An Adaptive Traffic-Flow Management System with a Cooperative Transitional Maneuver for Vehicular Platoons
Abstract
:1. Introduction
1.1. Motivation
1.2. Contribution
- 1.
- This work proposes a mechanism to efficiently manage traffic during high congestion, thus reducing road fatalities.
- 2.
- The proposed work focuses on merging platoons into one platoon, improvising the traffic flow and reducing travel time.
- 3.
- Finally, traffic performance is enhanced by joining a single non-platooned vehicle into a vehicle platoon, and collision is reduced by lane-changing mechanisms.
1.3. Paper Organisation
2. Related Works
3. Proposed Work
3.1. System Model
3.2. Assumptions
- 1.
- All vehicles on the road are AVs to make communication reliable and compatible; there are no human-driven vehicles.
- 2.
- Let , , be the current density, threshold density, and normal density, respectively. The density of the AV represents the number of AVs per unit length-segment of the lane. AVs are generated by Poisson distribution with arrival rate as , where i = 1, 2, 3, …, N.
- 3.
- The initial route and alternate routes are generated against each source destination. The source and destination of each AV are assumed to be known, creating platoons P having a minimum of four AVs, where P = , , , …, . The set of AVs fetched in each platoon can be stated as where j = 1, 2, 3, …, M, for example, , , , , , , and so on.
- 4.
- The speed of the AV, acceleration, minimum gap, and distance to the leader are assumed to be known. The AVs in the platoons are induced to proceed from the source towards the destination, following the leader AV. The platoon vehicles move in a dedicated lane of the four-way highway. This mechanism minimizes the hindrance of human-driven vehicles in the other lanes.
- 5.
- The AVs broadcast CAM via a dedicated channel (CCH) at a frequency of 10 Hz, as per 802.11p specification. As an example, standard single-radio transceivers for platooned AVs are considered which are continually modulated to the CCH to broadcast and receive CAM [33]. The information about the density of AVs, speed, acceleration, and flow of AVs individually and in the platoon are utilized for congestion detection and avoidance during rerouting.
- 6.
- The car-following mobility model is similar to the one used in the PLEXE simulator i.e., the CACC approach. The CACC approach exploits the communication among vehicles via IVC. The control law for the CACC model considered for our implementation is based on the theory of consensus [32].
3.3. Proposed Methodology
Algorithm 1 An algorithm for traffic management using platooning |
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4. Simulation and Results
4.1. Simulation Tool
4.2. Simulation Parameters
4.3. Merge Maneuver (Scenario 1)
4.4. Join Maneuver (Scenario 2)
4.5. Collision-Avoidance (Scenario 3)
4.6. Comparison of All Scenarios
5. Conclusions and Future Works
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Notations | Description |
---|---|
Current Density of AVs | |
Threshold Density of AVs | |
Normal Density of As | |
Time Delay | |
Threshold Value of Delay | |
Threshold Density of Platoon | |
Identity of the platoon | |
Identity of the AV | |
L | Lane number |
Parameter | Values |
---|---|
AV’s length | 4 m |
Optimal platoon size | 8 |
Controller | ACC, CACC |
Leader headway | 1.2 s |
Maximum speed (leader) | 33.34 m/s |
Maximum acceleration | |
Maximum deceleration | |
Lanes | 4 |
Platoon size | 4,6,8 |
Simulation rime | Merge-and-join maneuver (120 s), lane change (300 s) |
PHY/MAC Model | IEEE 802.11p |
MAC Model | 1609.4 |
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Hota, L.; Nayak, B.P.; Sahoo, B.; Chong, P.H.J.; Kumar, A. An Adaptive Traffic-Flow Management System with a Cooperative Transitional Maneuver for Vehicular Platoons. Sensors 2023, 23, 2481. https://doi.org/10.3390/s23052481
Hota L, Nayak BP, Sahoo B, Chong PHJ, Kumar A. An Adaptive Traffic-Flow Management System with a Cooperative Transitional Maneuver for Vehicular Platoons. Sensors. 2023; 23(5):2481. https://doi.org/10.3390/s23052481
Chicago/Turabian StyleHota, Lopamudra, Biraja Prasad Nayak, Bibhudatta Sahoo, Peter H. J. Chong, and Arun Kumar. 2023. "An Adaptive Traffic-Flow Management System with a Cooperative Transitional Maneuver for Vehicular Platoons" Sensors 23, no. 5: 2481. https://doi.org/10.3390/s23052481