运动学
串联机械手
机械手
计算机科学
操纵器(设备)
控制工程
人工智能
控制理论(社会学)
机器人
工程类
并联机械手
控制(管理)
物理
经典力学
作者
Marco Ojer,Ander Etxezarreta,Gorka Kortaberria,Brahim Ahmed,J. Flores,Javier Hernandez,Elena Lazkano,Xiao Lin
出处
期刊:Robotica
[Cambridge University Press]
日期:2024-09-19
卷期号:: 1-19
标识
DOI:10.1017/s026357472400136x
摘要
Abstract In this study, we present a hybrid kinematic modeling approach for serial robotic manipulators, which offers improved accuracy compared to conventional methods. Our method integrates the geometric properties of the robot with ground truth data, resulting in enhanced modeling precision. The proposed forward kinematic model combines classical kinematic modeling techniques with neural networks trained on accurate ground truth data. This fusion enables us to minimize modeling errors effectively. In order to address the inverse kinematic problem, we utilize the forward hybrid model as feedback within a non-linear optimization process. Unlike previous works, our formulation incorporates the rotational component of the end effector, which is beneficial for applications involving orientation, such as inspection tasks. Furthermore, our inverse kinematic strategy can handle multiple possible solutions. Through our research, we demonstrate the effectiveness of the hybrid models as a high-accuracy kinematic modeling strategy, surpassing the performance of traditional physical models in terms of positioning accuracy.
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