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Article

Influence of Urban-Growth Pattern on Air Quality in China: A Study of 338 Cities

1
College of Architecture and Environment, Sichuan University, No. 29 Jiuyanqiao Wangjiang Rd, Chengdu 610064, China
2
Department of City and Regional Planning, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599, USA
3
College of Public Administration, Huazhong University of Science & Technology, 1037 Luoyu Road, Wuhan 430074, China
*
Authors to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2018, 15(9), 1805; https://doi.org/10.3390/ijerph15091805
Submission received: 13 July 2018 / Revised: 14 August 2018 / Accepted: 18 August 2018 / Published: 22 August 2018

Abstract

:
Air pollution in China is a serious problem and an inevitable threat to human health. This study evaluated the relationship between air quality and urban growth pattern in China by conducting empirical research involving 338 prefecture-level and above cities. Spatial regression techniques considering spatial autocorrelation were applied to correct the calculation bias. To obtain local and accurate results, a conception of eight economic zones was adopted to delineate cities into different groups and to estimate regression separately. An additional six urban form and socioeconomic indicators served as controlling variables. Significant and positive relationships between the aggregated urban growth pattern index and air pollution were observed in Northeast China, northern coastal China, and Northwest China, indicating that a high degree of urban aggregation is associated with poor air quality. However, a negative parameter was obtained in southern coastal China, showing an opposite association on urban aggregation and air quality. Nonsignificant connections among the other four zones were found. The findings also highlighted that land use mix, population density, and city size exerted varied and significant influence on air quality across eight economic zones. Overall, this study indicated that understanding the quantitative relationships between urban forms and air quality can provide policymakers with alternative ways to improve air quality in rapidly developing China.

1. Introduction

With the implementation of the Reform and Opening-up policy, China has experienced rapid urbanization with an increase from 20.16% to 54.77% between 1981 and 2014 [1]. China is also experiencing a period of unprecedented urban expansion. The urban land area in China totaled 6720 km 2 in 1981, and it increased to 49,900 km 2 in 2014, representing an increase of 644% and highlighting a significant change, in accordance with the data released by the National Bureau of Statistics of China. The tremendous nationwide expansion of urbanized area resulted in various configuration types of urban development, and considerable attention has been paid to the research on dynamic development of urban morphology from the perspective of landscape ecology in recent years [2]. As an important index of landscape ecology, spatial patterns of urban growth refer to the locations of newly grown patches in developed lands. This indicator provides a powerful tool for understanding the evolutionary process of urban areas, identifying the degree of urban sprawl, and predicting urban growth, and has attracted considerable attention [3]. In general, urban growth involves three different spatial patterns, edge expansion, outlying, and infilling (Figure 1A–C). Specifically, edge expansion refers to the phenomenon of homocentric outspread, indicating a spatially subsequent expansion and extension of urban built-up areas. Outlying is characterized by the new urban lands occurring beyond developed areas. Infilling is introduced as developing the vacant land between established patches [4,5,6].
In general, the three urban growth patterns result in various effects on land spatial distributions, land use/cover change, efficiency of land use, and travel choices. Edge expansion causes redundancy in the low-level construction of urban infrastructure by dispersing investment opportunities, indicating a large occupation of farmland and low efficiency in land use [7]. For example, in Beijing’s rapid urban expansion process, significant urban growth has been observed on the fringe, especially in low-density gated communities and industrial development. As a result, the need for long-distance travel to external areas and the use of private vehicles on the city fringe have increased. In addition, edge expansion overburdens urban core areas, resulting in various urban disease types, such as environmental deterioration, traffic congestion, and housing shortage. Outlying invades prime agricultural and resource lands in the process, and leads to fragmented and piecemeal land development patterns. Several issues, including low-density residential development; insufficient land use; rigid separation of shops, homes, and workplaces; poor access from one place to another; and a heavy reliance on auto-mobiles, arise from outlying expansion [8]. Infilling is characterized by the following description: relatively high-density development close to or within the city core and aggregation of various workplaces and public/private services [9,10]. Infilling is an urban form that encourages walking and riding; it features low-energy consumption based on an efficiently developed public transportation system and a high degree of mixed land use [11,12]. As a result, infilling is incorporated into important urban planning and design concepts (smart growth and urban regeneration), whereas edge expansion and outlying are regarded as the main manifestations of urban sprawl.
Urban air pollution has rapidly emerged as a main environmental issue in China in recent years [13]. Data show that only three of the 74 key cities (4%) reached Class II of the Chinese National Ambient Air Quality Standard [14]. Simultaneously, air pollution has caused serious public health effects and economic damage in China [13]. In China, the cost of the health effects of air pollution approximated USD 1.4 trillion in 2010 [15]. Traffic exhaust has long been known to be one of the largest contributors to poor urban air quality for pollutants, such as PM2.5, carbon monoxide (CO), nitrogen oxide ( NO X ), benzene, and ozone ( O 3 ) [16,17]. This phenomenon is particularly true in China, where car ownership escalated to 488% in the last 10 years, and has reached to 290 million based on the 2016 Yearbook of China Transportation & Communications. As estimated, 24%, 20%, and 29% of the overall NO X , CO, and volatile organic compounds were contributed by vehicles in China at the country level, respectively, and they increased to approximately 40–70% at the urban level [18]. In addition, an urban forest can improve regional air quality by removing atmospheric pollutants, lowering air temperatures, and reducing building energy use and the consequent power plant emissions [19]. Previous research demonstrated that the total annual air pollution removal ( O 3 , PM 10 ,   NO 2 ,   SO 2 ,   and   CO ) by urban trees in the United States is estimated at 711,000 metric tons [19]. Therefore, the following hypothesis can be concluded from the context: urban growth patterns, as indicators related to travel choices and land use/cover change, are significantly associated with air quality.
As previously discussed, in comparison with edge expansion and outlying, infilling benefits air quality through two dominant paths—less private car dependency and improved open space preservation. However, with the expansion of the population amount and vehicle ownership, high-density development may increase the traffic volume and lead to heavy traffic congestion, which results in serious urban air pollution [20]. Of all of the countries in the world, China’s cities are characterized by high population agglomeration, specifically in megacities with a population density of up to more than 15,000/ km 2 [21]. Therefore, the relationships between urban growth pattern and air quality in Chinese cities are indirect, and empirical studies are needed to reveal ambiguous association. Furthermore, the urbanization rate of China totaled 57.35% in 2016 and is predicted to reach 70.12% in 2030 [22]. Hence, in the next 15 years, urban areas will continually expand to accommodate a high number of rural–urban migration, leaving considerable space to shape their form. Therefore, an empirical analysis regarding the relationship between urban growth pattern and air quality is particularly needed and bears significance to rapidly developing China.
To test the relationship, this study analyzed the urban built-up area of 338 Chinese prefecture-level and above cities from 2005 and 2015 based on satellite imagery, and identified the aggregated index for all of the newly created patches within each city during this period. Six other widely used urban form and socioeconomic variables were used as controlling indicators. The remainder of this paper is organized as follows. Section 2 highlights the gaps in the indicators and methodologies used in the existing studies. Section 3 describes the variables and study area, and explains the research methodology in detail. Section 4 subsequently presents and discusses the regression results. Section 5 draws conclusions from the findings.

2. Literature Review

An increasing number of studies on the association between air quality and urban form have been conducted [23,24,25,26]. Table 1 summarizes the most widely used urban form indicators.
From a landscape perspective, landscape pattern refers to the spatial distribution and the combination of patches with differing sizes, shapes, and contents. Landscape process reveals the continuous and discontinuous changes in landscape patterns at the time–space scales. Landscape pattern and process are intrinsically related concepts and are keys to the theory and practice of landscape ecology [27]. Table 1 shows that all of the used landscape indices can only quantitatively reflect the landscape patterns for one single time point, lacking reflection on the dynamic process of land cover change. Urban growth pattern is an indicator that links patterns and processes and provides efficient information about urban development. It has thus has attracted lots of attention in recent years. For example, He et al. [28] explored the relationships between urban growth patterns and urban vitality. The results demonstrated that different urban growth patterns are associated with various kinds of urban vitality, indicating that cities may utilize these different urban expansion types to achieve targeted goals. As for this article, the use of an urban growth pattern index will provide a deep understanding about the evolution of urban morphology and its impact on air quality.
Most of the previous empirical studies on urban form and air quality have focused on cities in developed countries, and to our knowledge, existing analyses of Chinese cities are limited. More specifically, in the research of 157 Chinese cities, urban form is measured by six spatial metrics. The results showed that high population density and low urban continuity are commonly associated with good air quality through linear regressions [14]. The study conducted a comparatively comprehensive series of urban form metrics, and empirically demonstrated that urban form influences air quality in major Chinese cities. Liu et al. [31] explored the effects of urban form, measured by the compactness and elongation ratios on urban smog for 30 Chinese cities, through the use of a panel data analysis. The results indicated a significantly positive correlation when controlling for other independent variables. The studies, however, were based on global regression models and ignored spatial autocorrelation, which is derived from Tobler’s first law of geography, which states that “everything is related to everything else, but near things are more related than distant things” [32]. Urban air pollution is a function of economic activity within the city and is also a function of pollution of nearby cities, whose emissions are imported as a result of wind patterns [33]. For example, winds contribute 30% to 40% of Beijing’s air pollution by carrying pollutants from adjacent industrialized regions [34]. Autocorrelation in urban air quality data has been widely demonstrated and, if ignored, can lead to biased or misleading results [30]. Lu et al. [35] analyzed the relationship between the urban form and air quality of 287 Chinese cities on the basis of a geographically weighted regression model, which considers the geographical location in the intercepts and coordinates in the parameter estimates. With the rapid expansion of vehicle ownership, traffic exhaust has become the major cause of urban air pollution in the most recent years. Air pollution spreads from industrial and resource-based cities, such as Hebei and Shanxi, and has now become a critical issue across the whole country. For example, on the basis of the annual reports from the Chinese Ministry of Ecology and Environment, 60.5% of the prefecture-level cities reached Class II air quality standards in 2007, but the number decreased to 21.6% in 2015, highlighting the nationwide deterioration of air quality in recent years. Therefore, the data (2007) used in the article are not representative of the present relationship in such a rapidly developing country. In this context, spatial econometric models and the latest data are used to correct the autocorrelation bias and obtain accurate results.

3. Materials and Methods

3.1. Variables

3.1.1. Air Quality Index (AQI)

Different indices have been used by a number of studies for air quality assessment [23,24,28]. AQI, as a simple and summary metric, is widely used by local authorities to provide information about local air quality and associated health advice for the public, and is also widely utilized in academic studies to measure the overall air quality [24,30,36]. From 2012 onward, more than 1400 monitoring stations were set to record hourly air pollution data across Mainland China. With the recorded data, the daily AQI for each city is calculated by considering six major air pollutants, which are regarded as key urban atmospheric pollutants (i.e., PM2.5, PM10, NO 2 , CO, SO 2 , and O 3 ). The AQI value runs from 0 to 500 and is divided into six categories as provided in Table 2.
Table 2 shows that a higher AQI value indicates a higher level of air pollution and more serious influence on human health. An AQI exceeding 100 indicates poor air quality from a public health perspective [30]. Daily AQI data are available on the website http://datacenter.mep.gov.cn/index. A total of 132,495 records for 338 cities in 2015 were collected using crawling techniques. Then, we counted the number of days where AQI > 100, and considered the value as indicator to measure the air quality. A high number of exceedance days in a city is associated with poor air quality.

3.1.2. Aggregated Urban Growth Pattern Index (AUGPI)

The land use data for 2005–2015 were obtained from the National Land Use/Cover Database of China at the 1:100,000 scale. In accordance with the land resource and utilization attributes, six classes of land uses—cropland, woodland, grassland, water body, built-up land, and unused land—were identified [6]. A 30 × 30 m gridded database of land use classification, which is considered to be an accurate and reliable dataset for the monitoring, forecasting, and driving analysis of land use change at a regional scale, has been accomplished [37].
The growth pattern of newly created urban patches can be measured by identifying the common boundary between new and existing urban areas, or by exploring the composition of a buffer zone. On the basis of the theory, the landscape expansion index (LEI) was used by Liu et al. to analyze urban expansion quantitatively [38]. LEI divides the urban growth pattern into three types, namely, edge expansion, outlying, and infilling, and is widely recognized as an efficient tool to reveal the relationships between the spatial distribution of urban landscape and its evolution [39,40]. Therefore, we utilize LEI to identify urban growth pattern in 2005–2015 for 338 cities. LEI is calculated by Equation (1), as follows:
LEI = 100 × A 0   A 0 + A V
where LEI is the landscape expansion index of a newly created patch, A 0 denotes the intersecting area of buffer zone and existing urban patches, and A V represents the intersecting area of buffer zone and non-developed land. In accordance with the buffer set criterion, that a small value is effective, a buffer size of 1 m was used in this study [38]. By definition, the LEI changes from 0 to 100. Urban growth pattern is defined as (1) outlying when LEI = 0, (2) edge expansion when 0 < LEI ≤ 50, and (3) infilling when LEI > 50. In general, more than one new patch has been created in a city. The total number of newly created patches in 2005–2015 reached 122,498. Therefore, the aggregated index over all of the patches should be evaluated for each city. The mean expansion index and area-weighted mean expansion index are introduced [38]. The latter was used in this article to calculate the AUGPI for a city on the basis of Equation (2), as follows:
AUGPI = i = 1   N LEI i × a i A
where LEI i and a i represent the LEI and area of patch i , respectively, i ( 1 , N ) , N denotes the number of newly created patches, and A refers to the sum area of all of the new patches. AUGPI is a comprehensive and quantitative description of urban expansion, and a small value indicates less degrees of urban aggregation.

3.1.3. Control Variables

On the basis of the findings from the literature review, the configuration of urban development has been demonstrated to be associated with air quality in China. To control for other urban form variables, four widely used indicators were selected in multiple perspectives, namely, land use mix, urban shape compactness, population density, and street connectivity.
Specifically, land use mix aims to quantify the heterogeneity of land uses in geographically defined areas, and a high mixed value decreases the long-distance travel demand for residents by offering additional nonresidential destinations nearby, which in turn reduces car usage [41]. Entropy is used to calculate the mixed index (M) on the basis of more than 23 million points of interest (POIs) from Baidu Maps, through Equation (3). The initial 12 POI types were aggregated into four general categories, residence communities, living and employment sites, transport facilities, and recreation sites, as follows:
M = i = 1   p i ln p i   ( i = 1 ,   2 ,   3 ,   4 )
where p i is the proportion of POI type i among all of the POIs. A high M value indicates additional POI types and a large land use mix of the patch. The area-weighted mean method was then applied to calculate the global M value of a city, by considering the weight of the area for all of the patches within the urban built-up areas.
Urban shape compactness is a key indicator to reflect urban structures from a land use perspective. A compact city is often considered to feature environmental and energy advantages through a concentrated urban development form [42]. The compactness index (C) is calculated in Equation (4), where P denotes the perimeter of the urban built-up area, and A represents the urban built-up area. A higher C value indicates a more compact city. Conversely, a low C value indicates a significant spatial dispersed urban layout, as follows:
C = 2 π A   / P
Population density is generally recognized as one of the basic components of urban sprawl, whereas low-density development is associated with long vehicle miles traveled, which in turn results in a significant magnitude of vehicle emission and poor regional air quality [23,43]. Population density is measured by the number of persons per square kilometer within urban built-up areas.
Street connectivity is a measurement of the street density and is based on the ratio of the road surface area to the urban construction land area. In general, a higher ratio indicates better the connectivity and traffic capacity of a city.
Additional explanatory variables were included in this study, namely city size and per capita GDP. City size reveals the urban expansion speed, and a high value indicates that the expansion of urban areas for living and infrastructure have occupied additional green lands. Per capita GDP is a measurement of the city economic development. The data on population density, road surface area, and per capita GDP were obtained from the China Urban Construction Statistical Yearbook. Table 3 includes a summary of variable descriptions and data sources, and Table 4 and Figure 2 list the descriptive statistics and spatial patterns about the variables for the 338 cities (Detailed information about study area is introduced in Section 3.2).

3.2. Study Area

This research covers 334 prefecture-level cities (di ji shi) and four municipalities (zhi xia shi), with a total of 338 Chinese cities. A general definition of the Chinese administrative system is provided (i.e., prefecture-level cities rank below a province and above a county, and a municipality features the same political, economic, and jurisdictional rights as a province) [44]. The city boundary spatial data were derived from China’s second national land use survey. Considering that air quality is affected by nearby pollution sources because of wind patterns, local and accurate results will be obtained by delineating cities into different groups and estimating regression separately. This study adopted the conception of eight economic zones, which was proposed during the “11th Five-Year” period (2006–2010), and was classified on the basis of key characteristics, such as economic development, industrial structure, transportation system, and administrative division. The zones consist of Northeast China (NEC), northern coastal China (NCC), southern coastal China (SCC), eastern coastal China (ECC), the middle reaches of the Yellow River (MRYLR), the middle reaches of the Yangtze River (MRYTR), Southwest China (SWC), and Northwest China (NWC) (Figure 3). A significant difference in air quality was observed among the eight economic zones. For example, the mean exceedance days of NCC is 179.71, which is nearly eight times that of SCC. Table 5 shows the descriptive statistics for all of the zones. On the basis of these statistics, we hold the view that the relationships between air quality and independent variables in different zones relatively differ, and we should separately discuss the association.

3.3. Model Building

Moran’s I was applied to test the autocorrelation in the urban air quality data. The results show that Moran’s index is statistically significant with a 0.649 value. Furthermore, the regression residuals for non-spatial regression (in this context, we used ordinary least squares [OLS] model) were tested, and Moran’s I equaled 0.613 (p-value = 0.000). The results indicate the presence of spatial autocorrelation in the air quality geographic data. The model estimation error will be induced if spatial autocorrelation is ignored. Therefore, the interaction between cities should be considered in the model in order to correct the calculation bias. In general, the spatial weight matrix is applied to modify the basic linear model, and the following two ways are widely used to add spatial autocorrelation into the regression model:
(1) Spatial lag model (SLM)—The autocorrelation effect is attributed to the correlation between the dependent variable and its adjacency value, which is similar to the autoregressive form in the time series model. The lag term, ρ Wy , is added in the equation to eliminate the correlation. The model form is as follows:
y = ρ Wy + x β + ε
where y refers to the explained variable (urban air quality), x denotes the seven explanatory variables (AUGPI and controlling variables); W represents an n × n spatial weight matrix, where n indicates the number of observations; β refers to the local regression parameters to be estimated; ε signifies a vector of independent and identically distributed error terms; ρ symbolizes the spatial autoregressive coefficient, measuring the intensity of dependence between cities. If no correlation is present, then ρ = 0 .
(2) Spatial error model (SEM)—The autocorrelation effect is considered to be a part of the residual structure. Assuming a spatial autocorrelation between error terms ε i , the model form is as follows:
Y = β X + ε ,   ε = λ W ε + ξ
where λ indicates the spatial autoregressive coefficient with the same meaning as ρ in Equation (5), and ξ represents the remaining part of the residual structure with no correlation.
When selecting a model, OLS was used to estimate the constrained model, without considering the influence of spatial correlation. The model selection is based on the significance of the Lagrange multiplier (LM). In accordance with the criterion proposed by Anselin [45], if LM(lag) and robust LM(lag) are more significant than LM(error) and robust LM(error), respectively, then the SLM is suitable; otherwise, SEM is preferred. The GeoDa software was used for the statistical processing and analysis of the data.

3.4. Model Implementation

Firstly, a zero-mean normalization method was applied to standardize all of the variables. Then, the Join Features tool in ArcGIS was used to transfer the attributes of the variables to the city spatial data. Before running GeoDa, Pearson’s correlation was calculated to analyze the degree of multi-collinearity problems for the explanatory variables. Multi-collinearity between the variables was defined as a value of 0.85 or higher. The results indicated that no pair of variables met the criteria for multi-collinearity. As a result, all of the variables were kept for further analysis. In addition, robust LM was applied to select the spatial regression model. Notably, GeoDa was implemented to qualify the association between the air quality and independent variables for eight economic zones.

4. Results and Discussion

4.1. Urban Growth Pattern Evaluation

The total number of newly created patches in 2005–2015 reached 122,498, and the total area measured 3.326 × 10 4 km 2 . The degree of urban aggregation at the city level was calculated through the AUGPI; a high value represents a high degree of urban aggregation and ceteris paribus. Figure 4 shows examples of the cities with low and high degrees of AUGPI. The cities with small values are mainly centralized in NWC, MRYLR, and NEC, indicating a comparatively severe urban sprawl in the region (Figure 2B).

4.2. Relationship between Urban Growth Pattern and Air Quality

In accordance with the robust LM results, SLM is more suitable than SEM for all of the economic zones, except for SCC. Therefore, SEM was implemented to qualify the relationship of SCC and SLM for the other seven zones, separately. Table 5 presents the regression results on the urban growth pattern and air quality.
The results show that urban growth pattern exerts a significant influence on air quality in NEC and NCC. The interpretation is that a more aggregated city will feature more exceedance days. To explain the results, two main potential reasons are discussed. Firstly, in the northern heating areas, a heating mode with coal as the main energy source significantly contributes to air pollution. Using Beijing as an example, heating has contributed a more than 50% increase in the concentration of PM2.5 in the winter months, since 2010 [46]. A city with high AUGPI value leads to a clumped population distribution because of the relatively short distance between destinations. A high demand for heating supply was observed in densely populated districts, leading to an additional coal consumption, which in turn affects the local air quality. Secondly, a high degree of urban aggregation results in heavy traffic congestion in NEC and NCC. In accordance with the traffic analysis report of major Chinese cities in 2016, announced by Mapabc, which is a widely recognized Chinese web mapping, navigation, and location-based service provider, 5 of the 10 most congested cities (i.e., Beijing, Changchun, Shenyang, Qingdao, and Dalian) are located in the zones. The AUGPI value of the five cities totaled 37.95, 50.40, 26.38, 34.40, and 41.62, respectively, which are all higher than the regional average level. Traffic congestion is related to the rapidly deteriorating urban air quality [17,18]. Hence, an increase in the degree of urban aggregation is significantly associated with poor air quality in NEC and NCC.
An opposite result was observed in SCC. The result indicates that aggregated cities are positively related with improved air quality. The result supports the compact city theory. In connection with the current situation in SCC, the potential explanations are summarized as follows: Through an emissions-based mechanism, SCC is highly developed in public transportation with a total length of 810 km urban rail transit lines by 2015, accounting for a quarter of the overall length in China, which provides support for public transit. Urban aggregation development enables an urban functional mixture of employment, recreation, and residence within proximity, features a high level of accessibility, and hence shortens the daily travel distance [47]. As a result, aggregated cities can reduce the fuel consumption for traffic and improve air quality by a decrease in the distance traveled and an increase in public transportation usage. On the basis of the data released by the China Forestry Database, the urban forest coverage for 2013 of the three provinces in SCC is comparatively high, with Fujian, Hainan, and Guangdong at 65.95%, 55.38%, and 51.26%, ranking first, fifth, and sixth of the 31 inter provinces, respectively. Less urban construction occupation has occurred in an aggregated city and a large area of green fields and has been recognized as highly related to improving the air quality reserve. Explanations from the two aspects may account for the significant and positive association between AUGPI and air quality in SCC.
Table 6 shows that urban diffusion is associated with improved air quality in NWC. Thus, the newly created areas of these cities constantly expand alongside valleys, because of terrain restrictions. For example, Lanzhou City, restricted by valley landform, extends similar to a strip along the river and is a typical linear city [48]. Air pollutants easily congregate and also stay for long periods in these cities. In general, although a scattered urban layout occupies additional open space, importantly, it creates wind paths, because of its low-density development, with which pollutants can be comparatively easily dispersed. Therefore, for these cities, a low value of urban aggregation is associated with good air quality.
Nonsignificant relationships were observed between the urban growth pattern and air quality in SCC, MRYLR, MRYTR, and SWC. These four zones feature one common characteristic, that is, they possess large populations. On the one hand, aggregated city development has worked efficiently on reducing private car dependence and vehicle miles traveled. On the other hand, a high degree of urban aggregation implies a massive usage of urban land and a concentration of human activities, resulting in an additional energy demand and consumption, which may offset the positive influence on air quality. The canceling effect may explain the nonsignificant relationship.

4.3. Relationship between Controlling Variables and Air Quality

The analysis shows that, in addition to the urban growth pattern, controlling the variables plays an important role on air quality. Table 7 presents the regression results.
From the results of land use mix, significant and negative relationships are found in NCC and MRYLR, significant and positive relationships in NWC, but nonsignificant relationships in the other five zones. Thus, the associations vary across the regions, and for most cities, land use mix causes no significant effect on air quality. Previous studies failed to find a significant association between the mixture and air quality, when considering the research area as a whole instead of delineating cities into different groups [14,23]. Recently, extensive attention has been paid to mixed use development in Chinese cities, to address severe problems caused by urban sprawl [49]. Notably, mixed land use is not a panacea, and the negative and nonsignificant effect on air quality should not be overlooked.
Compactness is negatively related to the number of exceedance days in NEC and SWC, indicating that compact urban form is associated with good air quality, which is expected to a certain extent. In this study, compactness reflects the regularity of the external form of the city, and high roundness indicates a compact city and limited travel distance. With the rapid expansion, city structures are complicated and fragmented. The degree of urban compactness may be impossible to measure comprehensively, accurately, and quantitatively by using a single index. Therefore, significant relationships between compactness and air quality are not observed for most cities. Future studies can adopt other indicators, such as the Boyce–Clark shape index, dual axis Fourier shape analysis, and fractal index, to measure the urban shape compactness at a comprehensive level, and to gain further in-depth information on the effect of urban shape on air quality.
The relationship between population density and air quality is under debate with two opposing views. Research conducted by Stone, R. [34], presented empirical evidence that an increase in density is associated with the reduction of air pollution on the basis of a study of 45 large U.S. metropolitan regions. However, other researchers have concluded that a large population density development led to high population-weighted PM2.5 concentrations on the basis of cross-sectional observations of 111 U.S. urban areas [24]. In this study, population density showed a positive and significant effect on air pollution in NCC and ECC, providing support for the second viewpoint. The potential explanation is that the cities in the two zones are associated with denser population distribution than other cities. The excessive concentration of population overburdens traffic load in urban areas, leading to heavy traffic congestion, which in turn contributes to additional vehicle exhaust emission.
Nonsignificant relationships were observed for the street connectivity and air quality for the eight economic zones, except for NCC. Contrary to the previously mentioned hypothesis, a good street connectivity is associated with a large road capacity and less traffic jam, resulting in less air pollutants. This nonsignificant relationship may be attributed to the indicator used in this article. Considering the availability of data, per capita urban road area was applied to represent the street connectivity, which fails to reflect the actual level of urban road development. A wide road is welcomed by the government and urban planners in China, leading to a significantly lower road length density than that of developed countries, maintaining the total road area. Further studies using the road length density index (unit: km/ km 2 ) are needed to measure street connectivity.
The coefficient of the city size was expected to be positive, and results were consistent with this expectation. Since the implementation of the Reform and Opening-up policy, China has been experiencing a fast-paced development over the last four decades, with rapid urban land expansion as one of the main features. The direct consequence is the heavy loss of vegetation, which can reduce O 3 concentration, lower air temperatures, and remove air pollutants [19]. Therefore, a larger city size denotes that more open space will be occupied, and the air quality will worsen.
The regression results show that per capita GDP causes no significant effect on air quality for the eight zones. A high per capita GDP indicates a developed economy. On the one hand, in a wealthy city with a high per capita GDP, economic activities consume additional energy and increase the concentrations of harmful air pollutants. On the other hand, additional money has been devoted to the use of clean energy and the implementation of strict emission management to improve air quality in these cities. The contrasting relationship possibly causes a canceling effect. Thus, on average, per capita GDP causes a nonsignificant influence on air quality.

5. Conclusions

This study is a pioneering attempt to apply a spatial regression model by considering spatial autocorrelation to evaluate the relationship between air quality and the urban growth pattern in China, by conducting empirical research on 338 prefecture-level and above cities. To obtain local and accurate results, the conception of eight economic zones was adopted to delineate cities into different groups and to estimate regression separately. In addition, six urban form and socioeconomic indicators were applied as controlling variables. The results agree with the hypothesis that the urban growth pattern is associated with air quality. The findings are summarized as follows.
Firstly, the total number of newly created patches in 2005–2015 reached 122,498, whereas the total area measured 3.326 × 10 4 km 2 . The AUGPI values ranged from 1.360 to 57.079 with a mean value of 24.939 and a median value of 25.771. The cities with small values are mainly centralized in NWC, MRYLR, and NEC, indicating a comparatively severe urban sprawl in the region.
Secondly, significant and positive relationships between AUGPI and air pollution were observed in NEC, NCC, and NWC, indicating that a high degree of urban aggregation is associated with poor air quality, whereas a negative parameter is obtained in SWC, showing an opposite association between urban aggregation and air quality. Nonsignificant connections were observed in the other four zones.
Thirdly, in terms of controlling the variables, significant and negative relationships between city size and air quality were found in half of the eight zones, indicating that a large city size is associated with poor air quality in Chinese cities. Population density is significantly correlated with poor air quality in NCC and ECC. The associations between land use mix and air quality vary across regions, and for most cities, land use mix causes no significant effect on air quality. Nonsignificant associations between per capita GDP and air quality were derived for all of the zones, because of the canceling effect. Compactness and connectivity were found to be nonsignificant with air quality for most cities, because of data restriction.
Nowadays, air pollution is a crucial problem in China and has become an inevitable threat to human health. The findings significantly highlighted that urban growth pattern, land use mix, population density, and city size exert important but different influences on air quality across the eight economic zones. China is still undergoing rapid urbanization, and an improved understanding of the quantitative relationships between urban forms and air quality is important for urban planners to formulate efficient strategies at the planning stage for the government to create alternative policies to improve air quality. Finally, considering the availability of data, only a summary metric (AQI) was used to reflect the air quality. AQI failed to reveal the relationships between individual air pollutants and urban forms. When further detailed air quality data become available, future research can be conducted to address this issue.

Author Contributions

Y.M. performed data analysis and wrote the manuscript. Q.H. provided the initial data and instruments from his study. Q.H. and A.H. designed the study and assisted in data analysis. Y.S. and Q.X. assisted in manuscript editing and article review.

Funding

This work was funded by the Fundamental Research Funds for the Central Universities [grant numbers skqy201509].

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Mian, M.M.; Zeng, C.; Nasry, A.A.N.B.; Al-Hamadani, S.M.Z.F. Municipal solid waste management in China: A comparative analysis. J. Mater. Cycles Waste Manag. 2017, 19, 1127–1135. [Google Scholar] [CrossRef]
  2. Zhang, L.; Wu, J.; Zhen, Y.; Shu, J. RETRACTED: A GIS-based gradient analysis of urban landscape pattern of Shanghai metropolitan area, China. Landsc. Urban Plan. 2004, 69, 1–16. [Google Scholar] [CrossRef]
  3. Jiao, L.; Mao, L.; Liu, Y. Multi-order landscape expansion index: Characterizing urban expansion dynamics. Landsc. Urban Plan. 2015, 137, 30–39. [Google Scholar] [CrossRef]
  4. Song, Y.; Ding, C.; Knaap, G. Envisioning Beijing 2020 through sketches of urban scenarios. Habitat Int. 2006, 30, 1018–1034. [Google Scholar] [CrossRef]
  5. Xu, C.; Liu, M.; Zhang, C.; An, S.; Yu, W.; Chen, J.M. The spatiotemporal dynamics of rapid urban growth in the Nanjing metropolitan region of China. Landsc. Ecol. 2007, 22, 925–937. [Google Scholar] [CrossRef]
  6. He, Q.; Liu, Y.; Chen, Z.; Yin, C.; Tan, R. Simultaneously simulate vertical and horizontal expansions of a future urban landscape: A case study in Wuhan, Central China. Int. J. Geogr. Inf. Sci. 2017, 31, 1907–1928. [Google Scholar] [CrossRef]
  7. Shi, Y.; Sun, X.; Zhu, X.; Li, Y.; Mei, L. Characterizing growth types and analyzing growth density distribution in response to urban growth patterns in peri-urban areas of Lianyungang City. Landsc. Urban Plan. 2012, 105, 425–433. [Google Scholar] [CrossRef]
  8. Ewing, R.; Schieber, R.A.; Zegeer, C.V. Urban sprawl as a risk factor in motor vehicle occupant and pedestrian fatalities. Am. J. Public Health 2003, 93, 1541–1545. [Google Scholar] [CrossRef] [PubMed]
  9. Neuman, M. The compact city fallacy. J. Plan. Educ. Res. 2005, 25, 11–26. [Google Scholar] [CrossRef]
  10. Holden, E.; Norland, I.T. Three challenges for the compact city as a sustainable urban form: Household consumption of energy and transport in eight residential areas in the greater Oslo region. Urban Stud. 2005, 42, 2145–2166. [Google Scholar] [CrossRef]
  11. Dempsey, N. Revisiting the compact city? Built Environ. (1978-) 2010, 36, 4–8. [Google Scholar] [CrossRef]
  12. Burgess, R.; Jenks, M. Compact Cities: Sustainable Urban Forms for Developing Countries; Routledge: Abingdon, UK, 2002. [Google Scholar]
  13. He, K.; Huo, H.; Zhang, Q. Urban air pollution in China: Current status, characteristics, and progress. Annu. Rev. Energy Environ. 2002, 27, 397–431. [Google Scholar] [CrossRef]
  14. Yuan, M.; Song, Y.; Huang, Y.; Hong, S.; Huang, L. Exploring the Association between Urban Form and Air Quality in China. J. Plan. Educ. Res. 2017. [Google Scholar] [CrossRef]
  15. OECD. The Cost of Air Pollution: Health Impacts of Road Transport; OECD Publishing: Paris, France, 2014; Volume 26. [Google Scholar]
  16. Krzyżanowski, M.; Kuna-Dibbert, B.; Schneider, J. Health Effects of Transport-Related Air Pollution; WHO Regional Office Europe: Copenhagen, Denmark, 2005. [Google Scholar]
  17. Shefer, D. Congestion, air pollution, and road fatalities in urban areas. Accid. Anal. Prev. 1994, 26, 501–509. [Google Scholar] [CrossRef]
  18. Huan, L.; Kebin, H. Traffic Optimization: A New Way for Air Pollution Control in China’s Urban Areas; ACS Publications: Washington, DC, USA, 2012. [Google Scholar]
  19. Nowak, D.J.; Crane, D.E.; Stevens, J.C. Air pollution removal by urban trees and shrubs in the United States. Urban For. Urban Green. 2006, 4, 115–123. [Google Scholar] [CrossRef] [Green Version]
  20. Williams, K.; Burton, E.; Jenks, M. Achieving the compact city through intensification: An acceptable option. In The Compact City: A Sustainable Urban Form; Taylor & Francis: Thames, UK, 1996; pp. 83–96. [Google Scholar]
  21. Jim, C.Y.; Chen, S.S. Comprehensive greenspace planning based on landscape ecology principles in compact Nanjing city, China. Landsc. Urban Plan. 2003, 65, 95–116. [Google Scholar] [CrossRef]
  22. Long, Y.; Huang, C.C. Does block size matter? The impact of urban design on economic vitality for Chinese cities. Environ. Plan. B Urban Anal. City Sci. 2017. [Google Scholar] [CrossRef]
  23. Stone, B. Urban sprawl and air quality in large US cities. J. Environ. Manag. 2008, 86, 688–698. [Google Scholar] [CrossRef] [PubMed]
  24. Clark, L.P.; Millet, D.B.; Marshall, J.D. Air quality and urban form in US urban areas: Evidence from regulatory monitors. Environ. Sci. Technol. 2011, 45, 7028–7035. [Google Scholar] [CrossRef] [PubMed]
  25. Bereitschaft, B.; Debbage, K. Urban form, air pollution, and CO2 emissions in large US metropolitan areas. Prof. Geogr. 2013, 65, 612–635. [Google Scholar] [CrossRef]
  26. Makido, Y.; Dhakal, S.; Yamagata, Y. Relationship between urban form and CO2 emissions: Evidence from fifty Japanese cities. Urban Clim. 2012, 2, 55–67. [Google Scholar] [CrossRef]
  27. Wu, J. Key concepts and research topics in landscape ecology revisited: 30 years after the Allerton Park workshop. Landsc. Ecol. 2013, 28, 1–11. [Google Scholar] [CrossRef]
  28. He, Q.; He, W.; Song, Y.; Wu, J.; Yin, C.; Mou, Y. The impact of urban growth patterns on urban vitality in newly built-up areas based on an association rules analysis using geographical ‘big data’. Land Use Policy 2018, 78, 726–738. [Google Scholar] [CrossRef]
  29. Fang, C.; Wang, S.; Li, G. Changing urban forms and carbon dioxide emissions in China: A case study of 30 provincial capital cities. Appl. Energy 2015, 158, 519–531. [Google Scholar] [CrossRef] [Green Version]
  30. McCarty, J.; Kaza, N. Urban form and air quality in the United States. Landsc. Urban Plan. 2015, 139, 168–179. [Google Scholar] [CrossRef]
  31. Liu, Y.; Arp, H.P.H.; Song, X.; Song, Y. Research on the relationship between urban form and urban smog in China. Environ. Plan. B Urban Anal. City Sci. 2017, 44, 328–342. [Google Scholar] [CrossRef]
  32. Tobler, W.R. A computer movie simulating urban growth in the Detroit region. Econ. Geogr. 1970, 46, 234–240. [Google Scholar] [CrossRef]
  33. Zheng, S.; Cao, J.; Kahn, M.E.; Sun, C. Real Estate Valuation and Cross-Boundary Air Pollution Externalities: Evidence from Chinese Cities. J. Real Estate Financ. Econ. 2014, 48, 398–414. [Google Scholar] [CrossRef]
  34. Stone, R. Beijing’s Marathon run to clean foul air nears finish line. Science 2008, 321, 636–637. [Google Scholar] [CrossRef] [PubMed]
  35. Lu, C.; Liu, Y. Effects of China’s urban form on urban air quality. Urban Stud. 2016, 53, 2607–2623. [Google Scholar] [CrossRef]
  36. Onkal-Engin, G.; Demir, I.; Hiz, H. Assessment of urban air quality in Istanbul using fuzzy synthetic evaluation. Atmos. Environ. 2004, 38, 3809–3815. [Google Scholar] [CrossRef]
  37. Tian, G.; Yang, Z.; Zhang, Y. The spatio-temporal dynamic pattern of rural residential land in China in the 1990s using Landsat TM images and GIS. Environ. Manag. 2007, 40, 803–813. [Google Scholar] [CrossRef] [PubMed]
  38. Liu, X.; Li, A.; Chen, Y.; Tan, Z.; Li, S.; Ai, B. A new landscape index for quantifying urban expansion using multi-temporal remotely sensed data. Landsc. Ecol. 2010, 25, 671–682. [Google Scholar] [CrossRef]
  39. Liu, X.; Ma, L.; Li, X.; Ai, B.; Li, S.; He, Z. Simulating urban growth by integrating landscape expansion index (LEI) and cellular automata. Int. J. Geogr. Inf. Sci. 2014, 28, 148–163. [Google Scholar] [CrossRef]
  40. He, Q.; Song, Y.; Liu, Y.; Yin, C. Diffusion or coalescence? Urban growth pattern and change in 363 Chinese cities from 1995 to 2015. Sustain. Cities Soc. 2017, 35, 729–739. [Google Scholar] [CrossRef]
  41. Duncan, M.J.; Winkler, E.; Sugiyama, T.; Cerin, E.; duToit, L.; Leslie, E.; Owen, N. Relationships of land use mix with walking for transport: Do land uses and geographical scale matter? J. Urban Health 2010, 87, 782–795. [Google Scholar] [CrossRef] [PubMed]
  42. Wang, M.; Madden, M.; Liu, X. Exploring the Relationship between Urban Forms and CO2 Emissions in 104 Chinese Cities. J. Urban Plan. Dev. 2017, 143, 04017014. [Google Scholar] [CrossRef]
  43. Torrens, P.M.; Alberti, M. Measuring Sprawl; CASA: Seattle, DC, USA, 2000. [Google Scholar]
  44. Mou, Y.; He, Q.; Zhou, B. Detecting the Spatially Non-Stationary Relationships between Housing Price and Its Determinants in China: Guide for Housing Market Sustainability. Sustainability 2017, 9, 1826. [Google Scholar] [CrossRef]
  45. Anselin, L. Local indicators of spatial association—LISA. Geogr. Anal. 1995, 27, 93–115. [Google Scholar] [CrossRef]
  46. Liang, X.; Zou, T.; Guo, B.; Li, S.; Zhang, H.; Zhang, S.; Zhang, H.; Chen, S.X. Assessing Beijing’s PM2.5 pollution: Severity, weather impact, APEC and winter heating. Proc. R. Soc. A 2015, 471. [Google Scholar] [CrossRef]
  47. Breheny, M. The compact city and transport energy consumption. Trans. Inst. Br. Geogr. 1995, 20, 81–101. [Google Scholar] [CrossRef]
  48. Zheng, S.; Wang, M.; Wang, S.; Tao, Y.; Shang, K. Short-term effects of gaseous pollutants and particulate matter on daily hospital admissions for cardio-cerebrovascular disease in Lanzhou: Evidence from a heavily polluted city in China. Int. J. Environ. Res. Public Health 2013, 10, 462–477. [Google Scholar] [CrossRef] [PubMed]
  49. Kong, H.; Sui, D.Z.; Tong, X.; Wang, X. Paths to mixed-use development: A case study of Southern Changping in Beijing, China. Cities 2015, 44, 94–103. [Google Scholar] [CrossRef]
Figure 1. Three types of urban growth pattern (part of Jinan City).
Figure 1. Three types of urban growth pattern (part of Jinan City).
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Figure 2. Spatial patterns of the variables across China.
Figure 2. Spatial patterns of the variables across China.
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Figure 3. Administrative boundaries of the study area.
Figure 3. Administrative boundaries of the study area.
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Figure 4. Examples of cities with low and high aggregated urban growth pattern index (AUGPI) value.
Figure 4. Examples of cities with low and high aggregated urban growth pattern index (AUGPI) value.
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Table 1. Main urban form variables identified in literature review.
Table 1. Main urban form variables identified in literature review.
CategoryVariables
LandscapeNumber of urban patches
Mean urban patch area
Total urban area
Largest patch index
Standard deviation of urban patches
Eccentricity standard deviation ellipse
Total forest area
Forest mixing
Fractal dimension index
Boyce–Clark shape index
Shape compactness
Landscape shape index
Contiguity
Patch cohesion index
Mean perimeter area ratio
PopulationDegree of population centering
Total population amount
Population density
MixtureLand use mix
AccessibilityStreet connectivity
Summarized from [14,23,24,29,30,31].
Table 2. Air quality index (AQI) categories (HJ 633-2012).
Table 2. Air quality index (AQI) categories (HJ 633-2012).
AQI ValueAir Pollution LevelImpacts on Health
0–50GoodPollution poses little or no risk.
51–100ModerateThe air quality is acceptable; certain pollutants exert a weak effect on sensitive groups.
101–150Slightly pollutedSituation becomes worse for sensitive groups; healthy groups begin to feel uncomfortable.
151–200Moderately pollutedThe air is dangerous for the heart and respiratory system.
201–300Heavily PollutedEveryone may begin to experience health problems.
301–500Severely PollutedThe air pollution phenomenon severely threatens public health.
Table 3. Variable description and data resources. AUGPI—aggregated urban growth pattern index.
Table 3. Variable description and data resources. AUGPI—aggregated urban growth pattern index.
VariablesDescriptionData ResourceData Year
Exceedance daysAQI > 100Chinese Ministry of Ecology and Environment2015
AUGPIAggregated urban-growth pattern indexNational Land Use/Cover Database of China2005–2015
Mixed valueLand use mixBaidu Maps2015
CompactnessUrban shape compactnessNational Land Use/Cover Database of China2015
DensityPopulation density (per km 2 )China Urban Construction Statistical Yearbook2015
ConnectivityStreet connectivity (%)China Urban Construction Statistical Yearbook2015
City sizeCity size ( km 2 )National Land Use/Cover Database of China2015
Per capita GDPPer capita GDP (yuan)China Urban Construction Statistical Yearbook2015
Table 4. Descriptive statistics for the variables.
Table 4. Descriptive statistics for the variables.
VariablesMinMaxMeanStd. Dev
Exceedance days0.000295.00082.15262.452
AUGPI1.36057.07924.93910.190
Mixed value0.2712.2642.0300.163
Compactness0.0320.4880.1110.066
Density49.73410,711.6673012.4522256.826
Connectivity0.0010.2480.0580.045
City size15.50012,187.000472.434980.424
Per capita GDP10,601.000195,792.00059,150.08832,806.974
Table 5. Descriptive statistics for eight economic zones. ECC—eastern coastal China; MRYLR—middle reaches of the Yellow River; MRYTR—middle reaches of the Yangtze River; NCC—northern coastal China; NEC—Northeast China; NWC—Northwest China; SCC—southern coastal China; SWC—Southwest China.
Table 5. Descriptive statistics for eight economic zones. ECC—eastern coastal China; MRYLR—middle reaches of the Yellow River; MRYTR—middle reaches of the Yangtze River; NCC—northern coastal China; NEC—Northeast China; NWC—Northwest China; SCC—southern coastal China; SWC—Southwest China.
Zone DivisionIncluded Provinces GDP   ( 10 8   yuan ) Population   ( 10 4 ) Mean Exceedance Days
ECCJiangsu, Shanghai, and Zhejiang118,332.415,852100.71
MRYLRHenan, Inner Mongolia, Shanxi, and Shaanxi77,63619,305123.69
MRYTRAnhui, Hubei, Hunan, and Jiangxi82,54823,04277.35
NCCBeijing, Hebei, Shandong, and Tianjin116,85720,653179.71
NECHeilongjiang, Jilin, and Liaoning54,44210,97683.53
NWCGansu, Ningxia, Qinghai, Tibet, and Xinjiang20,102693070.67
SCCFujian, Guangdong, and Hainan87,07015,31322.11
SWCGuangxi, Guizhou, Sichuan, Yunan, and Chongqing73,02323,98540.63
Table 6. Relationship between urban growth pattern and air quality.
Table 6. Relationship between urban growth pattern and air quality.
Zone DivisionCoefficientStd. ErrorT-StatisticProbability
NEC0.1450.0761.9130.056 *
NCC0.0380.175−1.8620.063 *
SCC−0.0540.032−1.6660.095 *
NWC0.4130.1552.6700.007 **
ECC0.0890.0591.4930.135
MRYLR0.1240.0951.3150.189
MRYTR−0.0190.069−0.2710.786
SWC0.0280.0500.5620.574
* Significant at the p < 0.10 level. ** Significant at the p < 0.05 level.
Table 7. Relationship between controlling variables and air quality.
Table 7. Relationship between controlling variables and air quality.
Zone DivisionMixed ValueCompactnessDensityConnectivityCity SizePer capita GDP
NEC−0.186−0.152 **0.076−0.1160.173 *0.070
NCC−0.647 **−0.1850.838 **−0.978 *0.055−0.094
SCC0.038−0.037−0.0030.0470.299 **−0.064
NWC0.132 *0.0530.0010.2100.261−0.138
ECC−0.2180.0360.463 **−0.141−0.0110.102
MRYLR−0.259 *0.0640.0990.0690.898 *−0.083
MRYTR0.0841−0.2400.0920.0970.350 *0.127
SWC0.161−0.142 **0.116−0.089−0.0090.103
* Significant at the p < 0.10 level. ** Significant at the p < 0.05 level.

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MDPI and ACS Style

Mou, Y.; Song, Y.; Xu, Q.; He, Q.; Hu, A. Influence of Urban-Growth Pattern on Air Quality in China: A Study of 338 Cities. Int. J. Environ. Res. Public Health 2018, 15, 1805. https://doi.org/10.3390/ijerph15091805

AMA Style

Mou Y, Song Y, Xu Q, He Q, Hu A. Influence of Urban-Growth Pattern on Air Quality in China: A Study of 338 Cities. International Journal of Environmental Research and Public Health. 2018; 15(9):1805. https://doi.org/10.3390/ijerph15091805

Chicago/Turabian Style

Mou, Yanchuan, Yan Song, Qing Xu, Qingsong He, and Ang Hu. 2018. "Influence of Urban-Growth Pattern on Air Quality in China: A Study of 338 Cities" International Journal of Environmental Research and Public Health 15, no. 9: 1805. https://doi.org/10.3390/ijerph15091805

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