Assessment of Perceived Factors of Road Safety in Rural Left-Behind Children’s Independent Travel: A Case Study in Changsha, China
Abstract
:1. Introduction
- Which factors affect the safety of rural left-behind children traveling alone?
- Are there differences in safety perceptions among rural left-behind children of different ages and genders?
- Do rural left-behind children and their guardians have different perceptions of safety?
2. Materials and Methods
2.1. Study Methods
2.2. Study Samples
2.3. Data Source
2.4. Index System Construction
3. Results
3.1. High-Frequency Selective Analysis of Independent Travel Road Scenes of Left-Behind Children
3.2. Analysis of Environmental Safety Perception Factors for Independent Travel Paths for Left-Behind Children
3.2.1. Reliability and Validity Test of Questionnaire
3.2.2. Screening Factors for Left-Behind Children’s Perception of Road Safety during Independent Travel
3.2.3. Analysis of Differences in Security Perception between the Left-Behind Child Group and the Guardian Group
4. Discussion
4.1. The Tendency of Left-Behind Children to Choose Independent Paths of Travel
4.2. Differences in Road Safety Perception between Left-Behind Children and Their Guardians
4.3. Limitations and Further Research
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Category | Variable | Interpretation |
---|---|---|
Vision Permeability | Plant density | Plants shade the road and create visual blind spots. |
Recognizable signs | Danger zone warning signs alert children to the dangers of the current environment. | |
Turning angle | The size of the angle affects road visibility. | |
Lighting system | The sufficiency of the illumination at night. | |
Interface Dissociability | Boundary staggered layer | The ratio of the width of the road to the adjacent boundary. |
Enclosure type | One-sided, two-sided, and three-sided enclosing patterns of roads. | |
Guardrail ratio | Installed guardrails in dangerous areas such as water bodies and steep slopes. | |
Internal corner space | The courtyard space between the building and the road. | |
Travel Accessibility | Road scale | Road width and whether people and vehicles are separated. |
Road slope | The angle between the lowest and highest point of a road. | |
Hard pavement | Roads are paved with cement, asphalt, and other hard materials. | |
Potential path | The closest and most frequented travel route. | |
Neighborhood Shelter | Dangerous animals | Being attacked by stray dogs, geese, and other animals. |
Strangers | Strangers are frequent on the roads. | |
Street eye | Window-fronted residential buildings face the road. | |
Abandoned space | Dilapidated buildings, construction sites, etc., where accidents can occur. | |
Electronic tools | Wearing smart watches, mobile phones, and other communication tools. | |
Acquaintances present | The road is beside a place where acquaintances often hang out. | |
Social concerns | Bullies are frequent on the road. | |
Monitoring facilities | Roads with real-time video surveillance. |
Nonstandardized Coefficient | Standardization Coefficient | t | p | VIF | ||
---|---|---|---|---|---|---|
B | Standard Deviation | Beta | ||||
Constant | 1.472 | 0.017 | - | 84.193 | 0.000 ** | - |
Location integration | 0.000 | 0.000 | 0.982 | 32.229 | 0.000 ** | 1.000 |
R2 | 0.965 | |||||
Adjust R2 | 0.964 | |||||
F | F (1,38) = 1038.704, p = 0.000 | |||||
D-W value | 0.773 |
Item | Average Value | Standard Deviation | CV Coefficient | Weight |
---|---|---|---|---|
Location integration | 111,328.025 | 69,465.157 | 62.40% | 0.7998 |
Choice | 1.952 | 0.305 | 15.62% | 0.2002 |
Influencing Factor | p-Value | Correlation Coefficient |
---|---|---|
Plant density | 0.010 | −0.257 ** |
Recognizable signs | 0.018 | −0.236 * |
Turning angle | 0.045 | −0.201 * |
Road slope | 0.017 | −0.239 * |
Electronic tools | 0.001 | −0.321 ** |
Social concerns | 0.009 | −0.260 ** |
Monitoring facilities | 0.000 | −0.354 ** |
Influencing Factor | p-Value | Correlation Coefficient |
---|---|---|
Plant density | 0.001 | 0.226 ** |
Road scale | 0.017 | 0.169 * |
Electronic tools | 0.045 | −0.142 * |
Regression Coefficient | 95% CI | VIF | |
---|---|---|---|
Constant | 1.000 ** (2,201,030,961,016,510.750) | 1.000~1.000 | - |
Dangerous animals | 0.000 ** (5.540) | 0.000~0.000 | 1.094 |
Strangers | 0.000 ** (4.507) | 0.000~0.000 | 1.094 |
Sample size | 71 | ||
R2 | null | ||
Adjust R2 | null | ||
F value | F (2,68) = −34.000, p = null |
Regression Coefficient | 95% CI | Collinear Diagnosis | ||
---|---|---|---|---|
VIF | Tolerance | |||
Constant | 1.000 ** (1,352,507,433,325,933.750) | 1.000~1.000 | - | - |
Internal corner space | −0.000 ** (−4.405) | −0.000~−0.000 | 1.051 | 0.951 |
Sample size | 120 | |||
R2 | null | |||
Adjust R2 | null | |||
F value | F (2,117) = −58.500, p = null |
Regression Coefficient | 95% CI | Collinear Diagnosis | ||
---|---|---|---|---|
VIF | Tolerance | |||
Constant | 2.000 ** (530,879,512,148,717.813) | 2.000~2.000 | - | - |
Enclosure type | −0.000 * (−2.206) | −0.000~−0.000 | 1.028 | 0.972 |
Sample size | 80 | |||
R2 | null | |||
Adjust R2 | null | |||
F value | F (3,76) = −25.333, p = null |
Influencing Factor | Mean Decrease Accuracy | Weight |
---|---|---|
Dangerous animals | 2.168102094 | 0.024532451 |
Strangers | 2.286783068 | 0.025875346 |
Monitoring facilities | 3.038366986 | 0.034379649 |
Enclosure type | 3.836239636 | 0.043407716 |
Internal corner space | 4.347221906 | 0.049189569 |
Road slope | 6.468882858 | 0.07319653 |
Recognizable signs | 7.348394323 | 0.083148354 |
Road scale | 8.68025325 | 0.098218569 |
Social concerns | 9.497003152 | 0.107460235 |
Plant density | 12.41074979 | 0.140429783 |
Turning angle | 12.44650032 | 0.140834306 |
Electronic tools | 15.84840911 | 0.179327493 |
Left-Behind Children and Guardians (Mean ± Standard Deviation) | t | p | ||
---|---|---|---|---|
1 (n = 78) | 2 (n = 42) | |||
Plant density | 1.385 ± 0.725 | 4.357 ± 0.906 | −19.599 | 0 *** |
Recognizable signs | 3.218 ± 1.065 | 3.214 ± 1.116 | 0.018 | 0.986 |
Turning angle | 2.423 ± 1.013 | 3.262 ± 1.061 | −4.256 | 0 *** |
Enclosure type | 4 ± 0.456 | 4.071 ± 1.156 | −0.482 | 0.631 |
Internal corner space | 4.244 ± 0.84 | 3.762 ± 1.428 | 2.327 | 0.022 * |
Road scale | 2.423 ± 0.987 | 4.333 ± 0.816 | −10.716 | 0 *** |
Road slope | 3.141 ± 1.181 | 3.381 ± 1.058 | −1.1 | 0.274 |
Dangerous animals | 3.41 ± 0.946 | 3.738 ± 0.885 | −1.852 | 0.067 |
Strangers | 3.987 ± 0.497 | 3.738 ± 0.828 | 2.06 | 0.042 * |
Electronic tools | 3.974 ± 0.394 | 3.857 ± 0.718 | 1.157 | 0.25 |
Social concerns | 4.013 ± 0.522 | 3.667 ± 0.874 | 2.716 | 0.008 ** |
Monitoring facilities | 4.333 ± 0.832 | 3.738 ± 0.885 | 3.655 | 0 *** |
Male Left-Behind Children and Female Left-Behind Children (Mean ± Standard Deviation) | t | p | ||
---|---|---|---|---|
1 (n = 62) | 2 (n = 58) | |||
Plant density | 2.5 ± 1.637 | 2.345 ± 1.628 | 0.52 | 0.604 |
Recognizable signs | 3.161 ± 1.089 | 3.276 ± 1.073 | −0.58 | 0.563 |
Turning angle | 2.661 ± 1.159 | 2.776 ± 1.044 | −0.568 | 0.571 |
Enclosure type | 4.032 ± 0.701 | 4.017 ± 0.848 | 0.106 | 0.916 |
Internal corner space | 4.097 ± 0.987 | 4.052 ± 1.22 | 0.223 | 0.824 |
Road scale | 3.161 ± 1.296 | 3.017 ± 1.318 | 0.604 | 0.547 |
Road slope | 3.403 ± 1.137 | 3.034 ± 1.123 | 1.785 | 0.077 |
Dangerous animals | 3.419 ± 1.001 | 3.638 ± 0.852 | −1.284 | 0.202 |
Strangers | 3.855 ± 0.649 | 3.948 ± 0.633 | −0.798 | 0.427 |
Electronic tools | 3.887 ± 0.63 | 3.983 ± 0.397 | −0.987 | 0.325 |
Social concerns | 3.839 ± 0.772 | 3.948 ± 0.575 | −0.877 | 0.382 |
Monitoring facilities | 4.032 ± 1.008 | 4.224 ± 0.75 | −1.177 | 0.242 |
Left-Behind Children Aged 6–12 and 13–16 (Mean ± Standard Deviation) | t | p | ||
---|---|---|---|---|
1 (n = 72) | 2 (n = 48) | |||
Plant density | 2.278 ± 1.594 | 2.646 ± 1.669 | −1.216 | 0.226 |
Recognizable signs | 3.333 ± 0.979 | 3.042 ± 1.202 | 1.458 | 0.147 |
Turning angle | 2.681 ± 1.059 | 2.771 ± 1.171 | −0.438 | 0.662 |
Enclosure type | 4.097 ± 0.609 | 3.917 ± 0.964 | 1.258 | 0.211 |
Internal corner space | 4.361 ± 0.81 | 3.646 ± 1.329 | 3.663 | 0 *** |
Road scale | 3.042 ± 1.358 | 3.167 ± 1.226 | −0.513 | 0.609 |
Road slope | 3.181 ± 1.117 | 3.292 ± 1.184 | −0.521 | 0.603 |
Dangerous animals | 3.597 ± 0.85 | 3.417 ± 1.048 | 1.037 | 0.302 |
Strangers | 4.028 ± 0.443 | 3.708 ± 0.824 | 2.75 | 0.007 ** |
Electronic tools | 4.014 ± 0.205 | 3.812 ± 0.79 | 2.066 | 0.041 * |
Social concerns | 3.958 ± 0.426 | 3.792 ± 0.944 | 1.313 | 0.192 |
Monitoring facilities | 4.208 ± 0.749 | 4 ± 1.072 | 1.253 | 0.213 |
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Tang, Y.; Zhu, L.; Li, J.; Zhang, N.; Sun, Y.; Wang, X.; Wu, H. Assessment of Perceived Factors of Road Safety in Rural Left-Behind Children’s Independent Travel: A Case Study in Changsha, China. Sustainability 2023, 15, 10355. https://doi.org/10.3390/su151310355
Tang Y, Zhu L, Li J, Zhang N, Sun Y, Wang X, Wu H. Assessment of Perceived Factors of Road Safety in Rural Left-Behind Children’s Independent Travel: A Case Study in Changsha, China. Sustainability. 2023; 15(13):10355. https://doi.org/10.3390/su151310355
Chicago/Turabian StyleTang, Yue, Li Zhu, Jiang Li, Ni Zhang, Yilin Sun, Xiaokang Wang, and Honglin Wu. 2023. "Assessment of Perceived Factors of Road Safety in Rural Left-Behind Children’s Independent Travel: A Case Study in Changsha, China" Sustainability 15, no. 13: 10355. https://doi.org/10.3390/su151310355
APA StyleTang, Y., Zhu, L., Li, J., Zhang, N., Sun, Y., Wang, X., & Wu, H. (2023). Assessment of Perceived Factors of Road Safety in Rural Left-Behind Children’s Independent Travel: A Case Study in Changsha, China. Sustainability, 15(13), 10355. https://doi.org/10.3390/su151310355