An Eco-Driving Strategy Considering Phase-Switch-Based Bus Lane Sharing
Abstract
:1. Introduction
- Allow phase-switch-based bus lane sharing for CAVs.
- Improve traffic efficiency and sustainability in the partially connected and automated environment.
- Be enabled under various demand patterns.
- Ensure absolute bus priority while allowing CAVs to share the bus lane.
2. Problem Description
3. Eco-Driving Strategy
3.1. Eco-Driving Decision-Making
3.2. Terminal Passing Time Prediction
3.2.1. Terminal Passing Time on GPLs
3.2.2. Terminal Passing Time on BPL
3.3. Phase-Switch-Based Bus Lane Sharing Controller
3.3.1. Cost Function
3.3.2. Constraints
- a.
- Vehicle kinematic constraints
- b.
- Vehicle conflict-free constraints
- c.
- Lane-changing possibility constraints
- d.
- Preceding and following vehicles’ type constraints
4. Evaluation
4.1. Experiment Design
4.1.1. Testbed
4.1.2. Scenario
- Non-control baseline: In this scenario, all vehicles are human-driven vehicles. All general traffic can only run on the GPLs.
- State-of-the-art strategy: In this scenario, general traffic is composed of CAVs and CHVs. The BPL is only open to CAVs with going-through-movement intentions. All CAVs sharing the BPL cannot cause interference with buses. This strategy enables single-phase-based bus lane sharing [22].
- The proposed strategy: In this scenario, general traffic is composed of CAVs and CHVs. The BPL is open to CAVs with going-through-movement intentions and left-turning-movement intentions. All CAVs sharing the BPL cannot cause interference with buses. The proposed strategy enables phase-switch-based bus lane sharing.
4.1.3. Measurement of Effectiveness
4.1.4. Simulation Settings
4.1.5. Sensitivity Analysis
4.2. Results
4.2.1. Fuel Efficiency Improvement Validation
Sensitive Analysis at Various CAV Penetration Rates
- (1)
- Compared with Non-control Baseline
- (2)
- Compared with the State-of-the-art Strategy
Sensitive Analysis at Various Demand Levels
- (1)
- Compared with Non-control Baseline
- (2)
- Compared with the State-of-the-art Strategy
4.2.2. Traffic Efficiency Improvement Validation
Sensitive Analysis at Various CAV Penetration Rates
- (1)
- Compared with Non-control Baseline
- (2)
- Compared with the State-of-the-art Strategy
Sensitive Analysis at Different Demand Levels
- (1)
- Compared with Non-control Baseline
- (2)
- Compared with the State-of-the-art Strategy
4.2.3. The Validation of the Absolute Bus Priority
5. Discussion and Conclusions
- Under various CAV Penetration Rates (CPR), the proposed strategy outperforms the state-of-the-art strategy, especially when the CPR is high. The proposed strategy can respectively obtain the benefits of throughput improvement and delay reduction up to 24.97% and 51.05%. Furthermore, the proposed strategy could save fuel by up to 15.15%. With the growth of CPR, the benefits of fuel efficiency decline gradually.
- Under various demand levels, the proposed strategy achieves more throughput improvement benefits under oversaturated conditions (demand level = 1.2, 1.4, and 1.6), ranging from 1.08% to 23.97%. The delay reduction benefits of the proposed strategy range from 2.21% to 69.59% from the non-saturated demand level to the oversaturated demand level, respectively. Additionally, the fuel consumption of the proposed strategy can be saved up to 11.07% when the demand level is 1.6.
- The proposed eco-driving strategy can maximize the benefits of general vehicles while ensuring absolute bus priority under various CPR and demand levels.
6. Limitations and Future Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Parameter | Value |
---|---|
Length of Section 1 (m) | 350 |
Length of Section 2 (m) | 150 |
Simulation time horizon (s) | 3900 |
Optimization time step (s) | 1 |
Cycle of signal time (s) | 60 |
Duration of red light (s) | 24 |
Duration of the going-through-movement green light (s) | 18 |
Duration of the left-turning-movement green light (s) | 18 |
Saturation flow rate (veh/h) | 1440 |
Departure time interval of buses (s) | 60 |
Proportion of left-turning-movement vehicles | 40% |
Proportion of going-through-movement vehicles | 40% |
Desired speed for buses (km/h) | 48 |
Desired speed for general vehicles (km/h) | 60 |
Maximum speed (m/s) | 20 |
Minimum speed (m/s) | 0 |
Maximum acceleration (m/s2) | 3.5 |
Minimum acceleration (m/s2) | −4 |
Safe time headway (s) | 1.6 |
Reaction time (s) | 0.5 |
Length of the bus (m) | 10 |
Length of the general vehicle (m) | 4 |
Factor | 10 |
Factor | 1 |
Demand Level | Actual Speed (km/h) | Actual Acceleration (m/s2) | Desired Speed (km/h) | Speed Error (%) |
---|---|---|---|---|
1.2 | 47.99 | 0.0056 | 48 | 0.02 |
1.4 | 48.01 | 0.0055 | 48 | 0.02 |
1.6 | 47.96 | 0.0086 | 48 | 0.08 |
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Wang, G.; Lai, J.; Lian, Z.; Zhang, Z. An Eco-Driving Strategy Considering Phase-Switch-Based Bus Lane Sharing. Sustainability 2023, 15, 7330. https://doi.org/10.3390/su15097330
Wang G, Lai J, Lian Z, Zhang Z. An Eco-Driving Strategy Considering Phase-Switch-Based Bus Lane Sharing. Sustainability. 2023; 15(9):7330. https://doi.org/10.3390/su15097330
Chicago/Turabian StyleWang, Guan, Jintao Lai, Zhexi Lian, and Zhen Zhang. 2023. "An Eco-Driving Strategy Considering Phase-Switch-Based Bus Lane Sharing" Sustainability 15, no. 9: 7330. https://doi.org/10.3390/su15097330
APA StyleWang, G., Lai, J., Lian, Z., & Zhang, Z. (2023). An Eco-Driving Strategy Considering Phase-Switch-Based Bus Lane Sharing. Sustainability, 15(9), 7330. https://doi.org/10.3390/su15097330