4.7 Article

Human-Machine Cooperative Trajectory Planning and Tracking for Safe Automated Driving

Journal

IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS
Volume 23, Issue 8, Pages 12050-12063

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2021.3109596

Keywords

Vehicles; Man-machine systems; Automation; Trajectory planning; Trajectory; Safety; Planning; Human-machine cooperation; trajectory planning; HM-RRT; tracking control; automated driving

Funding

  1. A*STAR National Robotics Programme [SERC 1922500046]
  2. Alibaba Group through the Alibaba Innovative Research Program
  3. Alibaba-Nanyang Technological University Joint Research Institute [AN-GC-2020-012]
  4. Nanyang Technological University, Singapore, through the Start-Up Grant of Nanyang Assistant Professorship (SUG-NAP) [M4082268.050]
  5. State Key Laboratory of Automotive Safety and Energy [KF2021]

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This paper proposes a human-machine cooperative trajectory planning and tracking control approach for automated vehicles, which assesses driver behavior risks and utilizes the new HM-RRT algorithm for path planning to ensure the safety, stability, and smoothness of the human-vehicle system.
This paper investigates a human-machine cooperative trajectory planning and tracking control approach for automated vehicles. The proposed method is developed based on a novel algorithm of cooperative human-machine rapidly-exploring random (HM-RRT) for path planning, together with the risk assessment of driver behavior. First, the driver's behaviour is assessed according to the information of the predicted vehicle trajectory, the identified safe driving area and the driving risks evaluated in both lateral and longitudinal directions. Based on the driver's expected driving task, when driving risks are identified by real-time assessment, then the human-machine cooperation is activated during trajectory planning. By HM-RRT, the newly developed safety assurance mechanism for path planning, the cooperative trajectory is then generated, which incorporates the driver's desire and actions and automation's corrective actions, to ensure the safety, stability and smoothness of the human-vehicle system. The simulation and experimental results show that the proposed HM-RRT algorithm can effectively improve the convergence rate and reduce the computation load, comparing to the conventional method. Beyond this, the proposed human-machine cooperation approach is able to simultaneously ensure the safety, stability and smoothness of the vehicle and largely reduce human-machine conflicts in real-time applications, demonstrating its feasibility and effectiveness.

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