Gao, Yangyan, Gordon, Timothy and Lidberg, Matthias (2019) Optimal control of brakes and steering for autonomous collision avoidance using modified Hamiltonian algorithm. Vehicle System Dynamics, 57 (8). pp. 1224-1240. ISSN 0042-3114
Full content URL: https://doi.org/10.1080/00423114.2018.1563706
Documents |
|
![]() |
PDF
2019 Special Issue ACA.pdf - Whole Document 652kB |
Item Type: | Article |
---|---|
Item Status: | Live Archive |
Abstract
This paper considers the problem of collision avoidance for road vehicles, operating at the limits of friction. A two-level modelling and control methodology is proposed, with the upper level using a friction-limited particle model for motion planning, and the lower level using a nonlinear 3DOF model for optimal control allocation. Motion planning adopts a two-phase approach: the first phase is to avoid the obstacle, the second is to recover lane keeping with minimal additional lateral deviation. This methodology differs from the more standard approach of path-planning/path-following, as there is no explicit path reference used; the control reference is a target acceleration vector which simultaneously induces changes in direction and speed. The lower level control distributes vehicle targets to the brake and steer actuators via a new and efficient method, the Modified Hamiltonian Algorithm (MHA). MHA balances CG acceleration targets with yaw moment tracking to preserve lateral stability. A nonlinear 7DOF two-track vehicle model confirms the overall validity of this novel methodology for collision avoidance.
Keywords: | Vehicle dynamics, vehicle control, collision avoidance, active safety, stability control |
---|---|
Subjects: | H Engineering > H660 Control Systems H Engineering > H300 Mechanical Engineering H Engineering > H331 Road Vehicle Engineering |
Divisions: | College of Science > School of Engineering |
ID Code: | 34912 |
Deposited On: | 05 Mar 2019 16:38 |
Repository Staff Only: item control page