Day-to-Day and Within-Day Traffic Assignment Model of Heterogeneous Travelers Within the MaaS Framework
Abstract
:1. Introduction
2. Problem Description and Preliminary Model
3. Dual Dynamic Departure Time and Route Choice Adjustment Model for Heterogeneous Users
3.1. Within-Day Traffic Adjustment for Heterogeneous Users
3.1.1. Subscribed User SO Model
3.1.2. Decentralized Users’ Experience-Based Travel Model
- Departure time adjustment
- 2.
- Travel route adjustment
3.2. The Day-to-Day Flow Adjustment Model Among Heterogeneous Users
3.3. IGA-MSA Hybrid Algorithm
3.3.1. The Upper-Level Algorithm
- Chromosome representation and initial population generation
- 2.
- Fitness function
- 3.
- Crossover operations
- 4.
- Mutation operations
- 5.
- Selection operations
3.3.2. The Lower-Level Algorithm
4. Numerical Examples
4.1. Example Data
4.2. Evolution Results Analysis
4.2.1. Analysis of Traffic Flow Evolution in the Network
4.2.2. Evaluation of the IGA-MSA Hybrid Algorithm
4.2.3. Impact of the MaaS Assignment Model on Traffic Flow Evolution
4.2.4. Impact of the MaaS Assignment Model on Departure Times
5. Conclusions
- The MaaS platform significantly attracts private car users by effectively reducing travel costs, prompting many decentralized users to transition to subscribed users gradually. As the system evolves day by day, path and departure-time selection behaviors for both user groups become stable; however, notable differences in path selections across various OD pairs suggest that traffic demand management strategies should be refined based on specific travel demand structures and network capacities;
- Analysis of time-varying traffic demand revealed that decentralized users relying solely on personal experiences tend to concentrate travel within specific time windows, frequently causing peak-hour congestion. Conversely, users guided by the MaaS platform exhibit more evenly distributed departure times, emphasizing the platform’s considerable advantage in managing peak-period traffic flows and reducing congestion risks;
- The proposed IGA-MSA algorithm demonstrated strong performance by effectively reducing total travel costs during the early stages of system evolution and consistently outperforming traditional uniform allocation strategies throughout the evolutionary process. This facilitates more rational and efficient utilization of network capacities.
- The travel behavior model developed in this study assumes all users are fully rational decision-makers, neglecting potential irrational or varied rational decision-making behaviors observed in real-world conditions. Future research could incorporate theories from behavioral economics and psychology to introduce diverse user behavior patterns, enabling more accurate modeling of real-world travel decision processes;
- Although the IGA-MSA algorithm effectively reduces overall travel costs, its current applicability is limited to scenarios with fewer OD pairs and relatively simple, non-overlapping route networks, posing scalability challenges. Future studies could enhance this algorithm by integrating deep learning or advanced heuristic search methods, developing high-performance hybrid dynamic flow allocation algorithms suitable for large-scale, complex networks;
- This research has not addressed the design and evaluation of differentiated incentive mechanisms, which are crucial for enhancing user acceptance of MaaS platforms and accelerating the system’s progression toward optimal conditions. Future studies could explore mixed incentive strategies combining dynamic incentive mechanisms, differentiated pricing, and multi-faceted subsidy models, evaluating their impacts on heterogeneous user travel behaviors. This approach would enable finer management of travel demand, enhancing the practical applicability and adaptability of the MaaS optimization framework proposed herein.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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OD Pair | Path ID | Route | OD Pair | Path ID | Route |
---|---|---|---|---|---|
1–2 | 1 | 2-18-11 | 4–2 | 15 | 3-5-7-9-11 |
2 | 2-17-7-9-11 | 16 | 3-5-7-10-15 | ||
3 | 2-17-7-10-15 | 17 | 3-5-8-14-15 | ||
4 | 2-17-8-14-15 | 18 | 3-6-12-14-15 | ||
5 | 1-5-7-9-11 | 19 | 4-12-14-15 | ||
6 | 1-5-7-10-15 | 4–3 | 20 | 3-5-7-10-16 | |
7 | 1-5-8-14-15 | 21 | 3-5-8-14-16 | ||
8 | 1-6-12-14-15 | 22 | 3-6-12-14-16 | ||
1–3 | 9 | 1-5-7-10-16 | 23 | 3-6-13-19 | |
10 | 1-5-8-14-16 | 24 | 4-12-14-16 | ||
11 | 1-6-12-14-16 | 25 | 4-13-19 | ||
12 | 1-6-13-19 | ||||
13 | 2-17-7-10-16 | ||||
14 | 2-17-8-14-16 |
Link ID | Free-Flow Travel Time (min) | Capacity of the Roadway | Link Length (m) |
---|---|---|---|
1 | 5 | 400 | 4000 |
2 | 7 | 600 | 5600 |
3 | 3 | 200 | 2400 |
4 | 6 | 400 | 4800 |
5 | 4 | 700 | 3200 |
6 | 7 | 400 | 5600 |
7 | 8 | 600 | 6400 |
8 | 9 | 300 | 7200 |
9 | 4 | 700 | 3200 |
10 | 6 | 400 | 4800 |
11 | 4 | 300 | 3200 |
12 | 3 | 600 | 2400 |
13 | 7 | 400 | 5600 |
14 | 5 | 700 | 4000 |
15 | 8 | 300 | 6400 |
16 | 4 | 500 | 3200 |
17 | 7 | 700 | 5600 |
18 | 6 | 400 | 4800 |
19 | 2 | 600 | 1600 |
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Chen, L.; Yang, Y.; Wang, L.; Xie, C.; He, L.; Ma, M. Day-to-Day and Within-Day Traffic Assignment Model of Heterogeneous Travelers Within the MaaS Framework. Sustainability 2025, 17, 2983. https://doi.org/10.3390/su17072983
Chen L, Yang Y, Wang L, Xie C, He L, Ma M. Day-to-Day and Within-Day Traffic Assignment Model of Heterogeneous Travelers Within the MaaS Framework. Sustainability. 2025; 17(7):2983. https://doi.org/10.3390/su17072983
Chicago/Turabian StyleChen, Lingjuan, Yanjing Yang, Lin Wang, Cong Xie, Lin He, and Minghui Ma. 2025. "Day-to-Day and Within-Day Traffic Assignment Model of Heterogeneous Travelers Within the MaaS Framework" Sustainability 17, no. 7: 2983. https://doi.org/10.3390/su17072983
APA StyleChen, L., Yang, Y., Wang, L., Xie, C., He, L., & Ma, M. (2025). Day-to-Day and Within-Day Traffic Assignment Model of Heterogeneous Travelers Within the MaaS Framework. Sustainability, 17(7), 2983. https://doi.org/10.3390/su17072983