Trajectory Tracking Control for Intelligent Vehicles Based on Cut-In Behavior Prediction
Abstract
:1. Introduction
- (1)
- Three driving scenarios are divided according to the behavior of the adjacent vehicle, and the cut-in intention is recognized by considering similarity between the path of the adjacent vehicle and the center line of the lane where it is located. After cut-in intention recognition, the trajectory prediction method based on the driver preview model for the cut-in vehicle is proposed, which is used as a reference for subject vehicle to realize the coordinated control between the subject vehicle and the cut-in vehicle;
- (2)
- The safety distance model of the cut-in vehicle is proposed. Comprehensively, considering the movement state of the vehicle, the preceding vehicle ahead in the lane and the cut-in vehicle, the safety distance model of the cut-in vehicle is established, which performs the conversion of the management driving scenarios, so that the vehicle control can be taken appropriately when the cut-in vehicle changes lanes;
- (3)
- Facing the cut-in vehicles in different driving scenarios, cut-in prediction trajectory is integrated into a trajectory planning control method based on MPC. In the process of controlling the subject vehicle, the cut-in behavior of the adjacent vehicle is predicted and considered in advance, while ensuring the safety and driving comfort of the subject vehicle. At the same time, the subject vehicle is controlled on the optimal trajectory.
2. Cut-In Scenarios Classification and Cut-In Behavior Prediction
2.1. Cut-In Scenarios Classification
2.2. Cut-In Intention Recognition
2.3. Cut-In Vehicle Trajectory Prediction
3. The Cut-In Vehicle Safety Distance Model
3.1. The Safe Distance Model of the Cut-In Vehicle
3.1.1. The Minimum Longitudinal Safety Distance between the Cut-In Vehicle L and the Preceding Vehicle P
3.1.2. The Minimum Longitudinal Safety Distance between the Cut-In Vehicle L and the Subject Vehicle H
4. Trajectory Tracking Control
4.1. Subject Vehicle Model
4.2. Reference Trajectory Generation
4.2.1. Driving Scenario 1
4.2.2. Driving Scenario 2
4.2.3. Driving Scenario 3
4.3. Main Vehicle Objective Function and Constraint Establishment
5. Simulation Results and Analysis
5.1. Driving Scenario 1
5.2. Driving Scenario 2
5.3. Driving Scenario 3
5.4. Method Application Evaluation
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Left Lane Change | Right Lane Change | |
---|---|---|
Detection | 100% | 100% |
Mean time before detection | 1.21 s | 1.18 s |
Parameter | Value |
---|---|
Range Accuracy (m) | ±0.02 |
Detection Sensitivity Range (m) | 120 |
Azimuth Field of View (°) | 140 |
Angle Accuracy (deg) | ±0.3 |
Doppler Accuracy (m/s) | ±0.02 |
Variables | Value |
---|---|
Simulation termination time (s) | 100 |
Simulation step (s) | 0.02 |
Actual simulation time (s) | 54.67 |
RAM (MB) | 9286 |
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Chen, C.; Guo, J.; Guo, C.; Li, X.; Chen, C. Trajectory Tracking Control for Intelligent Vehicles Based on Cut-In Behavior Prediction. Electronics 2021, 10, 2932. https://doi.org/10.3390/electronics10232932
Chen C, Guo J, Guo C, Li X, Chen C. Trajectory Tracking Control for Intelligent Vehicles Based on Cut-In Behavior Prediction. Electronics. 2021; 10(23):2932. https://doi.org/10.3390/electronics10232932
Chicago/Turabian StyleChen, Chongpu, Jianhua Guo, Chong Guo, Xiaohan Li, and Chaoyi Chen. 2021. "Trajectory Tracking Control for Intelligent Vehicles Based on Cut-In Behavior Prediction" Electronics 10, no. 23: 2932. https://doi.org/10.3390/electronics10232932
APA StyleChen, C., Guo, J., Guo, C., Li, X., & Chen, C. (2021). Trajectory Tracking Control for Intelligent Vehicles Based on Cut-In Behavior Prediction. Electronics, 10(23), 2932. https://doi.org/10.3390/electronics10232932