A Path Planning Method Based on Artificial Potential Field Improved by Potential Flow Theory
Abstract
The ability of the avoidance to movable obstacle is inefficient in robot path planning using traditional artificial potential field. An improved potential field model based on potential flow theory is proposed to achieve high efficient mobile robot path planning. The Zhukovsky transformation is used to optimize the configuration and function of the potential model to satisfy the reliability of avoiding mobile obstacle, and a further investigation of the vortex is applied to prevent the local minima. The application of the improved potential field model to multi-obstacle potential superposition is discussed to verify the effectiveness of the algorithm. The simulation results indicate that the improved method is able to avoid mobile obstacles and prevent local minima efficiently.
Keywords
Potential flow theory, Path planning, Artificial potential field
DOI
10.12783/dtcse/cst2017/12563
10.12783/dtcse/cst2017/12563
Refbacks
- There are currently no refbacks.