Affiliation:
1. Nanjing University of Science and Technology, School of Mech
Abstract
<div class="section abstract"><div class="htmlview paragraph">In order to improve the obstacle avoidance ability of autonomous vehicles in
complex traffic environments, speed planning, path planning, and tracking
control are integrated into one optimization problem. An integrated vehicle
trajectory planning and tracking control method combining a
pseudo-time-to-collision (PTC) risk assessment model and model predictive
control (MPC) is proposed. First, a risk assessment model with PTC probability
is proposed by considering the differentiation of the risk on the relative
motion states of the self and front vehicles, and the obstacle vehicles in the
lateral and longitudinal directions. Then, a three-degrees-of-freedom vehicle
dynamics model is established, and the MPC cost function and constraints are
constructed from the perspective of the road environment as well as the
stability and comfort of the ego-vehicle, combined with the PTC risk assessment
model to optimize the control. Finally, a complex multi-vehicle obstacle
avoidance scenario is built to analyze the PTC risk field. Then, three typical
obstacle avoidance scenarios are built and analyzed in comparison with a layered
control approach. The results show that the method is able to plan a more
accurate and stable driving route than layered control, which guarantees the
safety and comfort of the vehicle. The proposed PTC risk assessment model is
applicable to the vehicle trajectory planning problem with accurate risk
assessment in complex road environments, which improves the safety and
adaptability of autonomous vehicles in complex road environments.</div></div>