基于学习的正交并联机器人机构正运动学估计。

Jingzong Zhou, Yuhan Zhu, Xiaobin Zhang, Sunil Agrawal, Konstantinos Karydis
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引用次数: 0

摘要

本文介绍了一种三维并联机器人,该机器人由三个相同的五自由度链连接到一个圆形支架末端执行器上,旨在作为颈椎病患者的辅助装置。系统的逆运动学采用解析求解,正运动学采用基于学习的方法求解。本文考虑的方法包括基于Koopman算子的方法和基于神经网络的方法。任务是预测末端执行器轨迹的位置和方向。用于训练这些方法的数据集是基于通过逆运动学导出的解析解。所开发的机器人通过仿真和物理硬件实验验证了这些方法。研究结果验证了采用基于学习的方法研究难以解析解决的并联机构正运动学问题的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-Based Estimation of Forward Kinematics for an Orthotic Parallel Robotic Mechanism.

This paper introduces a 3D parallel robot with three identical five-degree-of-freedom chains connected to a circular brace end-effector, aimed to serve as an assistive device for patients with cervical spondylosis. The inverse kinematics of the system is solved analytically, whereas learning-based methods are deployed to solve the forward kinematics. The methods considered herein include a Koopman operator-based approach as well as a neural network-based approach. The task is to predict the position and orientation of end-effector trajectories. The dataset used to train these methods is based on the analytical solutions derived via inverse kinematics. The methods are tested both in simulation and via physical hard-ware experiments with the developed robot. Results validate the suitability of deploying learning-based methods for studying parallel mechanism forward kinematics that are generally hard to resolve analytically.

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