What Determines the Psychological Well-Being during Commute in Xi’an: The Role of Built Environment, Travel Attitude, and Travel Characteristics
Abstract
:1. Introduction
2. Study Area and Data
2.1. Research Areas
2.2. Source of Data
3. Methodology
3.1. CWB Measurement
3.2. Analysis of the Influences on CWB
3.3. Conceptual Model
3.3.1. Influence of External Objective Built Environmental Factors and Travel Characteristics on SWT
3.3.2. The Influence of Internal Subjective Psychological Factors and Non-Travel Mode Characteristics on SWT
4. Results
4.1. Comparison of Differences in CWB
4.2. Factors Affecting CWB
4.2.1. The Influence of Socio-Demographics on CWB
4.2.2. The Influence of Commuting Mode Choice and Other Travel Characteristics on CWB
4.2.3. The Influence of Travel Attitude/Preference on CWB
4.2.4. The Influence of Location and the Built Environment on CWB
5. Conclusions
5.1. Discussion
- (1)
- This paper calculates the data obtained from a survey based on STS. According to the results, CWB for various travel modes in Xi’an is ordered as follows (from high to low): walking, motorcycle, electric bicycle, staff shuttle bus, bicycle, metro, driving, taxi, and bus. From the results, it can be concluded that the satisfaction of active commuters is the highest [47,61,62], and that the CWB with cars is higher than that associated with buses [63]. These results are consistent with the existing research studies. We found that the overall CWB associated with public transportation is low, with bus travel having the lowest level of CWB, which reflects the problems with public transportation in Xi’an. In the research area, except for the main urban area, public transportation is underdeveloped, and the peripheral suburbs are not tightly connected to the center of the main urban area. The density of public transport stations is low, and the coverage rate is not high. There are only three rail transit lines throughout Xi’an that are in operation. The coverage rate of bus stations in Xi’an is high for the first and second circle layers when calculated using service area radiuses of 300 m and 500 m. For the radius of 300 m, the calculated coverage rate reaches 74.2%. In the third circle layer (the main urban area circle layer), the calculated coverage rates are 49.1% and 44.5%, respectively. Coverage is even lower in the fourth circle layer. The third and fourth circle layers do not meet the construction standard. This reflects the fact that the construction of public transportation does not match the land development in the peripheral suburbs, and the travel needs of suburban residents are not being met. Moreover, although public transportation in the inner circle layers (the main urban area) is relatively well developed, under the “strong centripetal effect” caused by the land use and transportation network in the urban development process of Xi’an, buses in the inner circle layers face serious traffic congestion problems. Coupled with the often-poor service quality of the various bus operation companies, this has seriously affected CWB of public transportation.
- (2)
- The results of the SEM show that the built environment factor does not directly affect the CWB [20], but it will act on the CWB by affecting other factors. The three factors known as the travel attitude/preference, commuting mode choice, and other travel characteristics will affect each other, and will affect commute well-being directly and indirectly. The other travel characteristic factors has the greatest overall impact on commute satisfaction (−0.536) and the travel attitude/preference has the greatest direct impact (−0.426). This also shows that, in the future urban traffic management of Xi’an, management of congestion, reduced commuting time, and the number of transfers can significantly improve residents’ CWB regardless of residents’ travel attitudes/preferences.
- (3)
- Based on the influencing factors for CWB, the following conclusions can be drawn.: (a) For male residents, CWB will be higher when there are fewer restrictions on work time and respondents have greater experience with longer driving, for residents with a more complicated children shuttle mode and easier to quarrel with others, CWB will be lower. (b) From the perspective of travel characteristics, time factors will greatly affect the satisfaction, which has also been confirmed by past studies [53], and the number of transfers can also reflect the length of time spent traveling. When setting dummy variables for the commuting mode choice in this paper, it is classified, according to whether driving is required, whether the mode involves autonomy of travel, and the travel cost. The result also reflects that the CWB will drop significantly during the transition from walking to private cars. (c) From the perspective of travel attitudes/preferences, the more positive are preferences and attitudes, the higher is the CWB. However, this paper also considers the commuting mode choice by residents, and the travel modes usually have serious problems, or need to deal with a complex road environment, which leads to an increase of travel time and results in a negative impact on satisfaction. (d) From the perspective of location and the built environment, the per capita bus line length and the mean value of the global depth of the road network, and the population density in the community where respondents reside, as well as the number of bus stops within 500 m of where the respondents reside and work will significantly affect the latent variable of the built environment, and act on the travel attitudes/preferences, the commute mode choice, and other travel characteristics, which will further affect the CWB. The location factor is also significantly negatively correlated with satisfaction, which indicates that there is a significant spatial difference in CWB.
5.2. Limitations and Strengths
5.3. Conclusions and Policy Recommendations
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Socio-Demographics | Dummy Variable | Percentage | Socio-Demographics | Dummy Variable | Percentage |
---|---|---|---|---|---|
Gender | Personal character 1 | ||||
Female | 0 | 51.12 | More critical, easy to quarrel with others: Strongly disagree to strongly agree (1 to 7) | 1 | 9.19 |
Male | 1 | 48.88 | 2 | 52.18 | |
Education level | 3 | 9.26 | |||
Junior high school or less | 1 | 21.36 | 4 | 20.24 | |
High school or higher vocational education | 2 | 34.06 | 5 | 6.08 | |
College and undergraduate | 3 | 38.69 | 6 | 2.71 | |
Master and above | 4 | 5.89 | 7 | 0.33 | |
Age | Personal character 2 | ||||
16–20 | 1 | 2.84 | Good self-control ability: Strongly disagree to strongly agree (1 to 7) | 1 | 0.73 |
21–30 | 2 | 26.98 | 2 | 3.31 | |
31–40 | 3 | 30.95 | 3 | 5.36 | |
41–50 | 4 | 20.97 | 4 | 25.46 | |
51–60 | 5 | 16.01 | 5 | 31.28 | |
61–65 | 6 | 2.25 | 6 | 29.10 | |
7 | 4.76 | ||||
Job status | Personal character 3 | ||||
State organs, party, and mass organizations | 1 | 3.51 | More impetuous: Strongly disagree to strongly agree (1 to 7) | 1 | 3.37 |
State-owned enterprises and institutions | 2 | 16.87 | 2 | 20.83 | |
Employees of private and foreign enterprises | 3 | 21.10 | 3 | 10.98 | |
Individual operators | 4 | 25.20 | 4 | 38.89 | |
Professional | 5 | 22.09 | 5 | 16.01 | |
Urban migrant workers | 6 | 11.24 | 6 | 9.33 | |
7 | 0.60 | ||||
Monthly income | Personal character 4 | ||||
Lower middle income | 1 | 15.87 | More introverted and reserved: Strongly disagree to strongly agree (1 to 7) | 1 | 3.31 |
Middle income | 2 | 23.61 | 2 | 18.58 | |
Upper-middle-income | 3 | 43.72 | 3 | 16.87 | |
Revenue | 4 | 16.80 | 4 | 27.38 | |
Driving license status | 5 | 18.98 | |||
No driver’s license | 0 | 45.04 | 6 | 13.69 | |
Less than 3 years | 1 | 11.97 | 7 | 1.19 | |
3–5 years | 2 | 19.84 | Personal character 5 | ||
6–10 years | 3 | 14.22 | More easygoing and calm: Strongly disagree to strongly agree (1 to 7) | 1 | 0.79 |
More than 10 years | 4 | 8.93 | 2 | 1.59 | |
Shuttle mode | 3 | 3.97 | |||
No school-age children | 0 | 73.94 | 4 | 24.07 | |
On the way | 1 | 5.16 | 5 | 33.20 | |
out of the way | 2 | 5.56 | 6 | 31.55 | |
Special shuttle | 3 | 15.34 | 7 | 4.83 |
Category | Variable Name | Variable Calculation Method |
---|---|---|
Location | Population density circle layer | Four population structure circle layers were formed through cluster analysis on 80 street offices based on the population data of the study area in 2016. |
Land use | Land use diversity index, landmix | , the community in which the sample resides is the basic unit, ranging from 0 to 1 [25,26] |
Density | Population and employment density, pop_d | The ratio of the sum of the community population and the number of jobs to the total land area of the individual’s place of residence, unit of measurement: person/km2 |
Transit network | Number of stations accessible by bus, pro | The number of bus stops within 500 m around the sample point |
Bus line density, pubm | The density of bus lines within 500 m around the sample point | |
Bus stop density, bus_d | The ratio of the number of bus stops to the area of the community in which the samples were taken | |
Per capita length of the bus lines, bus_l | The ratio of the length of the bus lines to the population (the sum of the resident population and the employed population) of the community in which the samples were taken, in m/person | |
Road network | Mean value of connectivity, Connec | The mean values of connectivity, control points, mean depth, global and local integration, and global and local depth of the road network were calculated using the Axwoman program [27], based on the community in which the survey respondents lived or worked as the basic unit |
Mean value of control point, Contro | ||
Mean value of depth, MeanDe | ||
Mean value of global integration, GInteg | ||
Mean value of local integration, LInteg | ||
Mean value of global depth, TotalD | ||
Mean value of local depth, LocalD | ||
Per capita network length, net_p | The ratio of the length of the road network to the population of the community (the sum of the resident population and the employed population) was calculated using the community in which the respondents resided as the basic unit, unit of measurement: m/person | |
Walking (cycling) condition, ssw | SSW = z[z (gross population density) + 2 × z (integration)], walking (cycling) condition was calculated using the community in which the samples resides as the basic unit [28] | |
Road network density, road_d | Street road network length /total area of community, unit of measurement: km/km2 | |
Facility configuration | Traffic pattern diversity, H | , the availability of private cars, buses, subways, bicycles, and electric vehicles (including motorcycles) were calculated based on the community and family in which the respondents resided as the basic unit, ranges from 0 to 1 [29] |
Parking facility, park | Parking at an unreserved parking space in the residential area/unit roadside = 1, parking at other parking lots surrounding the residential area/unit = 2, parking at reserved parking space in the residential area/unit roadside = 3, parking at an underground garage in the residential area/unit = 4 |
Category | Variable Name | Variable Calculation Method |
---|---|---|
Travel characteristics | Overall commute time, congestion time, commuting cost, transfer times, and waiting time | Questionnaire |
Travel attitude/preference | Commuter mode intention
| Questionnaire |
Factors for choosing commuting mode
| Questionnaire | |
Personal opinion
| Questionnaire (“from strongly disagree to strongly agree” according to the 7-point Likert scale) | |
Influence by others
| ||
Relevant perception
| ||
Behavioral tendency
| ||
Socio-demographics | Age, gender, occupation, education, personality, family composition (whether there are school-age children, whether they need to pick up, school-age children shuttle mode) | Questionnaire |
Mode | N | Mean | S.D. | ||
---|---|---|---|---|---|
Walk | 345 | 0.97 | 0.79 | ||
Taxi | 9 | 0.22 | 0.86 | ||
Scheduled bus | 16 | 0.48 | 0.97 | ||
Metro | 156 | 0.37 | 0.75 | ||
Electric bicycle | 175 | 0.53 | 0.80 | ||
Bus | 364 | 0.06 | 0.64 | ||
Motorbike | 5 | 0.72 | 0.71 | ||
Drive | 283 | 0.32 | 0.80 | ||
Bicycle | 159 | 0.45 | 0.88 | ||
Total | 1512 | 0.45 | 0.83 | ||
ANOVA | Sum of Squares | df | MS | F | p-value |
Between groups | 156.95 | 8.00 | 19.62 | 33.05 | 0.00 |
Within groups | 892.32 | 1503.00 | 0.59 | ||
Total | 1049.27 | 1511.00 |
Unstandardized Coefficients | Standardized Coefficients | t | p | VIF | ||
---|---|---|---|---|---|---|
B | Standard Error | Beta | ||||
constant | 0.664 | 0.216 | - | 3.070 | 0.002 *** | - |
gen | 0.074 | 0.038 | 0.044 | 1.923 | 0.055 * | 1.180 |
job | 0.040 | 0.015 | 0.065 | 2.623 | 0.009 *** | 1.369 |
shuttle_m | −0.036 | 0.016 | −0.049 | −2.185 | 0.029 ** | 1.096 |
lic | 0.054 | 0.016 | 0.091 | 3.373 | 0.001 *** | 1.599 |
Layer | −0.097 | 0.020 | −0.128 | −4.802 | 0.000 *** | 1.577 |
chara1 | −0.034 | 0.015 | −0.050 | −2.273 | 0.023 ** | 1.084 |
mode | −0.069 | 0.021 | −0.112 | −3.328 | 0.001 *** | 2.515 |
actual_t | −0.048 | 0.019 | −0.097 | −2.510 | 0.012 ** | 3.340 |
cong_t | −0.071 | 0.034 | −0.080 | −2.077 | 0.038 ** | 3.323 |
cau1_2 | 0.147 | 0.074 | 0.045 | 1.986 | 0.047 ** | 1.119 |
cau1_3 | −0.134 | 0.041 | −0.075 | −3.273 | 0.001 *** | 1.153 |
cau1_5 | −0.133 | 0.045 | −0.067 | −2.952 | 0.003 *** | 1.151 |
cau1_8 | −0.111 | 0.042 | −0.066 | −2.654 | 0.008 *** | 1.364 |
time_s | 0.106 | 0.036 | 0.086 | 2.944 | 0.003 *** | 1.876 |
view2 | 0.054 | 0.016 | 0.092 | 3.373 | 0.001 *** | 1.657 |
perc1 | 0.051 | 0.018 | 0.092 | 2.810 | 0.005 *** | 2.359 |
incli1 | 0.080 | 0.018 | 0.143 | 4.508 | 0.000 *** | 2.236 |
trans2 | −0.078 | 0.037 | −0.051 | −2.094 | 0.036 ** | 1.299 |
Opro | −0.296 | 0.087 | −0.085 | −3.394 | 0.001 *** | 1.376 |
Dpro | −0.272 | 0.100 | −0.063 | −2.721 | 0.007 *** | 1.193 |
Obus_l | 0.359 | 0.140 | 0.058 | 2.571 | 0.010 ** | 1.118 |
O_TotD | −0.581 | 0.142 | −0.092 | −4.095 | 0.000 *** | 1.125 |
Opop_d | −0.433 | 0.124 | −0.087 | −3.498 | 0.000 *** | 1.354 |
S.E. | C.R. | Standardized Estimate | |||
---|---|---|---|---|---|
Travel preference | <--- | chara1 | 0.002 | 1.512 | 0.045 |
Other travel characteristic | <--- | chara1 | 0.004 | −0.066 | −0.002 |
Commute mode choice | <--- | chara1 | 0.024 | 2.946 | 0.065 *** |
Commute well-being | <--- | chara1 | 0.017 | −2.811 | −0.072 *** |
Built environment | <--- | chara1 | 0.001 | −3.548 | −0.173 *** |
Travel preference | <--- | lic | 0.007 | −4.451 | −0.529 *** |
Other travel characteristic | <--- | lic | 0.007 | −0.708 | −0.028 |
Commute mode choice | <--- | lic | 0.033 | 1.852 | 0.063 * |
Commute well-being | <--- | lic | 0.021 | 1.967 | 0.069 ** |
Built environment | <--- | lic | 0.001 | −0.789 | −0.037 |
Travel preference | <--- | shuttle_m | 0.002 | −0.976 | −0.030 |
Other travel characteristic | <--- | shuttle_m | 0.006 | −4.562 | −0.122 *** |
Commute mode choice | <--- | shuttle_m | 0.031 | 1.201 | 0.031 |
Commute well-being | <--- | shuttle_m | 0.018 | −3.386 | −0.082 *** |
Built environment | <--- | shuttle_m | 0.001 | 1.868 | 0.067 * |
Travel preference | <--- | job | 0.002 | 2.621 | 0.102 *** |
Other travel characteristic | <--- | job | 0.006 | 5.694 | 0.190 *** |
Commute mode choice | <--- | job | 0.024 | −0.097 | −0.002 |
Commute well-being | <--- | job | 0.016 | 2.753 | 0.075 *** |
Built environment | <--- | job | 0.001 | 2.810 | 0.144 *** |
Travel preference | <--- | gen | 0.005 | 0.670 | 0.019 |
Other travel characteristic | <--- | gen | 0.011 | −1.172 | −0.028 |
Commute mode choice | <--- | gen | 0.056 | 1.422 | 0.030 |
Commute well-being | <--- | gen | 0.041 | 2.534 | 0.063 ** |
Built environment | <--- | gen | 0.002 | 2.332 | 0.099 ** |
SWT1 | <--- | Commute well-being | 0.953 | ||
SWT2 | <--- | Commute well-being | 0.028 | 35.607 | 0.961 *** |
O_TotD | <--- | Built environment | 0.158 | ||
Obus_l | <--- | Built environment | 0.391 | 3.997 | 0.244 *** |
Dpro | <--- | Built environment | 0.881 | −4.347 | −0.414 *** |
Opro | <--- | Built environment | 1.307 | −4.531 | −0.523 *** |
Opop_d | <--- | Built environment | 1.011 | −4.527 | −0.576 *** |
cau1_3 | <--- | Travel preference | 0.180 | ||
cau1_5 | <--- | Travel preference | 0.231 | −4.802 | −0.218 *** |
cau1_8 | <--- | Travel preference | 0.57 | 4.545 | 0.439 *** |
cau1_2 | <--- | Travel preference | 0.093 | 1.091 | 0.034 |
time_s | <--- | Travel preference | 0.479 | 1.813 | −0.106 * |
view2 | <--- | Travel preference | 2.232 | −5.149 | −0.676 *** |
perc1 | <--- | Travel preference | 2.881 | −5.225 | −0.850 *** |
trans2 | <--- | Other travel characteristics | 0.427 | ||
actual_t | <--- | Other travel characteristics | 0.446 | 14.757 | 0.895 *** |
cong_t | <--- | Other travel characteristics | 0.235 | 16.140 | 0.931 *** |
incli1 | <--- | Travel preference | 2.363 | −5.162 | −0.695 *** |
Layer | <--- | Built environment | 8.74 | 4.571 | 0.758 *** |
Travel preference | <--- | Built environment | 0.425 | 2.799 | 0.298 *** |
Other travel characteristics | <--- | Built environment | 0.828 | 3.505 | 0.262 *** |
Commute well-being | <--- | Built environment | 2.327 | −0.049 | −0.003 |
Commute well-being | <--- | Other travel characteristics | 0.367 | −1.983 | −0.204 ** |
Other travel characteristics | <--- | Travel preference | 0.418 | −1.927 | −0.291 * |
Commute well-being | <--- | Travel preference | 1.025 | −4.100 | −0.426 *** |
Commute mode choice | <--- | Travel preference | 1.303 | −5.058 | −0.413 *** |
Commute well-being | <--- | Commute mode choice | 0.059 | −1.68 | −0.159 * |
Commute mode choice | <--- | Built environment | 3.098 | 1.776 | 0.086 * |
Other travel characteristic | <--- | Commute mode choice | 0.013 | 4.676 | 0.352 *** |
Commute mode choice | <--- | Other travel characteristic | 0.438 | 10.586 | 0.804 *** |
Built environment | <--- | Travel preference | 0.036 | −2.578 | −0.370 ** |
Built environment | <--- | Other travel characteristic | 0.011 | 2.273 | 0.269 ** |
Travel preference | <--- | Other travel characteristic | 0.048 | 3.055 | 0.408 *** |
Travel preference | <--- | Commute mode choice | 0.012 | 2.632 | 0.522 *** |
Built environment | <--- | Commute mode choice | 0.002 | −2.224 | −0.223 ** |
Other travel characteristics | <--- | Commute well-being | 0.015 | 0.276 | 0.015 |
Travel preference | <--- | Commute well-being | 0.007 | −1.499 | −0.102 |
Commute mode choice | <--- | Commute well-being | 0.176 | −0.585 | −0.064 |
Built environment | <--- | Commute well-being | 0.003 | 2.209 | 0.244 |
Layers | Network | Main Street | Secondary Main Street | |||
---|---|---|---|---|---|---|
Length (km) | Density (km/km2) | Length (km) | Density (km/km2) | Length (km) | Density (km/km2) | |
The first layer | 104.12 | 7.95 | 17.14 | 1.31 | 8.10 | 0.62 |
The second layer | 370.93 | 4.87 | 68.19 | 0.90 | 43.52 | 0.57 |
The third layer | 1009.60 | 5.40 | 99.60 | 0.53 | 119.18 | 0.64 |
The fourth layer | 1870.90 | 2.20 | 583.23 | 0.37 | 334.08 | 0.21 |
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
Share and Cite
Wei, D.; Cao, X.; Wang, M. What Determines the Psychological Well-Being during Commute in Xi’an: The Role of Built Environment, Travel Attitude, and Travel Characteristics. Sustainability 2019, 11, 1328. https://doi.org/10.3390/su11051328
Wei D, Cao X, Wang M. What Determines the Psychological Well-Being during Commute in Xi’an: The Role of Built Environment, Travel Attitude, and Travel Characteristics. Sustainability. 2019; 11(5):1328. https://doi.org/10.3390/su11051328
Chicago/Turabian StyleWei, Dong, Xiaoshu Cao, and Miaomiao Wang. 2019. "What Determines the Psychological Well-Being during Commute in Xi’an: The Role of Built Environment, Travel Attitude, and Travel Characteristics" Sustainability 11, no. 5: 1328. https://doi.org/10.3390/su11051328
APA StyleWei, D., Cao, X., & Wang, M. (2019). What Determines the Psychological Well-Being during Commute in Xi’an: The Role of Built Environment, Travel Attitude, and Travel Characteristics. Sustainability, 11(5), 1328. https://doi.org/10.3390/su11051328