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Implementation Of A Neural Network Based Visual Motor Control Algorithm For A 7 DOF Redundant Manipulator

机译:用于7 DOF冗余机械手的神经网络视觉电机控制算法的实现

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This paper deals with visual-motor coordination of a 7 dof robot manipulator for pick and place applications. Three issues are dealt with in this paper - finding a feasible inverse kinematic solution without using any orientation information, resolving redundancy at position level and finally maintaining the fidelity of information during clustering process thereby increasing accuracy of inverse kinematic solution. A 3-dimensional KSOM lattice is used to locally linearize the inverse kinematic relationship. The joint angle vector is divided into two groups and their effect on end-effector position is decoupled using a concept called function decomposition. It is shown that function decomposition leads to significant improvement in accuracy of inverse kinematic solution. However, this method yields a unique inverse kinematic solution for a given target point. A concept called sub-clustering in configuration space is suggested to preserve redundancy during learning process and redundancy is resolved at position level using several criteria. Even though the training is carried out off-line, the trained network is used online to compute the required joint angle vector in only one step. The accuracy attained is better than the current state of art. The experiment is implemented in real-time and the results are found to corroborate theoretical findings.
机译:本文涉及7 DOF机器人机械手的可视电动机协调,用于挑选和放置应用。三个问题都提出处理 - 找不使用任何方位信息,解决在位置级别冗余和最终聚类过程从而提高精度运动学逆解过程中保持信息的保真度可行的运动学逆解。三维ksom晶格用于局部线性化反向运动关系。关节角度向量被分成两组,并且它们对末端效应位置的效果使用称为函数分解的概念分离。结果表明,功能分解导致逆运动液精度的显着提高。然而,该方法产生针对给定目标点的独特逆运动液。建议在配置空间中称为子聚类的概念,以在学习过程中保留冗余,并且使用多个标准在位置级别解析冗余。即使训练在离线执行,训练有素的网络也用于在线使用,仅在一步中计算所需的关节角度向量。达到的准确性优于当前的现状。实验是实时实施的,并发现结果证实了理论发现。

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