The Evolvement of Rail Transit Network Structure and Impact on Travel Characteristics: A Case Study of Wuhan
Abstract
:1. Introduction
2. Literature Review
2.1. Rail Transit Complex Network Model
2.2. The Influence of the Accessibility on Residents’ Travel Behavior
3. Materials and Methods
3.1. Study Area
3.2. Data
- (i)
- Selection of Resident Travel Characteristics Variables:
- (ii)
- Measurement of the Shortest Path Distance between Stations:
3.3. Methods
3.3.1. Rail Transit Network Topology
3.3.2. The Rail Accessibility Metric Model Based on Weighted Travel Time
4. Results
4.1. The Evaluation of Wuhan Rail Transit Network Topology Structure
4.1.1. The Evolution of Global Topological Characteristics of the Wuhan Rail Transit Network
- (1)
- The Wuhan rail transit network has completed a tree-like to loop-like evolution. Before March 2015, the Wuhan rail transit network showed an obvious tree-like network with a connection rate of less than 1 and a loop index of 0. The network has not yet formed a loop and has poor accessibility. With the opening and operation of rail transit Line 3, the network space has gradually evolved into a loop-like network. By March 2016, the connection rate of the Wuhan rail transit network reached 1.010, more than 1, and the loop index reached 2, indicating that with the expansion of the network, the topology structure had gradually improved, and the extent of the network extension had also been greatly improved, initially forming a loop-like network. Subsequently, the connection rate increased year by year, from 0.983 to 1.084. By March 2019, the actual looping rate of the rail transit network had been increase from 0.011 to 0.045. The increase in its value indicates that the more developed the network, the stronger the robustness.
- (2)
- The travel efficiency of the Wuhan rail transit network is gradually improving. From 2014 to 2019, the actual integration degree of the Wuhan rail transit network increased from 0.339 to 0.365, indicating that as the rail transit network expanded, the overall travel efficiency continued to improve. The actual degree of integration over the years has been at a low level, indicating that the actual level of direct access between different line stations in the network development process is not high.
Year | n1 | e 2 | p3 | β 4 | μ 5 | α 6 | γ 7 |
---|---|---|---|---|---|---|---|
2014 | 59 | 58 | 1 | 0.983 | 0 | 0.000 | 0.339 |
2015 | 75 | 74 | 1 | 0.987 | 0 | 0.000 | 0.338 |
2016 | 96 | 97 | 1 | 1.010 | 2 | 0.011 | 0.344 |
2017 | 123 | 130 | 1 | 1.057 | 8 | 0.033 | 0.358 |
2018 | 149 | 159 | 1 | 1.067 | 11 | 0.038 | 0.361 |
2019 | 190 | 206 | 1 | 1.084 | 17 | 0.045 | 0.365 |
4.1.2. Analysis of the Statistical Characteristics and Spatiotemporal Evolution of the Wuhan Rail Transit Network
4.2. The Accessibility Measurement and Spatiotemporal Evolution of the Wuhan Rail Transit Network
- (1)
- Accessibility distribution has a positive marginal effect and shows a weaker spatial distribution trend from the central city to the fringe city. Stations with a smaller weighted travel time accessibility index are concentrated in the central city, and the coverage of the central area of the weighted travel time accessibility index is gradually expanding. The accessibility index of central city stations gradually decreases as the network expands, indicating that, as the rail transit network expands, the connectivity of central city stations increases.
- (2)
- The expansion of the Wuhan rail transit network has less impact on stations with a smaller weighted travel time accessibility index. In March 2014, the station with the highest accessibility was Xunlimen, which became Jianghan Road after March 2016. The stations with the highest accessibility index were constantly changing with the opening of the fringe city line. From March 2014, they were Dongwu Boulevard station on Line 1, Huangjinkou station on Line 4, Hankou North station on Line 1, Tianhe International Airport station on Line 2, and Jintai station on Line Yangluo. After the opening of Line 7, Line Yangluo, Line 11, and the south extension of Line 2, which were all located in fringe urban area, the overall time accessibility of the line network was reduced.
- (3)
- The spatial distribution of time accessibility forms a circular structure, which radiates to the surroundings, with Xunlimen station and Jianghan Road station as the center, and gradually weakens with the increase of distance. The accessibility development of rail transit coverage areas is uneven. Prior to March 2016, the central urban area weighted travel time accessibility index contours were sparsely distributed, and the accessibility changes were not obvious, while the decline in the accessibility of stations in the fringe urban areas gradually increased, reflecting the influence of the cross spatial distribution structure of the rail transit network on accessibility. After March 2016, with the expansion of the transit network and the optimization of the loops, the change of the weighted travel time accessibility index of the stations in the fringe urban area shows the characteristics of decreasing the accessibility as the distance increases.
- (4)
- The transfer station has a significant effect on time accessibility enhancement. The time accessibility index of the transfer station is relatively small, and the contour line close to the transfer station has a prominent trend, indicating that the transfer station has a strong radiation capacity of accessibility. Increasing the intersection of lines and networks and the setting of loop lines are important measures to improve the time accessibility of the Wuhan rail transit network.
4.3. The Migration of the Accessibility Gravity of Wuhan Rail Transit Network
4.4. The Spatiotemporal Evolution Law of the Expansion of the Rail Transit Network on Resident Travel Characteristics
5. Discussion
5.1. Discussion on the Layout and Timing of Rail Transit Construction in Wuhan
5.2. Discussion on Public Transportation Management Based on Travel Behavior Orientation
6. Conclusions
- (1)
- The Wuhan rail transit network presents the characteristics of a scale-free complex network, and the transformation from a tree-like network to a loop-like network has been completed. The opening of Line 3 had a significant effect on network formation. With the increase of rail transit lines and the expansion of service scope, the overall travel efficiency of the network has been continuously improved, and the robustness has been enhanced.
- (2)
- The accessibility pattern of the rail transit network shows a trend of changing from corridor to network. The change of time accessibility is shown as a circlular structure, showing a decreasing spatial distribution trend away from the city center. The opening of Line Yangluo, Line 7, Line 11 and the south extension of Line 2 greatly increased the overall travel time of the network and reduced network accessibility. At the same time, over the years, the trend of rail transit accessibility shifting to the northwest and then to the south is basically coupled with the spatial development direction of Wuhan’s construction of Changjiang New Town and Optics Valley East.
- (3)
- The accessibility changes caused by the expansion of the rail transit network have had a significant impact on residents’ travel characteristics. With the improvement of network accessibility, average travel flow increased, average travel frequency decreased, average travel distance increased, and peak flow increased. This may be due to the rapid expansion of urban space due to the construction of the rail transit, and residents in fringe urban areas will commute frequently during workdays, while in central urban areas with a high degree of functional compounding, high travel flow and number of journeys reduced the travel frequency. We are committed to developing good public service facilities in suburbs with good traffic accessibility. To a certain extent, this can support and promote the development of related industries, promote the formation and expansion of regional centers, and improve the job–housing balance of the entire city. This will improve the operating efficiency of the rail transit network by reducing long-distance commuting behavior.
Author Contributions
Funding
Conflicts of Interest
References
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Card Number | Swipe Time | Line | Station | Swipe Type | Card Type |
---|---|---|---|---|---|
80271104xxxxxxxx | 2019/03/11 06:20:51 | 1 | 103 1 | 28 3 | 205 |
80271104xxxxxxxx | 2019/03/11 06:46:22 | 4 | 437 2 | 29 4 | 205 5 |
Year | 1 | D 2 | 3 | 4 | 5 |
---|---|---|---|---|---|
2014 | 1.966 | 32 | 0.000 | 11.751 | 0.059 |
2015 | 1.973 | 37 | 0.000 | 13.789 | 0.070 |
2016 | 2.021 | 32 | 0.000 | 12.368 | 0.092 |
2017 | 2.114 | 32 | 0.004 | 11.973 | 0.135 |
2018 | 2.134 | 40 | 0.003 | 12.919 | 0.176 |
2019 | 2.168 | 51 | 0.003 | 15.385 | 0.255 |
Year | n | Minimum | Maximum | Mean | Standard Deviation |
---|---|---|---|---|---|
2014 | 58 1 | 16.37 | 49.40 | 29.9136 | 8.07067 |
2015 | 75 | 19.58 | 54.54 | 34.4208 | 9.41600 |
2016 | 96 | 19.68 | 51.16 | 34.1814 | 7.78418 |
2017 | 123 | 19.51 | 58.67 | 37.2948 | 8.01921 |
2018 | 149 | 20.26 | 86.01 | 37.2948 | 12.43961 |
2019 | 190 | 22.74 | 88.78 | 43.5925 | 14.98766 |
Variable | Accessibility Index | |
---|---|---|
r | p | |
Average travel flow | −0.405 ** | 0.002 |
Average number of travelers | −0.350 ** | 0.007 |
Average travel frequency | −0.490 ** | 0.000 |
Average travel distance | −0.705 ** | 0.000 |
Morning peak hour | −0.147 | 0.270 |
Moring peak flow | −0.190 | 0.153 |
Evening peak hour | −0.177 | 0.183 |
Evening peak flow | −0.241 | 0.068 |
Variable | Accessibility Index | |
---|---|---|
r | p | |
Average travel flow | −0.460 ** | 0.000 |
Average number of travelers | −0.417 ** | 0.000 |
Average travel frequency | −0.363 ** | 0.001 |
Average travel distance | 0.336 ** | 0.003 |
Morning peak hour | −0.107 | 0.361 |
Moring peak flow | −0.343 ** | 0.003 |
Evening peak hour | −0.270 * | 0.019 |
Evening peak flow | −0.577 ** | 0.000 |
Variable | Accessibility Index | |
---|---|---|
r | p | |
Average travel flow | −0.397 ** | 0.000 |
Average number of travelers | −0.340 ** | 0.001 |
Average travel frequency | −0.298 ** | 0.003 |
Average travel distance | 0.503 ** | 0.000 |
Morning peak hour | −0.094 | 0.361 |
Moring peak flow | −0.210 * | 0.040 |
Evening peak hour | −0.094 | 0.363 |
Evening peak flow | −0.514 ** | 0.000 |
Variable | Accessibility Index | |
---|---|---|
r | p | |
Average travel flow | −0.396 ** | 0.000 |
Average number of travelers | −0.314 ** | 0.000 |
Average travel frequency | −0.502 ** | 0.000 |
Average travel distance | −0.746 ** | 0.000 |
Morning peak hour | 0.009 | 0.922 |
Moring peak flow | −0.478 ** | 0.000 |
Evening peak hour | −0.161 | 0.075 |
Evening peak flow | −0.346 ** | 0.000 |
Variable | Accessibility Index | |
---|---|---|
r | p | |
Average travel flow | −0.439 ** | 0.000 |
Average number of travelers | −0.379 ** | 0.000 |
Average travel frequency | −0.309 ** | 0.000 |
Average travel distance | 0.840 ** | 0.000 |
Morning peak hour | −0.163 * | 0.046 |
Moring peak flow | −0.378 ** | 0.000 |
Evening peak hour | −0.113 | 0.170 |
Evening peak flow | −0.515 ** | 0.000 |
Variable | Accessibility Index | |
---|---|---|
r | p | |
Average travel flow | −0.517 ** | 0.000 |
Average number of travelers | −0.477 ** | 0.00 |
Average travel frequency | −0.290 ** | 0.000 |
Average travel distance | 0.831 ** | 0.000 |
Morning peak hour | −0.142 | 0.051 |
Moring peak flow | −0.474 ** | 0.000 |
Evening peak hour | −0.060 | 0.410 |
Evening peak flow | −0.516 ** | 0.000 |
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Peng, J.; Cui, C.; Qi, J.; Ruan, Z.; Dai, Q.; Yang, H. The Evolvement of Rail Transit Network Structure and Impact on Travel Characteristics: A Case Study of Wuhan. ISPRS Int. J. Geo-Inf. 2021, 10, 789. https://doi.org/10.3390/ijgi10110789
Peng J, Cui C, Qi J, Ruan Z, Dai Q, Yang H. The Evolvement of Rail Transit Network Structure and Impact on Travel Characteristics: A Case Study of Wuhan. ISPRS International Journal of Geo-Information. 2021; 10(11):789. https://doi.org/10.3390/ijgi10110789
Chicago/Turabian StylePeng, Jiandong, Changwei Cui, Jiajie Qi, Zehan Ruan, Qi Dai, and Hong Yang. 2021. "The Evolvement of Rail Transit Network Structure and Impact on Travel Characteristics: A Case Study of Wuhan" ISPRS International Journal of Geo-Information 10, no. 11: 789. https://doi.org/10.3390/ijgi10110789