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首页> 外文期刊>IEEE Robotics and Automation Letters >Robotic Skins That Learn to Control Passive Structures
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Robotic Skins That Learn to Control Passive Structures

机译:学会控制被动结构的机器人皮肤

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摘要

Robotic skins incorporate sensors and actuators into stretchable and flexible planar substrates. Wrapping a robotic skin around a passive, deformable structure imparts controllable motion onto that structure, rendering it an active robotic system. Robotic skins can be applied to the surface of a structure, then removed and re-applied to the surface of another structure. This reconfigurability enables use of the same robotic skin to achieve multiple motions, which depend on the interaction between the skin and its host structure. Considering the broad range of use cases for robotic skins in resource-limited environments, it may not be possible to pre-characterize this skin-structure interaction for all potential systems. Therefore, it is advantageous to have systems that can learn their models in situ, which saves considerable time in realizing a functional system. Previously, we have shown that robotic skins can be used to estimate state and stiffness of the underlying passive structure they are attached to. In this letter, we demonstrate how this ability to measure state and stiffness can be used to learn model parameters in situ for feedforward control, and show how feedback control can be implemented simultaneously with the same system. We further show how this learning is expandable to multi-segment systems and will compensate for gravitational effects by adjusting model parameters.
机译:机器人皮肤将传感器和执行器整合到可拉伸的柔性平面基材中。将机器人皮肤包裹在被动的,可变形的结构上可将可控制的运动施加到该结构上,从而使其成为主动的机器人系统。可以将机器人皮肤应用到一个结构的表面,然后将其移除并重新应用到另一个结构的表面。这种可重新配置性使得可以使用相同的机器人皮肤来实现多种运动,这取决于皮肤与其宿主结构之间的相互作用。考虑到在资源有限的环境中机器人皮肤的使用案例范围很广,因此可能无法为所有潜在系统预先表征这种皮肤结构交互作用。因此,具有能够就地学习其模型的系统是有利的,这节省了实现功能系统的大量时间。以前,我们已经证明了机器人皮肤可以用来估计其所附着的基础无源结构的状态和刚度。在这封信中,我们演示了如何使用这种状态和刚度测量能力来就地学习用于前馈控制的模型参数,并展示如何在同一系统上同时实现反馈控制。我们进一步展示了这种学习如何扩展到多段系统,并将通过调整模型参数来补偿重力影响。

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