Abstract

Developing a human-like autonomous driving system has gained increasing amounts of attention from both technology companies and academic institutions, as it can improve the interpretability and acceptance of the autonomous system. Planning a safe and human-like obstacle avoidance trajectory is one of the critical issues for the development of autonomous vehicles (AVs). However, when designing automatic obstacle avoidance systems, few studies have focused on the obstacle avoidance characteristics of human drivers. This paper aims to develop an obstacle avoidance trajectory planning and trajectory tracking model for AVs that is consistent with the characteristics of human drivers’ obstacle avoidance trajectory. Therefore, a modified artificial potential field (APF) model was established by adding a road boundary repulsive potential field and ameliorating the obstacle repulsive potential field based on the traditional APF model. The model predictive control (MPC) algorithm was combined with the APF model to make the planning model satisfy the kinematic constraints of the vehicle. In addition, a human driver’s obstacle avoidance experiment was implemented based on a six-degree-of-freedom driving simulator equipped with multiple sensors to obtain the drivers’ operation characteristics and provide a basis for parameter confirmation of the planning model. Then, a linear time-varying MPC algorithm was employed to construct the trajectory tracking model. Finally, a co-simulation model based on CarSim/Simulink was established for off-line simulation testing, and the results indicated that the proposed trajectory planning controller and the trajectory tracking controller were more human-like under the premise of ensuring the safety and comfort of the obstacle avoidance operation, providing a foundation for the development of AVs.

Highlights

  • The vehicle active obstacle avoidance system is one of the core issues in the research of autonomous vehicle (AV) control [1,2]

  • model predictive control (MPC) algorithm were designed for the AV to realize the active obstacle avoidance function

  • The modified time-varying MPC algorithm were designed for the AV to realize the active obstacle avoidance

Read more

Summary

Introduction

The vehicle active obstacle avoidance system is one of the core issues in the research of autonomous vehicle (AV) control [1,2]. A safe and reasonable obstacle avoidance trajectory planning in real time based on accurate obstacle information perception through multiple sensors can promote trajectory tracking technology, which can effectively improve the intelligent level of the autonomous system and reduce the frequency of traffic accidents [3,4,5]. As one of the key technologies of an active obstacle avoidance system for vehicles, the local trajectory replanning refers to designing a safe trajectory that enables AVs to promptly and accurately bypass obstacles based on global path planning [6]. Under the premise of satisfying multiple constraints, the designed trajectory should comply with human drivers’ driving characteristics of obstacle avoidance. Active obstacle avoidance trajectory planning and control have become a difficulty in vehicle lateral control.

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call