Cooperative Control for Signalized Intersections in Intelligent Connected Vehicle Environments
Abstract
:1. Introduction
- Construction of vehicle trajectories with the condition that the intersection will be reached when the green traffic light is on;
- Estimation of the vehicle arrival time at the intersection, taking into account the vehicle trajectory or using a neural network prediction model;
- Assessment of the observed state of the transport network, including the stop delay for vehicles at the intersection and the arrival time at the intersection for each vehicle;
- Selection of the traffic signal phase based on the observed state using the selected adaptive traffic signal control algorithm; and
- Reconstruction of the vehicle trajectory, for which the predictive traffic signal phase has changed.
- A method of coordinated control of vehicle trajectories and traffic signals; and
- An algorithm for adaptive traffic signal control that maximizes the number of vehicles passing through the intersection, taking into account the trajectory of their movement and/or the arrival time at the intersection predicted by the neural network model.
2. Related Works
2.1. Traffic Signal Control
2.2. Trajectory Construction
2.3. Cooperative Control
3. Cooperative Control Method
3.1. Problem Formulation
3.2. Adaptive Traffic Signal Control
3.2.1. MPC-Based Algorithm
Algorithm 1: MaxPWFlow algorithm |
1: Input data: 2: Output data: 3: if then 4: 5: 6: else 7: 8: 9: end if |
- For vehicles with the known (constructed) trajectory, the crossing time is calculated precisely according to the trajectory since the trajectory determines the vehicle speed at each time moment; and
- For other vehicles, the crossing time is estimated using a prediction model based on the deep neural network (DNN) model.
3.2.2. Crossing Time Prediction Algorithm
- Distance from the current vehicle position to the intersection;
- Vehicle speed;
- Vehicle acceleration;
- Maximum allowed speed;
- Number of preceding vehicles;
- Type of the expected movement direction at the intersection; and
- Speed and position of the nearest vehicle on the outgoing lane.
3.3. Trajectory Construction
3.4. Cooperative Control
- Construct trajectories for all lead vehicles on each lane assuming for all lanes;
- Calculate the crossing time :
- For the lead vehicles, is calculated based on the constructed trajectory;
- For other vehicles, is calculated using the crossing time prediction algorithm described in Section 3.2.2;
- Select the next phase using the adaptive traffic signal control algorithm MaxPWFlow described in Section 3.2:
- Calculate the traffic demand using (2);
- Select the next phase that maximizes the traffic demand; and
- Given the predicted next phase , reconstruct trajectories for all lead vehicles for which the assumption is not satisfied.
4. Experiments
4.1. Case Study
4.2. Baseline Methods
- IDQN: the independent DQN adaptive traffic signal control algorithm, in which each intersection is controlled by 1 RL agent [65];
- IPPO: the independent proximal policy optimization algorithm [65];
- A2C: the advantage actor–critic algorithm [66];
- MaxPWFlow: the MPC-based algorithm described in Section 3.2.1 [17];
- Trajectory Control: the semicooperative algorithm with MPC-based adaptive TSC control [17];
- Trajectory Control + RL: the semicooperative algorithm with IDQN-based adaptive TSC control; and
- Cooperative Control: the method of cooperative control proposed in this paper.
4.3. Experimental Results
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Scenario | Traffic Signals | Intersections | Segments | Trips |
---|---|---|---|---|
“Cologne-3” | 3 | 29 | 48 | 2830 |
“Cologne-8” | 8 | 78 | 149 | 1740 |
“Cologne-316” | 316 | 2928 | 5808 | 13,530 |
Model | “Cologne-3” | “Cologne-8” | “Cologne-316” |
---|---|---|---|
IDQN | 64.24 ± 0.84 | 88.51 ± 1.76 | 334.74 ± 3.37 |
IPPO | 64.42 ± 0.88 | 88.52 ± 1.74 | 416.93 ± 8.85 |
A2C | 66 ± 0.6 | 93.68 ± 1.75 | 355.62 ± 9.36 |
MaxPWFlow | 62.15 ± 0.4 | 86.48 ± 1.77 | 328.62 ± 1.81 |
TrajectoryControl | 60.55 ± 0.46 | 84.42 ± 1.58 | 331.76 ± 1.75 |
Trajectory Control + RL | 61.76 ± 0.43 | 86.52 ± 1.6 | 333.82 ± 1.7 |
Cooperative Control | 59.57 ± 0.43 | 83.41 ± 1.5 | 325.25 ± 1.71 |
Model | “Cologne-3” | “Cologne-8” | “Cologne-316” |
---|---|---|---|
IDQN | 57.9 ± 1.08 | 89.89 ± 2.07 | 332.15 ± 3.19 |
IPPO | 58.25 ± 1.01 | 89.51 ± 1.98 | 406.94 ± 7.92 |
A2C | 60.57 ± 0.9 | 95.15 ± 2.09 | 350.28 ± 8.32 |
MaxPWFlow | 55.01 ± 0.57 | 87.69 ± 2.03 | 327.08 ± 1.85 |
TrajectoryControl | 53.48 ± 0.7 | 85.57 ± 1.88 | 328.68 ± 1.72 |
Trajectory Control + RL | 54.5 ± 0.52 | 88.11 ± 1.83 | 331.83 ± 1.85 |
Cooperative Control | 52.12 ± 0.44 | 84.32 ± 1.89 | 323.96 ± 1.95 |
Model | “Cologne-3” | “Cologne-8” | “Cologne-316” |
---|---|---|---|
IDQN | 7.49 ± 0.82 | 4.46 ± 0.28 | 18.2 ± 4.52 |
IPPO | 7.57 ± 0.81 | 4.01 ± 0.14 | 101.45 ± 9.24 |
A2C | 8.9 ± 0.67 | 7.44 ± 0.31 | 29.12 ± 9.41 |
MaxPWFlow | 6.08 ± 0.36 | 3.18 ± 0.15 | 14.79 ± 0.75 |
TrajectoryControl | 3.65 ± 0.4 | 0.71 ± 0.18 | 11.15 ± 0.67 |
Trajectory Control + RL | 3.27 ± 0.34 | 0.86 ± 0.1 | 12.52 ± 1.46 |
Cooperative Control | 3.38 ± 0.37 | 0.62 ± 0.07 | 10.76 ± 0.87 |
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Agafonov, A.; Yumaganov, A.; Myasnikov, V. Cooperative Control for Signalized Intersections in Intelligent Connected Vehicle Environments. Mathematics 2023, 11, 1540. https://doi.org/10.3390/math11061540
Agafonov A, Yumaganov A, Myasnikov V. Cooperative Control for Signalized Intersections in Intelligent Connected Vehicle Environments. Mathematics. 2023; 11(6):1540. https://doi.org/10.3390/math11061540
Chicago/Turabian StyleAgafonov, Anton, Alexander Yumaganov, and Vladislav Myasnikov. 2023. "Cooperative Control for Signalized Intersections in Intelligent Connected Vehicle Environments" Mathematics 11, no. 6: 1540. https://doi.org/10.3390/math11061540
APA StyleAgafonov, A., Yumaganov, A., & Myasnikov, V. (2023). Cooperative Control for Signalized Intersections in Intelligent Connected Vehicle Environments. Mathematics, 11(6), 1540. https://doi.org/10.3390/math11061540