Session: DAC-09-01-Design for Resilience and Failure Recovery
Paper Number: 89615
89615 - Analytic Velocity Obstacle for Efficient Collision Avoidance
Velocity obstacle is one of popular reactive navigation algorithms for path planning of autonomous agents. The collision-free property can be guaranteed if the agent is able to choose a velocity outside the velocity obstacle region under the assumption that obstacles maintain a constant velocity within the control cycle time of the agent. To date, selection of the optimal velocity relies on either sampling or optimization approaches. The sampling approach can maintain the same amount of computation cost but may miss feasible solutions under collision risks with insufficient number of samples. The optimization approach such as the linear programming demands for convexity of the constraints in the velocity space which may not be satisfied considering non-holonomic agents. In addition, the algorithm has varying computation demand depending on the navigation situation. This paper proposes an analytic approach for choosing a candidate velocity rather than relying on the sampling or optimization approaches. The analytic approach can significantly reduce computation cost without sacrificing the performance. Agents with both holonomic and non-holonomic constraints are considered to demonstrate the performance and efficiency of the proposed approach. Extensive comparison studies with static, non-reactive, and reactive moving obstacles demonstrate that the analytical velocity obstacle is computationally much more efficient than the optimization based approach and performs better than the sampling based approach. Major video results of this paper can be accessed through the link: https://www.youtube.com/watch?v=ze1THyc5lug.
Presenting Author: Elnaz Asghari Torkamani Rutgers
Presenting Author Biography: phd student at Rutgers
Authors:
Zhimin Xi Rutgers UniversityElnaz Asghari Torkamani Rutgers
Analytic Velocity Obstacle for Efficient Collision Avoidance
Paper Type
Technical Paper Publication