基于人工皮肤神经学习的机械臂触控导纳控制

Ganna Pugach, A. Melnyk, O. Tolochko, Alexandre Pitti, P. Gaussier
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引用次数: 19

摘要

触觉感知是类人机器人与人类进行身体和社会互动的重要模型。我们提出了一种神经控制器,该控制器以人造皮肤的触觉信息作为输入,以估计的转矩作为输出,用于导纳控制回路参考,可以适应机械臂在四个方向上的顺应性。这种适应是以一种自组织的方式完成的,当我们触摸它时,神经系统首先学习触觉地图的拓扑结构,并将一个扭矩矢量关联到相应的方向上移动手臂。人造皮肤基于大面积压阻触觉装置(未网格),在接触存在时改变其电学特性。我们的研究结果显示,即使在无法检测到扭矩(施加在关节附近的力)的情况下,通过在所有触觉表面上的软触摸,在四个方向和派生的组合矢量上控制机器人手臂(2个自由度)的自校准。神经系统将每个触觉感受区与一个方向和正确的力联系起来。结果表明,触觉-运动学习比机械臂导纳控制具有更好的交互实验效果。我们的方法可以在未来用于与人类伙伴的类人自适应交互。
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Touch-based admittance control of a robotic arm using neural learning of an artificial skin
Touch perception is an important sense to model in humanoid robots to interact physically and socially with humans. We present a neural controller that can adapt the compliance of the robot arm in four directions using as input the tactile information from an artificial skin and as output the estimated torque for admittance control-loop reference. This adaption is done in a self-organized fashion with a neural system that learns first the topology of the tactile map when we touch it and associates a torque vector to move the arm in the corresponding direction. The artificial skin is based on a large area piezoresistive tactile device (ungridded) that changes its electrical properties in the presence of the contact. Our results show the self-calibration of a robotic arm (2 degrees of freedom) controlled in the four directions and derived combination vectors, by the soft touch on all the tactile surface, even when the torque is not detectable (force applied near the joint). The neural system associates each tactile receptive field with one direction and the correct force. We show that the tactile-motor learning gives better interactive experiments than the admittance control of the robotic arm only. Our method can be used in the future for humanoid adaptive interaction with a human partner.
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