Optimized Dynamic Collision Avoidance Algorithm for USV Path Planning

Sensors (Basel). 2023 May 8;23(9):4567. doi: 10.3390/s23094567.

Abstract

Ship collision avoidance is a complex process that is influenced by numerous factors. In this study, we propose a novel method called the Optimal Collision Avoidance Point (OCAP) for unmanned surface vehicles (USVs) to determine when to take appropriate actions to avoid collisions. The approach combines a model that accounts for the two degrees of freedom in USV dynamics with a velocity obstacle method for obstacle detection and avoidance. The method calculates the change in the USV's navigation state based on the critical condition of collision avoidance. First, the coordinates of the optimal collision avoidance point in the current ship encounter state are calculated based on the relative velocities and kinematic parameters of the USV and obstacles. Then, the increments of the vessel's linear velocity and heading angle that can reach the optimal collision avoidance point are set as a constraint for dynamic window sampling. Finally, the algorithm evaluates the probabilities of collision hazards for trajectories that satisfy the critical condition and uses the resulting collision avoidance probability value as a criterion for course assessment. The resulting collision avoidance algorithm is optimized for USV maneuverability and is capable of handling multiple moving obstacles in real-time. Experimental results show that the OCAP algorithm has higher and more robust path-finding efficiency than the other two algorithms when the dynamic obstacle density is higher.

Keywords: collision avoidance; optimal collision avoidance point; trajectory optimization; velocity obstacle method.

Grants and funding

This research was funded by the Program for Scientific Research Startup Funds of Guangdong Ocean University, grant number: R17015; Zhanjiang Scientific and Technological Research Topics, grant number: 2022B01103; and the National College Students Innovation and Entrepreneurship Training Program of Guangdong Province, grant number: S202210566074.