Safflower Picking Trajectory Planning Strategy Based on an Ant Colony Genetic Fusion Algorithm

Author:

Guo Hui12,Qiu Zhaoxin12,Gao Guomin12,Wu Tianlun12,Chen Haiyang12,Wang Xiang12

Affiliation:

1. College of Mechanical and Electrical Engineering, Xinjiang Agricultural University, Urumqi 830052, China

2. Xinjiang Key Laboratory of Intelligent Agricultural Equipment, Urumqi 830052, China

Abstract

In order to solve the problem of the low pickup efficiency of the robotic arm when harvesting safflower filaments, we established a pickup trajectory cycle and an improved velocity profile model for the harvest of safflower filaments according to the growth characteristics of safflower. Bezier curves were utilized to optimize the picking trajectory, mitigating the abrupt changes produced by the delta mechanism during operation. Furthermore, to overcome the slow convergence speed and the tendency of the ant colony algorithm to fall into local optima, a safflower harvesting trajectory planning method based on an ant colony genetic algorithm is proposed. This method includes enhancements through an adaptive adjustment mechanism, pheromone limitation, and the integration of optimized parameters from genetic algorithms. An optimization model with working time as the objective function was established in the MATLAB environment, and simulation experiments were conducted to optimize the trajectory using the designed ant colony genetic algorithm. The simulation results show that, compared to the basic ant colony algorithm, the path length with the ant colony genetic algorithm is reduced by 1.33% to 7.85%, and its convergence stability significantly surpasses that of the basic ant colony algorithm. Field tests demonstrate that, while maintaining an S-curve velocity, the ant colony genetic algorithm reduces the harvesting time by 28.25% to 35.18% compared to random harvesting and by 6.34% to 6.81% compared to the basic ant colony algorithm, significantly enhancing the picking efficiency of the safflower-harvesting robotic arm.

Funder

the Natural Science Foundation of Xinjiang Uygur Autonomous Region

the Xinjiang Agricultural University Graduate Student Research and Innovation Project

Publisher

MDPI AG

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