the relative transition parameters of each city were almost parallel, with little change from unity.

3.3. Convergence Tests of Urban Expansion

3.3.1. Convergence Test

The convergence of urban expansion on a national scale and in the four regions is not supported by the log t test regression results. Table 1 shows that the standard errors (SEs) are small enough for the null hypothesis of convergence to be rejected at a 5% level, and the estimate of b is −0.57 on a national scale, which is significantly less than zero. For the four regions, estimates of b are −0.58, −0.24, −0.59, and −0.45, which are significantly less than zero, indicating a lack of convergence at the 5% level. The tests are in line with the behaviors of relative transition paths at the national level or in the four regions, and they provide little evidence of the convergence of urban expansion.

3.3.2. Club Convergence Test

The club convergence was further investigated using data-driven methods based on the clustering algorithm developed by Phillips and Sul [29]. Twelve subgroups were first selected from the entire sample. The number of members in the twelve subgroups is 15, 61, 78, 25, 28, 38, 22,17, 14, 5, 4, and 5 (Table 2). None of the other three cities fit into any of the subgroups, and they are all divergent. Using log t regression to examine the convergence in the twelve clubs shows that all the coefficients are larger than zero, and the t-statistic indicates urban expansion convergence at a 5% significance level; thus, the urban expansion of the 315 cities is characterized by club convergence. Nevertheless, since the coefficient in each club is less than 2, absolute level convergence can be ruled out.
Additionally, an iterative club merging process is used to merge the original twelve clubs. The original clubs were eventually merged into six larger clubs (Table 3): club I, which contains 76 cities, is made up of clubs 1 and 2; club II, which contains 131 cities, is composed of clubs 3, 4, and 5; club III is the original club 6 and is not merged with any other club; club IV is composed of clubs 7 and 8 and contains 39 cities; club V is composed of the original club 9; and club VI is made up of clubs 10, 11, and 12 and contains 14 cities. Because the clubs’ coefficients are significantly positive and less than 2, there is a conditional convergence within each club, but little indication of absolute convergence.
Figure 8 illustrates the average transition paths of the six clubs and the transition paths within each convergence club, and each colored curve represents the path of one club or one city. For the average transition paths, the trend changes little, and stratified heterogeneity clearly supports no tendency to converge. The levels of the average transition paths from high to low are club I, club II, club III, club IV, club V, and club VI. Furthermore, the average transition paths of club I and club II maintain a level higher than unity, whereas others remain below unity. Although various cities in the same club had large starting gaps in 2000, there are inclinations toward a common state. Taking the cities in club I as an example, the relative transition parameters of Ziyang increase from 0.47 to 0.80 in 2000 and 2022, whereas the relative transition parameters of Daqing decrease from 1.61 to 1.46 in 2000 and 2022. The relative transition parameters of the two cities both tend to a common state.
As shown in Figure 9, the six clubs exhibit a spatial aggregation pattern and present characteristics of overall east–west distribution and local north–south distribution. Clubs 1, 2, and 3 are mostly distributed in the eastern region, while clubs 4 and 5 are mainly distributed in the western region; clubs 1, 2, and 3 are distributed from north to south. Specifically, the cities in club I are spread across Heilongjiang province, North China, and the northern part of East China. The cities in club II mainly aggregate in the central region, the southern part of East China, and Northeast China. The cities in club III and club IV congregate in the southeast region. The majority of the cities in club V and club VI are located in the western area.

4. Discussion

This study examined urban expansion trends in China and investigated the convergence of urban expansion across 315 cities at the prefecture level. Based on the findings, per capita urban land increased by 1.58 times on a national scale from 2000 to 2022. The northeast region had the highest per capita urban land, while the western region had the lowest over the 23 years. Although the convergence of urban expansion on national and regional scales is rejected, six club convergences are identified for the 315 cities. The clubs tend to different steady-state equilibria, and the cities within the clubs exhibit spatial aggregation. These findings indicate that the evolution of urban expansion in China is still in multiple equilibria, and that unbalanced urban expansion has stabilized.

4.1. Regional Variations in Urban Land Expansion in China

Urban land is still expanding in China, with regional variations. This result is in line with those of earlier research. For instance, Wu et al. [14] found that the overall urban expansion in China and expansion in the eastern region had the slowest expansion rate and the largest expansion area. Wang et al. [38] found that urban land was expanding quickly, with the eastern region having the quickest rate of expansion and the largest expansion area. The differences in the expansion rate or area among the studies may be caused by the indicators used to measure urban expansion. Wu and Wang used total urban area and urban expansion rate, whereas per capita urban land was applied here to minimize the scale effect. Notwithstanding the variations, these studies all suggest ongoing urban expansion in China and different regional trends in urban expansion. Moreover, this study reports that, at a national level, the gaps between different cities are narrowing, as measured using the CV index. This result is in line with the findings of Jing et al. [39], who measured the trends in the gaps using the Gini index.
Urban expansion in different regions jointly shapes the characteristics of China’s overall urban expansion path. The eastern region, with the highest proportion of total population and built-up area, has a significant influence on national urban expansion. This explains the consistency in the peak shift and height change in the KDE curve between the national scale and the eastern region (Figure 4). The western region covers a vast geographic area and includes the largest number of urban samples. Many cities in the west had relatively small built-up areas in the initial year but experienced rapid expansion. These contribute to the national KDE distribution, particularly to the right tail of the KDE curve. Urban expansion in the central region is moderate, while the northeastern region has a smaller number of urban samples. These two regions exert a “fine-tuning” effect on the peak position and width of the national KDE curve. In summary, the eastern region strongly influences the national urban expansion trend through its scale, whereas the extreme growth rates and large number of cities in the western region shape the right-tail characteristics of the national KDE curve. The central and northeastern regions play a supplementary role. It is the superposition of these regional dynamics that defines the typical evolutionary pattern of urban expansion in China.
To enhance comprehension of spatiotemporal urban expansion, we examined urban expansion in other countries. Urban expansion in India initially grew fast and then slowed down, with the growth rate of small and medium-sized cities surpassing that of large cities since 2010, indicating a narrowing of the gap in urban expansion [40]. This tendency is similar to that observed in China, but is not universal. For example, urban expansion in Vietnam has occurred mainly in the Mekong Delta in the south and the Red River Delta in the north for a long time [41]. The urban expansion area of large cities in Africa is much larger than that of small cities, and the expansion speed of the two is much closer [42]. The variation in spatiotemporal urban expansion is usually associated with social and economic development [43], and whether there is convergence of urban expansion within these countries or regions should be further tested using specialized methods.

4.2. Why Does Urban Expansion Converge?

This study examined the convergence of urban expansion in China. The convergence assumption is based on the diminishing marginal utility of urban expansion and the diffusion effect of capital and production. According to neoclassical theory and empirical studies, urban land, one of the three key production factors, expands in lockstep with economic development.
In the early stages of development, cities expand from other land types around the edges, which has more benefits than urban interior renovation. The conflict between urban land demand and overall land area restrictions increases with economic development, driving up land prices while diminishing the benefits of urban expansion. The declining marginal utility encourages land use efficiency improvement and slows down urban expansion.
Developed cities take the lead in upgrading industrial structures, reducing reliance on land and shifting the primary driver from production to capital [44]. Developing cities benefit from the production diffusion of developed cities; thus, the hierarchical structure of urban development is formed [45,46]. The laggards keep up with the leaders in their shared development path of urban expansion, and all cities converge on a steady stage. Neoclassical schools treat regional diversity as a transitory process.

4.3. Why Does Urban Expansion Show Club Convergence?

Relative transition paths show that urban expansion convergence is not universal across cities (Figure 7). Even if the gaps have narrowed as CV illustrates (Figure 5), the disparities across cities are still large, suggesting that the laggards’ urban expansion is insufficient to catch up with the leaders. This could be the reason why national and regional urban expansion convergence is rejected based on the log t-test.
The club convergence indicates that the urban system is hierarchical. This hierarchy can be explained by endogenous growth theory and spatial economics. Endogenous growth theory verifies the existence of variable returns to scale of production factors, resulting in multiple economic equilibria [47,48]. Fujita et al. demonstrated that the interaction of economic agglomeration and consumer dispersion generates industrial stratification, which leads to a hierarchy of urban systems [49].

4.4. Why Do Convergence Clubs Show Spatial Aggregation?

The spatial distribution of the clubs is associated with local economics and policies. According to Krugman’s “first and second nature” theory, the endowment of natural resources enables cities to evolve from different starting points, and socioeconomic activities influence the development process [50]. Club I and club II remain above the steady-state level. Even though each city’s socioeconomic development is unique, the majority of the cities in the two clubs are located in the plains. For the northeast region, dramatic population out-migration increases the urban area per capita [51]. For the eastern and central regions, the rise in industries leads to the accumulation of populations and resources, leading to dramatic urban expansion. Club III and club IV aggregate in the southeast region, and the average transition paths are slightly below the steady-state level. The region covered by the two clubs has a developed service industry and foreign trade, attracting population inflows. Club V and club VI are mainly located in the western region, which falls behind the steady-state threshold and has resource concentration limits, and an inadequate industrial system.

4.5. Policy Implications

In light of the findings, the assumption that “urban expansion across the country will tend to be convergence” is clearly not proven, and club convergence indicates that nationwide urban expansion exhibits multi-level and multi-gradient clustering characteristics, which provides a basis for precise urban planning and regional policy making. Since there is no convergence at the national level and the transition paths of different clubs are significantly different, a “one-size-fits-all” land policy is unlikely to work. The government and planning departments need to formulate targeted land use plans based on the characteristics and spatial distribution of each club. Specifically, cities in club I are mainly spread across north China and the northern part of East China, and have the largest per capita urban land area, which indicates that there might be a problem of high land consumption and low population density. Therefore, cities in this club should reduce new urban construction land, and only when land acquisition and storage are organized can new construction land be obtained. Cities in club II mainly aggregate in the center region, the southern part of East China, and Northeast China, and have a higher per capita urban land area, indicating that there may also exist a certain risk of urban expansion with low population density. In addition to controlling the increase in new urban construction land, construction activities in urban marginal areas should also be supervised. Cities in club III are close to the overall equilibrium state of urban expansion and should maintain moderate expansion and further improve the efficiency of land use. Cities in clubs V and VI are mainly distributed in the western region, where per capita urban land is low and the incentive for urban expansion is weak. Cities in these clubs may have problems with imperfect land planning and weak infrastructure; for this reason, increasing urban construction land should be promoted by appropriate preferential treatment to reduce land costs and attract industries and projects. However, the increase in urban land must be within the environmental carrying capacity. In summary, a sustainable balance in urban expansion in various regions can be achieved only by adhering to a differentiated land management strategy.

5. Conclusions

This study investigated the evolution and convergence of urban expansion across 315 Chinese cities from 2000 to 2022. The following results were obtained. Per capita urban area continued to increase at both the national and regional scales. On a national scale, per capita urban area increased 1.58 times from 115.9 m2 to 182.8 m2. On a regional scale, the northeast had the largest per capita urban area, with 363.7 m2 in 2022; the west had the fastest growth rate, expanding 2.1 times in 23 years. Moreover, based on the urban expansion and the change in the CV value, the disparity between regions decreased only slightly. KDE showed fluctuations in differences between cities in each region over time, indicating that per capita urban land does not converge to a steady state in each region. Log t regression further verified the results of divergence on national and regional scales; however, six convergence clubs were identified. Transition paths within the convergence clubs moved toward a common state. The spatial pattern of the convergence clubs shows the characteristics of an overall east–west distribution and a local north–south distribution. The per capita urban land use is larger in the eastern region than in the western region and larger in the northern region than in the southern region. Targeted policy implications based on the transition paths and spatial distribution of each convergence club have been developed to promote multi-level regional coordination and sustainable development. In conclusion, this study provides a new perspective on further exploring the evolution of urban systems based on the coupling of temporal multiple equilibria and spatial stratified heterogeneity. Moreover, the analytical framework of combining long-term path equilibrium identification with spatially stratified heterogeneity provides a reference for other convergence analyses based on panel data with long time series and spatial information.
Although this study reveals the temporal evolution and convergence patterns of urban expansion in China, it still has some limitations. First, population data from statistical yearbooks may contain estimation errors in non-census years. Nevertheless, the data in the statistical yearbook are credible as official data sources, and the data were hp-filtered before the convergence test to reduce the impact of errors on the results. Second, the per capita urban land dataset lacks some cities in China due to a shortage of demographic data; however, it covers China’s major cities, and it could cover all cities if data become accessible. Third, attribution analysis was not conducted using the empirical method. Many socioeconomic and natural factors and development policies influence urban expansion convergence across cities. We will investigate these underlying influencing factors in the future.

Author Contributions

Shengqiang Jing designed the research; Fangqu Niu, Jintao Yang, Linda Dai, and Shengqiang Jing contributed to the analysis and interpretation of data; Shengqiang Jing contributed to the data processing, calculation, and visualization, and drafted the manuscript; Fangqu Niu, Jintao Yang, and Linda Dai contributed to the revised manuscript. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by the Fundamental Research Funds for the Central Universities (ZY20240201), the National Funding Postdoctoral Fellowship Program of CPSF (GZC20233022), the China Postdoctoral Science Foundation (2024M763573), the Program of Yellow River Delta Scholars (2024–2028), and the Science and Technology Plan Project of Langfang (2023013090).

Data Availability Statement

The datasets generated and/or analyzed during the current study are available from the corresponding author on reasonable request.

Conflicts of Interest

The authors declare no conflicts of interest.

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Figure 1. The analysis framework for urban expansion convergence.
Figure 1. The analysis framework for urban expansion convergence.
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Figure 2. Cities in different regions.
Figure 2. Cities in different regions.
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Figure 3. Changes in per capita urban land from 2000 to 2022.
Figure 3. Changes in per capita urban land from 2000 to 2022.
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Figure 4. Kernel density curves of urban expansion. (a) The national scale, (b) the east, (c) the center, (d) the west, and (e) the northeast.
Figure 4. Kernel density curves of urban expansion. (a) The national scale, (b) the east, (c) the center, (d) the west, and (e) the northeast.
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Figure 5. The CV trend in the period 2000–2022.
Figure 5. The CV trend in the period 2000–2022.
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Figure 6. Transition paths for 315 cities.
Figure 6. Transition paths for 315 cities.
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Figure 7. Transition paths in the four regions. (a) The east, (b) the center, (c) the west, and (d) the northeast.
Figure 7. Transition paths in the four regions. (a) The east, (b) the center, (c) the west, and (d) the northeast.
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Figure 8. Transition paths within the convergence clubs.
Figure 8. Transition paths within the convergence clubs.
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Figure 9. Spatial distribution of convergence clubs.
Figure 9. Spatial distribution of convergence clubs.
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Table 1. Convergence test for per capita urban land expansion.
Table 1. Convergence test for per capita urban land expansion.
SampleNumber of MembersCoefficientStandard Errort-Statistic
The national scale315−0.57 *0.001−479.182
The east88−0.58 *0.017−33.373
The center79−0.24 *0.032−7.445
The west112−0.59 *0.019−30.222
The northeast36−0.45 *0.024−18.769
Note: * Significant at the 5% level.
Table 2. Initial classification of the convergence clubs.
Table 2. Initial classification of the convergence clubs.
ClubNumber of MembersCoefficientStandard Errort-Statistic
Club 1150.1080.0234.613
Club 2610.1480.0217.139
Club 3780.1040.0283.675
Club 4250.0660.0242.701
Club 5280.0710.0332.189
Club6380.1360.0363.797
Club 7220.1660.00821.126
Club 8170.0880.0332.641
Club 9140.3210.0466.996
Club 1050.0790.080.982
Club 1140.5510.1613.432
Club 1250.4510.0726.313
Table 3. Club merging results.
Table 3. Club merging results.
ClubMerged ClubsNumber of MembersCoefficientStandard Errort-Statistic
Club IClub 1 + 2760.0520.0192.677
Club IIClub 3 + 4 + 51310.0750.0272.718
Club IIIClub 6380.1360.0363.797
Club IVClub 7 + 8390.1160.0343.393
Club VClub 9140.3210.0466.996
Club VIClub 10 + 11 + 12140.1390.180.769
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Jing, S.; Niu, F.; Yang, J.; Dai, L. Temporal Evolution and Convergence Patterns of Urban Expansion in China: Evidence from 315 Cities over Two Decades. ISPRS Int. J. Geo-Inf. 2025, 14, 241. https://doi.org/10.3390/ijgi14070241

AMA Style

Jing S, Niu F, Yang J, Dai L. Temporal Evolution and Convergence Patterns of Urban Expansion in China: Evidence from 315 Cities over Two Decades. ISPRS International Journal of Geo-Information. 2025; 14(7):241. https://doi.org/10.3390/ijgi14070241

Chicago/Turabian Style

Jing, Shengqiang, Fangqu Niu, Jintao Yang, and Linda Dai. 2025. "Temporal Evolution and Convergence Patterns of Urban Expansion in China: Evidence from 315 Cities over Two Decades" ISPRS International Journal of Geo-Information 14, no. 7: 241. https://doi.org/10.3390/ijgi14070241

APA Style

Jing, S., Niu, F., Yang, J., & Dai, L. (2025). Temporal Evolution and Convergence Patterns of Urban Expansion in China: Evidence from 315 Cities over Two Decades. ISPRS International Journal of Geo-Information, 14(7), 241. https://doi.org/10.3390/ijgi14070241

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