基于基础力-扭矩传感器的关节扭矩估计促进人机物理交互(pHRI)

S. Das, M. Saadatzi, Shamsudeen Abubakar, D. Popa
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引用次数: 6

摘要

为了检测物理人机交互(pHRI)过程中的力,力-扭矩传感器(FTS)通常安装在机器人的手腕上。或者,协作机器人可以通过关节上的扭矩传感来测量相互作用力。另一个发展安全和互动机器人的方向是给它们覆盖上内置触觉传感器的智能皮肤。在本文中,我们探索了另一种使用放置在机械臂底部的FTS来促进pHRI的想法。由此产生的基础力-扭矩传感器(BFTS)能够感知施加在机器人身体任何地方的外力和扭矩。我们制定了一个无模型的在线学习控制器,从BFTS数据估计机器人上的相互作用力。该控制器不需要机器人动态模型即可运行,并具有李亚普诺夫稳定性保证。利用实时控制的自定义六自由度机械臂进行实验,验证了该方案的均方估计误差。结果表明,各关节处的实测扭矩与估计值基本一致。在未来,该控制器可用于非协作机器人或机器人机械手的自适应pHRI。
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Joint Torque Estimation using Base Force-Torque Sensor to Facilitate Physical Human-Robot Interaction (pHRI)
To detect forces during physical Human-Robot Interaction (pHRI), a force-torque sensor (FTS) is generally attached at the wrist of a robot manipulator. Alternatively, collaborative robots can measure interaction forces via torque sensing at their joints. Yet another direction toward safe and interactive robots is to cover them in smart skins with embedded tactile sensors. In this paper, we explore another idea to facilitate pHRI using an FTS placed at the base of a robot arm. The resulting base force-torque sensor (BFTS) is able to sense external forces and torques applied anywhere along the robot body. We formulate a model-free, on-line learning controller to estimate the interaction forces on the robot from the BFTS data. The controller does not require a robot dynamic model to operate, and has Lyapunov stability guarantees. We conduct experiments to validate the mean-square estimation error of our scheme using a custom 6-DOF robotic arm under real-time control. Results show that the measured torques at individual joints closely follow the estimated values. In the future, this controller can be used for adaptive pHRI with non-collaborative robots or robot manipulators.
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