Quantifying Bus Accessibility and Mobility for Urban Branches: A Reliability Modeling Approach
Abstract
:1. Introduction
1.1. Literature Review
1.2. Objectives and Contributions
- (1)
- A new quantitative reliability method for evaluating branch road functions based on bus mobility and accessibility is proposed in this paper, which can reflect the actual performance of branch road functions in the operational phase.
- (2)
- Factors influencing bus mobility and accessibility within branch road units are analyzed. Specific measures for enhancing bus mobility and accessibility within branch road units are also put forward.
2. Methodology
2.1. Definition of Research Object
2.2. Quantifying Model
2.2.1. Reliability Evaluation
2.2.2. Walking Distance
Algorithm 1 The pseudocode of Dijkstra algorithm |
# N was adjacency matrix; List_N and List_UN were the list of marked points and unmarked points, respectively; m was the number of network nodes. Input: N, O, D, d0 = 0, P0 = None, Num = 1, List_N = [0], List_UN = [0:m]-List_N For Num in range(m): For i in List_N: For j in List_UN: dj = min [dj,di + lij] Return k # k was the number corresponding to the smallest value of dj. Select Pi # Pi was the point, which directly connects the point k, in List_N. List_N.append(k) Return List_N, LAB |
2.2.3. Bus Travel Time
Algorithm 2 The pseudocode of Monte Carlo simulation method |
Num = 0 For i in range (Times): #Times is a large integer greater than 1 × 105. = Generate M random numbers according to Equation (10) If Sum ≤ : Num + = 1 Return Num/Times |
2.2.4. Weightings and Thresholds
3. Case Study
3.1. Calculation and Comparison of Two Units
3.2. Sensitivity Analysis
3.2.1. Road Network Density and Connectivity
3.2.2. Bus Routes Layout
3.3. Discussion
- (1)
- Within reasonable limits, the consideration of appropriately increasing unit road network density is encouraged, as it forms the foundation for enhancing public transportation accessibility within the unit. However, it is emphasized that road network density should not be excessively high.
- (2)
- The improvement of the road network structure by optimizing challenging nodes such as a T-shape intersection within the unit’s road network is recommended, as this would contribute to the enhancement of road network connectivity.
- (3)
- In cases where conditions allow, the increase in the number of public transportation routes, the augmentation of bus stop density, and the allocation of more buses are suggested to maximize the supply of public transportation resources.
- (4)
- When faced with limitations in resources for public transportation, the optimization of the layout of public transportation routes is proposed to expand their service area within the unit.
- (5)
- The reasonable optimization of intersection signal configurations is recognized as an effective means to enhance the reliability of public transportation service functionality in the branch unit.
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Unit | Area (km2) | Road Network Density (km/km2) | Total Road Length (km) | Number of Bus Routes | Number of Bus Stops | Number of Road Access Points |
---|---|---|---|---|---|---|
e | 2.09 | 5.36 | 11.30 | 14 | 36 | 59 |
f | 1.51 | 9.99 | 15.08 | 15 | 59 | 81 |
j | Route | Running Time (h) | Bus Departure Frequency | Ij |
---|---|---|---|---|
0 | B12 (upline) | 15 | 143 | 0.118 |
1 | B12 (downline) | 15 | 143 | 0.118 |
2 | B67 (upline) | 14.5 | 139 | 0.114 |
3 | B67 (downline) | 14.5 | 139 | 0.114 |
4 | 259 (upline) | 13 | 36 | 0.030 |
5 | 259 (downline) | 13 | 36 | 0.030 |
6 | 271 (downline) | 13 | 55 | 0.045 |
7 | 182 (downline) | 13.5 | 56 | 0.045 |
8 | B28 (upline) | 13 | 56 | 0.046 |
9 | B28 (downline) | 13 | 56 | 0.046 |
10 | S116 (upline) | 13.25 | 91 | 0.075 |
11 | S116 (downline) | 13.25 | 91 | 0.075 |
12 | 279 (upline) | 13.5 | 42 | 0.035 |
13 | 279 (downline) | 13.5 | 42 | 0.035 |
14 | 31 (downline) | 15 | 90 | 0.074 |
Total | 206 | 1215 | 1 |
j | Route | Running Time (h) | Bus Departure Frequency | Ij |
---|---|---|---|---|
0 | B12 (upline) | 15 | 143 | 0.088 |
1 | B12 (downline) | 15 | 143 | 0.088 |
2 | B67 (upline) | 14.5 | 139 | 0.086 |
3 | B67 (downline) | 14.5 | 139 | 0.086 |
4 | 31 (upline) | 15 | 90 | 0.056 |
5 | 31 (downline) | 15 | 90 | 0.056 |
6 | S116 (upline) | 13.25 | 91 | 0.056 |
7 | S116 (downline) | 13.25 | 91 | 0.056 |
8 | B27 (upline) | 13.5 | 56 | 0.035 |
9 | 183 (upline) | 14 | 80 | 0.049 |
10 | 183 (downline) | 14 | 80 | 0.049 |
11 | B2 (upline) | 15 | 171 | 0.106 |
12 | B2 (downline) | 15 | 171 | 0.106 |
13 | 259 (downline) | 13 | 36 | 0.022 |
14 | B28 (downline) | 13 | 56 | 0.035 |
15 | 279 (upline) | 13.5 | 42 | 0.026 |
Total | 226.5 | 1618 | 1 |
Threshold of Walking Distance | Threshold of Bus Travel Time | Reliability of Public Transportation R | |
---|---|---|---|
Unit e | Unit f | ||
900 m | 1.6 | 0.416 | 0.574 |
The Proportion of the Road Mileage of Different LOS in the Unit | ||||
---|---|---|---|---|
Level 1 | Level 2 | Level 3 | Level 4 | |
Unit e | 0.74 | 0.15 | 0.08 | 0.03 |
Unit f | 0.81 | 0.14 | 0.05 | 0.00 |
1. Keep the number of bus routes in the unit and only select one bus route to adjust. |
2. Keep two endpoints location of the bus route and only adjust the bus route alignment in the unit. |
3. Keep the total length of the adjusted line close to the original line and retain original bus stops as much as possible. |
4. Keep the number of stops in the area and ensure that the distance between the stops is close to the original line. |
Routes | Bus Stops | Number of Stops | Line Length (km) | Average Spacing (m) | Service Area (km2) | |
---|---|---|---|---|---|---|
Before adjustment | 259 (upline) | 3-5-8-15-17 | 5 | 1.69 | 363.3 | 1.26 |
259 (downline) | 16-14-7-6-2 | 5 | 1.69 | 419.2 | 1.29 | |
After adjustment | 259 (upline) | 3-8-39-15-17 | 5 | 1.68 | 363.3 | 1.39 |
259 (downline) | 16-40-14-41-2 | 5 | 1.68 | 419.2 | 1.41 |
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Tong, P.; Du, W.; Yan, Y.; Li, J. Quantifying Bus Accessibility and Mobility for Urban Branches: A Reliability Modeling Approach. Sustainability 2023, 15, 15770. https://doi.org/10.3390/su152215770
Tong P, Du W, Yan Y, Li J. Quantifying Bus Accessibility and Mobility for Urban Branches: A Reliability Modeling Approach. Sustainability. 2023; 15(22):15770. https://doi.org/10.3390/su152215770
Chicago/Turabian StyleTong, Pei, Wenjing Du, Yadan Yan, and Junsheng Li. 2023. "Quantifying Bus Accessibility and Mobility for Urban Branches: A Reliability Modeling Approach" Sustainability 15, no. 22: 15770. https://doi.org/10.3390/su152215770
APA StyleTong, P., Du, W., Yan, Y., & Li, J. (2023). Quantifying Bus Accessibility and Mobility for Urban Branches: A Reliability Modeling Approach. Sustainability, 15(22), 15770. https://doi.org/10.3390/su152215770