Research on the local path planning of an orchard mowing robot based on an elliptic repulsion scope boundary constraint potential field method

Front Plant Sci. 2023 Jul 21:14:1184352. doi: 10.3389/fpls.2023.1184352. eCollection 2023.

Abstract

In orchard scenes, the complex terrain environment will affect the operational safety of mowing robots. For this reason, this paper proposes an improved local path planning algorithm for an artificial potential field, which introduces the scope of an elliptic repulsion potential field as the boundary potential field. The potential field function adopts an improved variable polynomial and adds a distance factor, which effectively solves the problems of unreachable targets and local minima. In addition, the scope of the repulsion potential field is changed to an ellipse, and a fruit tree boundary potential field is added, which effectively reduces the environmental potential field complexity, enables the robot to avoid obstacles in advance without crossing the fruit tree boundary, and improves the safety of the robot when working independently. The path length planned by the improved algorithm is 6.78% shorter than that of the traditional artificial potential method, The experimental results show that the path planned using the improved algorithm is shorter, smoother and has good obstacle avoidance ability.

Keywords: artificial potential field; boundary potential field; local minimum; mowing robot; path planning.

Grants and funding

This work was supported by the Guangdong Laboratory for Lingnan Modern Agriculture under Grant NZ2021040 NZ2021009, the China Agriculture Research System under Grant CARS-32, the Special Project of Rural Vitalization Strategy of Guangdong Academy of Agricultural Sciences under Grant TS-1-4, and the Guangdong Provincial Modern Agricultural Industry Technology System under Grant 2021KJ123.