Research on Optimizing Low-Saturation Intersection Signals with Consideration for Both Efficiency and Fairness
Abstract
:1. Introduction
2. Literature Review
2.1. General Traffic Signal Timing Optimization Problem Framework
- (1)
- Objective function:
- (2)
- Constraint condition
- (3)
- Mathematical optimization model
2.2. Traffic Signal Timing Optimization
2.3. Transportation Fairness
2.4. Summary
- (1)
- Existing signal timing methods often optimize for one or several objectives and construct optimization functions, primarily focusing on delay as the target, with relatively few studies considering both delay and fairness.
- (2)
- Information entropy is widely used in various fields, but there are relatively few studies applying it to signal timing optimization.
- (3)
- Currently, research on fairness in the transportation field is relatively broad, with increasing attention being paid to fairness in signal control. However, there are relatively few studies on fairness regarding delay fairness for each phase.
3. Intersection Delay Fairness Analysis
3.1. Delay Model Fairness Analysis
3.1.1. Synthetic Sample Generation
- (1)
- Basic situation of the intersection
- (2)
- Traffic flow setting
- (3)
- Phase setting
- (4)
- Arithmetic sample generation
- (5)
- Sample description
- (6)
- Sample of generating code logic
- Since the research subject of this chapter is low-saturation urban intersections, the total intersection saturation range is set between 0.05 and 0.8 with a gradient interval of 0.015; the total traffic flow ranges from 600 veh/h to 5600 veh/h with a gradient interval of 100 veh/h. These are paired to form a set of basic data, totaling 2500 sets.
- Under the constraints of not exceeding the phase saturation flow and meeting the specified intersection saturation and total traffic flow, random values are assigned to the actual flow of each phase. The generated phase flow values are used for model traversal and solution.
3.1.2. Theory Analysis
- (1)
- Prevalence of unfairness
- (2)
- The less saturated, the less fair
3.1.3. Sample Analysis
- (1)
- Prevalence of unfairness
- (2)
- The less saturated, the less fair
3.2. Delay Model Determination
3.3. Delay Model Fairness Evaluation
3.3.1. Information Entropy
3.3.2. Fairness Evaluation Index
4. Efficiency and Fairness Signal Optimization Model
4.1. Feasibility Analysis
4.1.1. The Delay-to-Fairness Conversion Rate
4.1.2. Feasibility Discussion
- (1)
- Calculation method
- (2)
- Results
4.2. Optimization Model Construction
4.2.1. Objective Function
4.2.2. Optimization Model
5. Model Sample Validation
5.1. Fairness Model
5.2. Validity and Sensitivity Analysis
5.2.1. Comparative Analyses of Validity
- (1)
- Fairness
- (2)
- Efficiency
- (3)
- Conversion rate
5.2.2. Comparative Analyses of Fluctuations
- (1)
- Cycle Length
- (2)
- Green time ratio
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Entrance | East Entrance | West Entrance | South Entrance | North Entrance | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Left | Straight | Right | Left | Straight | Right | Left | Straight | Right | Left | Straight | Right | |
Number of lanes | 1 | 2 | 1 | 1 | 2 | 1 | 1 | 2 | 1 | 1 | 2 | 1 |
Saturated traffic flow(veh/h) | 1990 | 6828 | 2155 | 1990 | 6828 | 2155 | 2010 | 6780 | 2168 | 2020 | 6652 | 2168 |
Type | Name | Symbol | Value | Unit |
---|---|---|---|---|
Vehicle Parameters | Free Flow Speed | 11.1 | m/s | |
Average Deceleration | −2.5 | m/s2 | ||
Average Acceleration | 1.5 | m/s2 | ||
Signal Parameters | Number of Phases | M | 4 | |
Saturation Flow Rate (Phase 1) | 6652 | veh/h | ||
Saturation Flow Rate (Phase 2) | 2010 | veh/h | ||
Saturation Flow Rate (Phase 3) | 6379 | veh/h | ||
Saturation Flow Rate (Phase 4) | 2005 | veh/h | ||
Start-Up Loss Time | 3 | s | ||
Yellow Light Time | 3 | s | ||
Green Light Interval Time | 3 | s |
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Zhu, L.; Yu, L.; Zou, L. Research on Optimizing Low-Saturation Intersection Signals with Consideration for Both Efficiency and Fairness. Appl. Sci. 2024, 14, 8047. https://doi.org/10.3390/app14178047
Zhu L, Yu L, Zou L. Research on Optimizing Low-Saturation Intersection Signals with Consideration for Both Efficiency and Fairness. Applied Sciences. 2024; 14(17):8047. https://doi.org/10.3390/app14178047
Chicago/Turabian StyleZhu, Lingxiang, Lujing Yu, and Liang Zou. 2024. "Research on Optimizing Low-Saturation Intersection Signals with Consideration for Both Efficiency and Fairness" Applied Sciences 14, no. 17: 8047. https://doi.org/10.3390/app14178047
APA StyleZhu, L., Yu, L., & Zou, L. (2024). Research on Optimizing Low-Saturation Intersection Signals with Consideration for Both Efficiency and Fairness. Applied Sciences, 14(17), 8047. https://doi.org/10.3390/app14178047