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arxiv 2109.07112 v3 pith:O5JR3BY6 submitted 2021-09-15 cs.RO cs.SYeess.SY

Learning Friction Model for Magnet-actuated Tethered Capsule Robot

classification cs.RO cs.SYeess.SY
keywords capsulefrictionrobotcontrolforcemagnet-actuatedmodelapplications
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The potential diagnostic applications of magnet-actuated capsules have been greatly increased in recent years. For most of these potential applications, accurate position control of the capsule have been highly demanding. However, the friction between the robot and the environment as well as the drag force from the tether play a significant role during the motion control of the capsule. Moreover, these forces especially the friction force are typically hard to model beforehand. In this paper, we first designed a magnet-actuated tethered capsule robot, where the driving magnet is mounted on the end of a robotic arm. Then, we proposed a learning-based approach to model the friction force between the capsule and the environment, with the goal of increasing the control accuracy of the whole system. Finally, several real robot experiments are demonstrated to showcase the effectiveness of our proposed approach.

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