基于群优化的六自由度开链机械臂逆运动学回旋算法

Okan Duymazlar, D. Engin
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引用次数: 0

摘要

本研究提出了一种可行的群体智能算法,用于计算工业和医疗应用中经常使用的6自由度工业机器人手臂的运动学逆解。由于其递归结构,该算法被命名为回旋镖算法。该算法的目标是在不增加位置和方向误差的情况下,将计算时间减少到可行的水平。为了减少群优化算法的计算时间,提高算法的可行性,采用一种替代DH方法定义机械臂运动构型的方法。通过算例运动学逆分析,说明了所提出的替代定义方法在减少计算时间方面的效果。将该算法与包含姿态的3种不同粒子群算法(PSO)在6自由度机械臂逆解中进行了比较。通过对PUMA 560和ABB IRB120机械手工作空间中随机选取的20个位置和姿态数据进行对比仿真研究,以衡量算法的性能。利用仿真结果得到的误差值和计算时间值,采用Wilcoxon非参数统计检验对算法进行了比较。从计算时间、定位精度和寻解率等方面对仿真结果进行分析,发现回旋镖算法比其他粒子群算法更可行。利用ABB IRB120 6自由度机械臂对仿真结果进行了验证,并进行了物理应用。仿真研究和实验研究表明,所提出的算法是求解时间紧迫应用的一种有效方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Boomerang Algorithm based on Swarm Optimization for Inverse Kinematics of 6 DOF Open Chain Manipulators
: In this study, a feasible swarm intelligence algorithm is proposed that computes the inverse kinematics solution of 6 degree of freedom (DOF) industrial robot arms, which are frequently used in industrial and medical applications. The proposed algorithm is named as Boomerang algorithm due to its recursive structure. The proposed algorithm aims to reduce the computation time to feasible levels without increasing the position and orientation errors. In order to reduce the computational time in swarm optimization algorithms and increase feasibility, an alternative definition method was used instead of the DH method in defining the robot arm kinematic configuration. The effect of the proposed alternative definition method in reducing the computational time is presented through example inverse kinematic analysis. The proposed algorithm was compared with 3 different particle swarm optimization (PSO) variants that include orientation in the inverse kinematic solution of 6 DOF robot arms. Comparative simulation studies were carried out with 20 randomly selected position and orientation data from the workspaces of PUMA 560 and ABB IRB120 manipulators to measure performance of the algorithms. Using the error and computation time values obtained from the simulation results, the algorithms are compared using the Wilcoxon nonparametric statistical test. When the simulation results are analysed by considering the calculation time, positioning accuracy and solution finding rates, it is seen that the Boomerang algorithm is more feasible than the other PSO variants. Verification of the simulation results, and the physical applications were carried out with the ABB IRB120 6 DOF robot arm. Simulation studies and experimental studies showed that the proposed algorithm may be an efficient method for inverse kinematics of time-critical applications.
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