A multi-step Genetic Algorithm to solve the inverse kinematics problem of the redundant open chain manipulators

A. Mehrafsa, A. Sokhandan, A. Ghanbari, V. Azimirad
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引用次数: 4

Abstract

This paper presents a new algorithm regarding the inverse kinematics problem of the redundant open-chain manipulators, based on Simple Genetic Algorithm (SGA). The proposed method could be applied for any kind of manipulator configuration independent from number of joints. This method formulates the inverse kinematics problem as an optimization algorithm, solves it using the SGA in two steps and can be extended further. The advantage of splitting the procedure can be beneficial when procedures execute in parallel. At the first step, the SGA looks for successive joint values set for a given manipulator as candidate joints set, and at the second one, SGA would find the optimum joint values. Therefore, the manipulator's end-effector would be smoothly moved from an initial location to its target with minimum joints displacement while avoiding singularity. Simulation studies show that the proposed method represents an efficient approach to solve the inverse kinematics problem of open-chain manipulators with any degree of redundancy.
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一种多步遗传算法求解冗余开链机械手的运动学逆问题
提出了一种基于简单遗传算法(SGA)的冗余开链机器人运动学逆问题求解算法。该方法适用于任意类型的机械臂构型,且不受关节个数的影响。该方法将运动学逆问题表述为一种优化算法,利用SGA分两步求解,并可进一步推广。当过程并行执行时,拆分过程的优势是有益的。在第一步中,SGA寻找给定机械臂的连续关节值集作为候选关节集,在第二步中,SGA寻找最优关节值。因此,机械臂末端执行器可以以最小的关节位移平滑地从初始位置移动到目标位置,同时避免奇异性。仿真研究表明,该方法是求解任意冗余度开链机械臂逆运动学问题的有效方法。
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