1. Introduction
Cities are not only the centers of economic development and human activities, but also tremendous sources of carbon emissions [
1]. In cities, transportation is identified as one of the priority sectors for decarbonization [
2]. However, transportation is the most non-renewable energy-dependent sector in the world [
3]. Compared to other sectors, transportation has experienced the most difficulty in achieving CO
2 emissions reduction [
4]. Clearly, reducing energy consumption and CO
2 emission in the transportation sector contributes significantly to climate change mitigation [
5]. Some of the countermeasures to achieve low-carbon cities and green transport should also include reducing CO
2 emissions from the transportation sector [
6,
7]. As an important travel purpose, commuting accounts for nearly 50% of the total travel [
8,
9]. Discovering the reasons behind commuting mode choice and related CO
2 emissions is vital for the construction of low-carbon cities and the formulation of sustainable transport policies and schemes in regions. Therefore, encouraging non-motorized commuting and reducing CO
2 emissions while commuting will help developing countries such as China reduce CO
2 emissions in urban transportation.
Unlike western developed countries, China is in the process of rapid urbanization and urban construction. High-speed economic development, urban spatial expansion and increased car ownership have resulted in an increasing proportion of employees who choose cars to commute. This shift has led to rapid growth in urban transportation demand with related energy consumption and CO
2 emissions. In 2019, transport sector CO
2 emissions accounted for about 10% of China’s total energy-related CO
2 emissions [
10]. Meanwhile, with the acceleration of China’s urbanization process, the urban environment has also undergone tremendous changes such as diversification of land use and suburbanization of housing. Changes in the urban built environment affect residents’ travel behavior and then generate related CO
2 emissions [
5,
11]. Furthermore, changes in the objective built environment of cities affect residents’ perception of the built environment. Changes in the perception of the built environment may affect residents’ travel behavior, which further affects residents’ travel CO
2 emissions [
12,
13]. Therefore, examining the impact of the perceived built environment on travel behavior and related environmental consequences is important for policymakers to promote low-carbon travel behaviors by improving the urban environment.
While scholars have been increasingly interested in combining travel behavior, travel CO
2 emissions with urbanization [
14,
15], urban form [
16,
17,
18] and land use [
19,
20,
21] to reduce CO
2 emissions in the transportation sector, the current literature is more focused on exploring the correlations among objective measures of the built environment, travel behavior and travel CO
2 emission [
22,
23,
24,
25,
26,
27]. As for the impacts of the perceived built environment on travel behavior and travel-related CO
2 emissions, researchers have paid limited attention [
28,
29,
30], especially regarding the impact of perceived neighborhood environment on travel CO
2 emissions. In fact, the perceived environment not only has the mediating effect in the impact of the built environment on travel behavior [
13], but also has a direct impact on active travel behavior [
31,
32,
33]. Currently, we know little about the impact of the perceived built environment on travel modes other than active travel.
The built environment is an important determinant of travel behavior [
34]. Urban-level built environment and transportation planning are of great benefit to achieving the regional sustainable planning goals [
23,
35,
36]. With the support of the above views, numerous studies have linked the built environment with travel behavior and travel CO
2 emissions. Some studies have suggested that built environment factors such as land use diversity and density affect travel distance and travel mode choice, and travel distance and travel mode are closely related to transportation CO
2 emissions [
37,
38,
39,
40,
41,
42]. Ding et al. examined the effects of the built environment on travel distance and energy consumption and found significant differences between commuting and non-commuting trips [
24]. Ten Dam found that full-time work is associated with higher energy consumption [
43]. These studies suggest that the impact of the built environment may be different for different travel purposes and types of work. Therefore, further research on commuting travel of urban full-time employees is of great significance.
Most of the above studies only have focused on the impact of objective measures of the built environment on travel behavior and related CO
2 emissions. Research on the perceived built environment has been more focused on its association with physical activity (PA) [
44,
45,
46,
47]. Other studies have focused on the relationship between perceived environment and active travel, but most of these studies only focused on the relationship between perceived environment and children or adolescents’ active commuting to school [
48,
49] and adults’ active travel [
31,
32,
50], and seldom on the impact of the perceived built environment on commuting behavior and related CO
2 emissions of urban full-time employees. Recent studies have found that perceived high land use diversity, the existence of alternative routes, perceived cycling infrastructure, aesthetic characteristics and green space can promote pedestrian traffic and bicycle traffic [
31,
50]. However, we know little about the impacts of the perceived built environment on travel modes other than active travel modes [
29]. A study in rural China found that perceived accessibility and preference have positive impacts on the probability of choosing to walk, and safety and neighborhood harmony have positive impacts on the frequency of motorcycle and private car trips [
51]. In addition, perceptions had a mediating effect in the impact of the objective built environment on travel behavior [
13]. Hong and Chen found that built environment factors such as traffic convenience and density affect perceived safety from crime, and further affect walking behavior [
12].
In summary, without examining the effects of the perceived built environment on travel modes other than active travel mode and on travel-related CO2 emissions, the above-mentioned studies focus primarily on the impact of the objective measures of the urban built environment on travel behavior and related CO2 emissions. However, the existing studies seldom focus on the specialized group of urban full-time employees for whom the daily commuting behavior has an important impact on transportation CO2 emissions. Furthermore, most of the current studies only consider the direct effect of the built environment on travel CO2 emissions while ignoring the mediating effect of travel behavior. Therefore, this paper develops a structural equation model to examine the direct and indirect effects of perceived neighborhood environment on commuting mode choice and commuting CO2 emissions of employees in Nanjing, and to better understand the mechanism of the connection among perceived environment—travel behavior—environmental consequences. The core questions of this study are: (1) Does perceived neighborhood environment affect commuting mode choice and commuting CO2 emissions? (2) Does commuting mode choice have a mediating effect in the impact of perceived neighborhood environment on commuting CO2 emissions?
This study contributes threefold to the literature. First, we examined the impact of perceived neighborhood environment rather than objective measures of built environment on commuting mode choice and commuting CO
2 emissions, which has received less attention in the literature. Second, our research objects are urban full-time employees with relatively fixed daily commuting behavior. Their commuting behavior has an important impact on urban transportation CO
2 emissions as research has found that full-time work is associated with higher energy consumption [
43]. Third, we used a structural equation model to examine the mediating effect of commuting mode choice in the impact of perceived neighborhood environment on commuting CO
2 emissions. Our research provides implications for the formulation of urban commuting CO
2 emissions reduction policies.
The remainder of this paper is organized as follows.
Section 2 describes the study area, self-administered survey, variables in the model and modeling approaches.
Section 3 presents calculation results of commuting CO
2 emissions and results of the structural equation model.
Section 4 presents research conclusions and discussion.
3. Results
3.1. Calculation Results of Commuting CO2 Emissions
Through calculation, the average one-way commuting distance of urban employees in Nanjing is 12.42 km, the one-way commuting time is 29.59 min, the daily commuting CO
2 emissions per capita is 1.14 kg and the corresponding standard deviations are 13.17 km, 22.19 min and 1.82 kg, respectively. From comparison with other studies in
Table 8, we found that the daily commuting CO
2 emissions of our sample are close to the results of other scholars’ research on China [
5,
60], but much lower than the result of Ohnmacht et al. for Switzerland [
58].
3.2. Goodness of Fit for Structural Equation Model
In this paper, we used AMOS 22 to build the initial model. The model was estimated using the Bollen–Stine Bootstrap because our data were not normally distributed [
11,
32]. We removed non-statistically significant links (
p > 0.1) and re-estimated the model. We then modified the model according to the modification indices (MI) to obtain the final model. The model fit indices and its corresponding reference values [
69] are given in
Table 9. All indices show that the model fits well and is statistically significant.
3.3. Effects among Endogenous Variables
The relationships among endogenous variables are shown in
Table 10. In terms of the direct effects among endogenous variables, the service facilities perception in the perceived neighborhood environment variables has a significant direct effect on commuting mode, which indicates that employees with a positive perception of service facilities around the community have a higher probability of choosing walking/bicycle commuting methods. It is understandable that employees have a positive perception of service facilities around the community, meaning they may live closer to the center of the main city rather than the edge of the main city, so they are closer to the workplace and are more likely to choose the walk/bicycle commuting mode. Meanwhile, car ownership and commuting distance have a significant direct effect on commuting mode. This shows that employees with more car ownership and longer commuting distance have a higher probability of choosing car commuting mode. In addition, commuting mode, commuting distance and car ownership have a significant direct effect on commuting CO
2 emissions, which means that employees who choose to commute by car, commute longer distances or own more cars and emit more CO
2 when commuting.
However, perceived neighborhood environment variables have no direct effect on commuting CO2 emissions. Service facilities perception and commuting distance indirectly affect commuting CO2 emissions through the mediating effect of commuting mode. That is, employees with a positive perception of service facilities around the community have a higher probability of choosing walking/biking commuting mode, and CO2 emissions are lower when they choose walking/biking commuting mode; employees with longer commuting distance are more likely to choose the car commuting mode, and CO2 emissions are higher when choosing the car commuting mode. Car ownership indirectly affects commuting mode choice through the mediating effect of service facilities perception. In addition, car ownership indirectly affects commuting CO2 emissions through the mediating effect of service facilities perception and commuting mode.
3.4. Effects of Socio-Demographic Variables on Endogenous Variables
The relationships between socio-demographic variables and endogenous variables are shown in
Table 11.
Among socio-demographic variables, only income directly impacts on car ownership. This indicates that high-income employees own more cars.
Socio-demographic variables directly impact perceived neighborhood environment. Male employees have a positive perception of road conditions and a negative perception of environmental quality, which means that male employees better understood road conditions, while female employees better understood environmental quality. Older employees have a positive perception of traffic safety. Freelance employees have a negative perception of traffic safety and a positive perception of road conditions. Meanwhile, employees with local hukou have a positive perception of environmental quality. In addition, socio-demographic variables also have significant indirect effects on perceived neighborhood environment, which comes from the mediating effect of car ownership. Higher-income employees own more cars, while employees with more cars have a positive perception of community safety and a negative perception of service facilities. It is not difficult to understand that most of the high-income employees live in high-end communities, and the safety of such communities is more guaranteed; employees with more cars can easily reach farther distances to obtain services, so they have a negative perception of service facilities around their communities.
Socio-demographic variables directly impact commuting distance, commuting mode and commuting CO2 emissions. Male employees, employees with larger household size and employees with local hukou commute longer distance, while freelance employees commute relatively shorter distances. Male employees, highly educated employees and employees with local hukou have a higher probability of choosing the car commuting mode, while older employees and freelance employees have a higher probability of choosing the walking/biking commuting mode. Meanwhile, male employees and freelance employees emit more CO2 when commuting. In addition, socio-demographic variables also indirectly impact commuting mode and commuting CO2 emissions. This comes from the mediating effects of car ownership and commuting distance. Higher-income employees own more cars, and so they have a higher probability of commuting by car and emit more CO2. Male employees, local hukou employees and employees with larger household size have longer commuting distances, and so they are more likely to choose cars to commute and emit more commuting CO2 emissions. Freelance employees have relatively shorter commuting distances, and so they have a higher probability of choosing the walking/bicycle commuting mode; this results in lower commuting CO2 emissions. Highly educated employees are more likely to choose cars to commute, and so their commuting CO2 emissions are relatively higher. Older employees are more likely to choose the walking/biking commuting mode, and so their commuting CO2 emissions are relatively lower.
In general, the indirect effects of socio-demographic characteristics on commuting CO2 emissions are more significant than the direct effects, and so we cannot ignore the mediating effects of commuting behavior, including commuting distance and commuting mode.