Minimum set of feedback sensors for high performance decentralized cooperative force control of redundant manipulators

D. Navarro-Alarcon, Vicente Parra‐Vega, E. O. Díaz
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引用次数: 4

Abstract

Manipulation tasks by humans require a variety of biological sensors, from visual, kinesthetic, contact, pressure, temperature, etc., as well as lots of involved degrees of freedom, conforming a highly redundant biomechanical system. Besides such sensorpsilas network and the unmatched brain power of humans to carry out this task, biomechanical redundancy is a key issue to solve whether we want to transfer this ability on mechanical robots. A much simpler version of a human manipulation task is a cooperative robotic task, which has been mastered by experimental robots at some degree. In this case, the question is whether robots can achieve high performance (fast, accurate and robust tracking without complete knowledge of system dynamics) for this cooperative task using only sensors based on the Newtonian dynamics (encoders, tachometers and force sensors). In this paper, we find a positive answer to this question provided that precise redundancy resolution is introduced, otherwise an intelligent sensor networks is required. Simulation results of representative cooperative tasks employing 7 degrees of freedom manipulators illustrate this concept and further discussions are presented.
基于最小反馈传感器的冗余机械手高性能分散协同力控制
人类的操作任务需要各种各样的生物传感器,从视觉、动觉、接触、压力、温度等,以及许多涉及的自由度,符合一个高度冗余的生物力学系统。除了这样的传感器网络和人类无法比拟的脑力来完成这项任务外,我们是否想要将这种能力转移到机械机器人上,生物力学冗余是一个关键问题。人类操作任务的一个更简单的版本是协作机器人任务,这在某种程度上已经被实验机器人所掌握。在这种情况下,问题是机器人能否在不完全了解系统动力学的情况下,仅使用基于牛顿动力学的传感器(编码器、转速表和力传感器)来完成这项合作任务,实现高性能(快速、准确和稳健的跟踪)。在本文中,我们找到了一个肯定的答案,只要引入精确的冗余分辨率,否则就需要智能传感器网络。采用7自由度机械臂的典型协作任务的仿真结果说明了这一概念,并进行了进一步的讨论。
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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