Service-Oriented Load Balancing Approach to Alleviating Peak-Hour Congestion in a Metro Network Based on Multi-Path Accessibility
Abstract
:1. Introduction
2. Literature Review
3. Problem Description
4. Methodologies
4.1. Notations
4.2 Set of Effective Alternative Routes
4.3 Mathematical Model
4.4 Algorithm of Load Balancing
5. Case Study and Discussions
6. Perspectives in the Smart Metro Systems
- An Application (APP) downloaded onto the smartphone will be helpful. For passengers, when overcrowded stations and segments are made available and shown, it can greatly help inform users to take an under-utilized route among all effective ones and allow passengers to reserve their trips ahead of time to avoid congested segments. For metro operation and management related enterprises, it is a real-time information broadcasting platform which can be effectively leveraged and developed to directly deliver important messages to passengers.
- A route pricing strategy can be another novel scheme to balance the travel demands in a metro system. A stated preference survey has been conducted in morning peak hours in the Shanghai metro system. Preliminary analysis of the results shows that more than 40% of commuters would choose a slightly longer but less crowded route [23]. If passengers shift their travels to a less heavily utilized routes in peak hours, they should be incentivized and rewarded (e.g., free of charge). It should be noted that, the incentives will need to be dynamically adjusted to the level of congestion on the segments in the metro network.
7. Conclusion
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
- Kim, K.M.; Hong, S.-P.; Ko, S.J.; Kim, D. Does crowding affect the path choice of metro passengers? Transp. Res. Part A: Policy Pract. 2015, 77, 292–304. [Google Scholar] [CrossRef]
- Li, S.M.; Wong, F.C.L. The effectiveness of differential pricing on route choice: the case of the mass transit railway of Hong Kong. Transportation 1994, 21, 307–324. [Google Scholar] [CrossRef]
- Raveau, S.; Munoz, J.C.; Grange, L.D. A topological route choice model for metro. Transp. Res. Part A: Policy Pract. 2011, 45, 138–147. [Google Scholar] [CrossRef]
- Raveau, S.; Guo, Z.; Muñoz, J.C.; Wilson, H.M.N. A behavioural comparison of route choice on metro networks: Time, transfers, crowding, topology and socio-demographics. Transport. Res. Part A: Policy Pract. 2014, 66, 185–195. [Google Scholar] [CrossRef]
- Zhao, P.; Yao, X.M.; Yu, D.D. Cooperative passenger inflow control of urban mass transit in peak hours. J. Tongji Univ. (nat. sci.) 2014, 42, 1340–1346. [Google Scholar]
- Yao, X.M.; Zhao, P.; Qiao, K.; Yu, D.D. Modeling on coordinated passenger inflow control for urban rail transit network. J. Cent. South Univ. (Sci. Technol.) 2015, 46, 342–350. [Google Scholar]
- Li, S.K.; Dessouky, M.M.; Yang, L.X.; Gao, Z.Y. Joint optimal train regulation and passenger flow control strategy for high-frequency metro lines. Transp. Res. Part B: Method. 2017, 99, 113–137. [Google Scholar] [CrossRef]
- Shi, J.G.; Yang, L.X.; Yang, J.; Gao, Z.Y. Service-oriented train timetabling with collaborative passenger flow control on an oversaturated metro line: An integer linear optimization approach. Transp. Res. Part B: Method. 2018, 110, 26–59. [Google Scholar] [CrossRef]
- Xu, X.Y.; Liu, J.; Li, H.Y.; Jiang, M. Capacity-oriented passenger flow control under uncertain demand: Algorithm development and real-world case study. Transp. Res. Part E: L. Transp. Rev. 2016, 87, 130–148. [Google Scholar] [CrossRef]
- Jiang, Z.B.; Fan, W.; Liu, W.; Zhu, B.Q.; Gu, J.J. Reinforcement learning approach for coordinated passenger inflow control of urban rail transit in peak hours. Transp. Res. Part C: Emerging Technol. 2018, 88, 1–16. [Google Scholar] [CrossRef]
- Si, B.F.; Mao, B.H.; Liu, Z.L. Passenger flow assignment model and algorithm for urban railway traffic network under the condition of seamless transfer. J. Ch. Railw. Soc. 2007, 29, 12–18. [Google Scholar]
- Zhu, W.; Hu, H.; Xu, R.H.; Hong, L. Modified stochastic user-equilibrium assignment algorithm for urban rail transit under network operation. J. Cent. South Univ. Engl. Ed. 2013, 20, 2897–2904. [Google Scholar] [CrossRef]
- Abadi, A.; Ioannou, P.A.; Dessouky, M.M. Multimodal dynamic freight load balancing. IEEE Transactions Intelli. Transp. Syst. 2016, 17, 356–366. [Google Scholar] [CrossRef]
- Whelan, G.; Jon, C. An investigation of the willingness to pay to reduce rail overcrowding. In Proceedings of the first International Conference on Choice Modelling, Harrogate, England, 30 March–1 April 2009. [Google Scholar]
- Li, Z.; Hensher, D.A. Crowding and public transport: A review of willingness to pay evidence and its relevance in project appraisal. Transp. Policy 2011, 18, 880–887. [Google Scholar] [CrossRef]
- Feng, J.; Xu, Q.; Li, X.M.; Yang, Y.Z. Complex network study on urban rail transit systems. J. Transp. Syst. Eng. Inf. Technol. 2017, 17, 242–247. [Google Scholar]
- Rosenbloom, S. Peak-period traffic congestion: A state-of-the-art analysis and evaluation of effective solutions. Transportation 1978, 7, 167–191. [Google Scholar] [CrossRef]
- Bai, Y.; Liu, J.F.; Sun, Z.Z.; Mao, B.H. Analysis on route choice behavior in seamless transfer urban rail transit network. In Proceedings of the IEEE International Workshop on Modelling, Simulation and Optimization, Hong Kong, China, 27–28 December 2008; pp. 264–267. [Google Scholar]
- Xu, R.H.; Luo, Q.; Gao, P. Passenger flow distribution model and algorithm for urban rail transit network based on multi-route choice. J. Ch. Railw. Soc. 2009, 31, 110–114. [Google Scholar]
- National Standardization Administration of China. General technical specification for metro vehicles. 2003. Available online: http://www.gb688.cn/bzgk/gb/newGbInfo?hcno=657AECE6BFA031382A2645D61363896C (accessed on 5 December 2003).
- Cea, J.D.; Fernández, E. Transit assignment for congested public transport systems: An equilibrium model. Transp. Sci. 1993, 27, 133–147. [Google Scholar] [CrossRef]
- Huang, Z.Y.; Xu, R.H.; Zhou, F.; Xu, T.J. Estimation method of section passenger flow composition for metro network with constraints of time and route. J. Tongji Univ. (nat. sci.) 2018, 46, 920–925. [Google Scholar]
- Xu, R.H.; Huang, Z.Y.; Zhou, F.; Li, C.F. Does differential pricing affect route choice of the peak hour metro passengers? A case study in Shanghai metro system. In Proceedings of the IEEE International Conference on Intelligent Rail Transportation, Singapore, 12–14 December 2018; pp. 1–5. [Google Scholar]
Symbols | Definition |
---|---|
Set of OD ridership loaded on overloaded segment(s); | |
Ridership of OD pair , ; | |
Set of efficient routes between OD pair indexed by ; | |
Efficient route between OD pair , ; If , is the route of which includes overloaded segment(s), otherwise, is the effective alternative route of ; | |
Study peak period; | |
Set of involved passengers indexed by ; | |
Generalized time utility of route chosen by passenger ; | |
Ridership loading on segment on route ; | |
In-vehicle-movement time along segment on route ; | |
Dwell time at passing station on route ; | |
Transfer time at transfer station on route , ; | |
Walking time at transfer station on route ; | |
Waiting time at transfer station on route ; | |
Train capacity of route ; | |
Headway between trains on route ; | |
Rated passenger capacity of per train car on route ; | |
Number of trains marshalling on route ; | |
Penalty coefficient of transfer crowding and the undesirable walking at transfer station on route ; | |
Occupancy of trains along segment a on route k; | |
αk,a | Penalty coefficient of in-vehicle crowding on segment a on route k; |
ε | Binary variable; If route k is the route with overloaded segment(s), then ε = −1; otherwise, ε = 1. |
System | Shanghai Metro | Beijing Subway |
---|---|---|
Lines | 16 | 22 |
Stations | 389 | 370 |
Transfers | 52 | 53 |
Length (km) | 666 | 608 |
Maximum daily ridership (million) | 12.355 | 10.52 |
Minimum headway in peak hours | 75s | 70s |
OD Pair(s) | Ridership | Route with Overloaded Segments | Effective Alternative Route |
---|---|---|---|
OD1 | : O→11a→11c→11e→D1 | : O→11a→3/4a→3/4e→D1 | |
OD2 | : O→11a→11c→D2 | : O→11a→3/4h→10a→D2 | |
OD3 | : O→11a→11c→3/4b→D3 | : O→11a→3/4a→3/4b→D3 |
Line | Number of Trains Marshalling | Rated Capacity (Passengers/Car) | Headway (s) | Correction Factor |
---|---|---|---|---|
Line 2 | 8 | 310 | 180 | 2 |
Line 3–4 | 6 | 310 | 150 | 2 |
Line 4 | 6 | 310 | 300 | 2 |
Line 9 | 6 | 310 | 225 | 2 |
Line 10 | 6 | 310 | 200 | 2 |
Line 11 | 6 | 310 | 180 | 2 |
Involved Transfers | Transfer Direction | Walking Time for Transferring (s) | Penalty Coefficient |
---|---|---|---|
Caoyang Rd. (11a) | From Line 11 to Line 3/4 | 206 | 1.67 |
Jiangsu Rd. (11c) | From Line 11 to Line 2 | 220 | 2.95 |
Xujiahui (11e) | From Line 11 to Line 9 | 220 | 1.86 |
Zhongshan Park (3/4b) | From Line 3/4 to Line 2 | 271 | 2.13 |
Yishan Rd. (3/4d) | From Line 3/4 to Line 9 | 354 | 2.19 |
Hailun Rd. (10a) | From Line 4 to Line 10 | 150 | 1.50 |
Iteration | Route with Overloaded Segments | Effective Alternative Route | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
The Occupancy of Trains Along Involved Segments (%) | ||||||||||
Load V1 from V1,0 to the under-utilized route V1,1 | ||||||||||
n | 11a–11b | 11b–11c | 11c–11d | 11d–11e | 11e–3/4e | 11a–3/4a | 3/4a–3/4b | 3/4b–3/4c | 3/4c–3/4d | 3/4d–3/4e |
0 | 95.63 | 94.91 | 54.72 | 48.34 | 97.46 | 60.70 | 65.36 | 56.45 | 48.06 | 44.17 |
1 | 94.55 | 93.84 | 53.64 | 47.26 | 96.12 | 61.60 | 66.25 | 57.34 | 48.97 | 45.06 |
2 | 91.33 | 90.61 | 50.41 | 44.04 | 92.08 | 64.29 | 68.94 | 60.03 | 51.65 | 47.75 |
… | … | … | … | … | … | … | … | … | … | … |
20 | 89.18 | 88.46 | 48.26 | 41.89 | 89.40 | 66.08 | 70.73 | 61.82 | 53.45 | 49.54 |
… | … | … | … | … | … | … | … | … | … | … |
40 | 88.10 | 87.39 | 47.19 | 40.81 | 88.05 | 66.98 | 71.63 | 62.72 | 54.34 | 50.44 |
41 | 87.83 | 87.12 | 46.92 | 40.54 | 87.72 | 67.20 | 71.85 | 62.94 | 54.57 | 50.66 |
42 | 87.63 | 86.92 | 46.72 | 40.34 | 87.47 | 67.37 | 72.02 | 63.11 | 54.73 | 50.83 |
The total travel time utility reaches the minimum and only has one effective alternative route. Therefore, the loading of ends. | ||||||||||
Continue to load from to the under-utilized route | ||||||||||
n | 11a–11b | 11b–11c | 11c–3/4b | 11a–3/4a | 3/4a–3/4b | |||||
0 | 87.63 | 86.92 | 54.01 | 67.37 | 72.02 | |||||
1 | 87.10 | 86.38 | 53.60 | 67.81 | 72.46 | |||||
2 | 86.02 | 85.31 | 52.80 | 68.71 | 73.36 | |||||
… | … | … | … | … | … | |||||
10 | 85.48 | 84.77 | 52.40 | 69.16 | 73.81 | |||||
… | … | … | … | … | … | |||||
24 | 85.35 | 84.63 | 52.29 | 69.27 | 73.92 | |||||
25 | 85.22 | 84.50 | 52.19 | 69.38 | 74.03 | |||||
26 | 85.01 | 84.29 | 52.04 | 69.56 | 74.21 | |||||
The total travel time utility reaches the minimum. The overloaded segments disappear without new overloaded segments emerging. As such, the load balancing solution is returned. |
Ridership for Loading | Routes for Balancing |
---|---|
1487 | From r1,0 to r1,1 |
489 | From r3,0 to r3,1 |
Indictor | No LB | With LB | Variations |
---|---|---|---|
Total travel generalized time (h) | 4070.8266 | 4046.5331 | −0.60% |
Penalty for crowdedness | 14,836 | 4222 | −71.54% |
Penalty for wasted capacity | 4139 | 4503 | +8.79% |
© 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
Huang, Z.; Xu, R.; Fan, W.; Zhou, F.; Liu, W. Service-Oriented Load Balancing Approach to Alleviating Peak-Hour Congestion in a Metro Network Based on Multi-Path Accessibility. Sustainability 2019, 11, 1293. https://doi.org/10.3390/su11051293
Huang Z, Xu R, Fan W, Zhou F, Liu W. Service-Oriented Load Balancing Approach to Alleviating Peak-Hour Congestion in a Metro Network Based on Multi-Path Accessibility. Sustainability. 2019; 11(5):1293. https://doi.org/10.3390/su11051293
Chicago/Turabian StyleHuang, Zhiyuan, Ruihua Xu, Wei (David) Fan, Feng Zhou, and Wei Liu. 2019. "Service-Oriented Load Balancing Approach to Alleviating Peak-Hour Congestion in a Metro Network Based on Multi-Path Accessibility" Sustainability 11, no. 5: 1293. https://doi.org/10.3390/su11051293
APA StyleHuang, Z., Xu, R., Fan, W., Zhou, F., & Liu, W. (2019). Service-Oriented Load Balancing Approach to Alleviating Peak-Hour Congestion in a Metro Network Based on Multi-Path Accessibility. Sustainability, 11(5), 1293. https://doi.org/10.3390/su11051293