Learning inverse kinematic solutions of redundant manipulators using multiple internal models

Hari Teja Kalidindi, S. Shah
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引用次数: 1

Abstract

Biological systems are superior compared to robotic systems in their ability to adapt to new situations very quickly. Hence, it would be advantageous to take insights from the architecture of sensory-motor maps in designing controllers for robotic systems. Any movement can be represented either in task space or joint space of a given manipulator. Planning and control in task space essentially reduces the computational complexity compared to joint-space approaches due to fewer dimensions involved. Experimental evidences [1], point towards task space representation of motion in the brain. The transformation of these task space representations into joint space is however not trivial, as it forms an ill-posed problem. This constitutes the inverse kinematics (IK) problem for a given manipulator. We propose to use multiple paired forward and inverse models approach described in the following sections, to obtain multiple IK solutions.
利用多内模型学习冗余机械手的运动学逆解
与机器人系统相比,生物系统在快速适应新情况的能力方面更胜一筹。因此,在设计机器人系统的控制器时,从感觉-运动地图的结构中获得见解将是有利的。任何运动都可以在给定机械手的任务空间或关节空间中表示。与联合空间方法相比,任务空间中的规划和控制由于涉及的维数较少,本质上降低了计算复杂度。实验证据[1]指向大脑中运动的任务空间表征。然而,将这些任务空间表示转换为关节空间并不简单,因为它形成了一个不适定问题。这就构成了给定机械手的逆运动学(IK)问题。我们建议使用以下章节中描述的多个配对正向和逆模型方法来获得多个IK解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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