An ACO-MPC Framework for Energy-Efficient and Collision-Free Path Planning in Autonomous Maritime Navigation
By: Yaoze Liu , Zhen Tian , Qifan Zhou and more
Potential Business Impact:
Helps self-driving cars safely change lanes on ramps.
Automated driving on ramps presents significant challenges due to the need to balance both safety and efficiency during lane changes. This paper proposes an integrated planner for automated vehicles (AVs) on ramps, utilizing an unsatisfactory level metric for efficiency and arrow-cluster-based sampling for safety. The planner identifies optimal times for the AV to change lanes, taking into account the vehicle's velocity as a key factor in efficiency. Additionally, the integrated planner employs arrow-cluster-based sampling to evaluate collision risks and select an optimal lane-changing curve. Extensive simulations were conducted in a ramp scenario to verify the planner's efficient and safe performance. The results demonstrate that the proposed planner can effectively select an appropriate lane-changing time point and a safe lane-changing curve for AVs, without incurring any collisions during the maneuver.
Similar Papers
Efficient and Safe Planner for Automated Driving on Ramps Considering Unsatisfication
Robotics
Helps self-driving cars merge safely and fast.
Safety-Oriented Dynamic Path Planning for Automated Vehicles
Robotics
Helps self-driving cars avoid moving obstacles safely.
Optimal Trajectory Planning with Collision Avoidance for Autonomous Vehicle Maneuvering
Systems and Control
Helps cars park themselves perfectly and safely.