A Lateral Control Method of Intelligent Vehicles Based on Shared Control
Abstract
:1. Introduction
- To achieve the flexible shared control, a model-based LQR controller and a driver’s intention-based fuzzy controller are designed. The weight of the two controllers can be adjusted according to the needs of designers.
- The co-simulation of MATLAB and Carsim is executed, and the lateral motion controller based on shared control can better track the prescribed trajectory with a permissible deviation.
2. T-FVDM
3. Shared Control
4. LQR Algorithm for Intelligent Vehicles
5. Driver Intent Recognition
6. Simulation Results
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
Symbol | Name | Units |
front axle wheelbase | m | |
rear axle wheelbase | m | |
L | total wheel base | m |
vehicle sideslip angle of the front wheel | deg | |
vehicle sideslip angle of the rear wheel | deg | |
longitudinal speed | km/h | |
lateral speed | km/h | |
yaw velocity | rad/s | |
yaw angle | deg | |
front wheel angle | deg | |
feedforward component of steering angle | deg | |
cornering stiffness of the front wheel | N/rad | |
cornering stiffness of the rear wheel | N/rad | |
m | vehicle quality | kg |
I | moment of inertia of the vehicle | kg |
turning radius of the planned path | m | |
yaw rate reference | ||
shared control input | ||
control command of the vehicle autopilot system | ||
driver’s control intention-based control input | ||
adjustable weight coefficient |
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NB | NM | NS | ZO | PS | PM | PB | ||
NB | NB | NB | NM | NM | NS | NS | ZO | |
NM | NB | NM | NM | NS | NS | ZO | PS | |
NS | NM | NM | NS | NS | ZO | PS | PS | |
ZO | NM | NS | NS | ZO | PS | PS | PM | |
PS | NS | NS | ZO | PS | PS | PM | PM | |
PM | NS | ZO | PS | PS | PM | PM | PB | |
PB | ZO | PS | PS | PM | PM | PB | PB |
Name (Unit) | Symbol | Numerical |
---|---|---|
vehicle quality (kg) | m | 1412 |
moment of inertia of the vehicle (kg) | I | 1536.7 |
cornering stiffness of the front wheel (N/rad) | −110,000 | |
cornering stiffness of the rear wheel (N/rad) | −110,000 | |
front wheelbase (m) | 1.015 | |
rear wheelbase (m) | 1.895 |
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Li, G.; Shang, P.; Zheng, C.; Sun, D. A Lateral Control Method of Intelligent Vehicles Based on Shared Control. Symmetry 2022, 14, 2447. https://doi.org/10.3390/sym14112447
Li G, Shang P, Zheng C, Sun D. A Lateral Control Method of Intelligent Vehicles Based on Shared Control. Symmetry. 2022; 14(11):2447. https://doi.org/10.3390/sym14112447
Chicago/Turabian StyleLi, Gang, Pengfei Shang, Changbing Zheng, and Dehui Sun. 2022. "A Lateral Control Method of Intelligent Vehicles Based on Shared Control" Symmetry 14, no. 11: 2447. https://doi.org/10.3390/sym14112447
APA StyleLi, G., Shang, P., Zheng, C., & Sun, D. (2022). A Lateral Control Method of Intelligent Vehicles Based on Shared Control. Symmetry, 14(11), 2447. https://doi.org/10.3390/sym14112447