Learning inverse dynamics for redundant manipulator control

J. Cruz, D. Kulić, W. Owen
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引用次数: 12

Abstract

High performance control of robotic systems, including the new generation of humanoid, assistive and entertainment robots, requires adequate knowledge of the dynamics of the system. This can be problematic in the presence of modeling uncertainties as the performance of classical, modelbased controllers is highly dependant upon accurate knowledge of the system. In addition, future robotic systems such as humanoids are likely to be redundant, requiring a mechanism for redundancy resolution when performing lower degree-of-freedom tasks. In this paper, a learning approach to estimating the inverse dynamic equations is presented. Locally Weighted Projection Regression (LWPR) is used to learn the inverse dynamics of a manipulator in both joint and task space and the resulting controllers are used to drive a 3 and 4 DOF robot in simulation. The performance of the learning controllers is compared to a traditional model based control method and is also shown to be a viable control method for a redundant system.
冗余机械手控制的逆动力学学习
高性能控制的机器人系统,包括新一代的人形,辅助和娱乐机器人,需要足够的系统动力学知识。在存在建模不确定性的情况下,这可能是有问题的,因为经典的基于模型的控制器的性能高度依赖于对系统的准确了解。此外,未来的机器人系统(如人形机器人)可能是冗余的,在执行低自由度任务时需要一种冗余解决机制。本文提出了一种估计逆动力学方程的学习方法。利用局部加权投影回归(LWPR)学习机械臂在关节空间和任务空间的逆动力学特性,并利用得到的控制器分别驱动3自由度和4自由度机器人进行仿真。将学习控制器的性能与传统的基于模型的控制方法进行了比较,也证明了学习控制器是一种可行的冗余系统控制方法。
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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CiteScore
3.90
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0.00%
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