Adaptive Motion Control In Uncertain Environments Using Tactile Feedback

2016 IEEE INTERNATIONAL CONFERENCE ON ADVANCED INTELLIGENT MECHATRONICS (AIM)(2016)

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摘要
Next generation robot applications are expected to leave the field of complex tasks in simple environments and move on to simple and complex tasks in complex environments. In our opinion, tactile feedback is a key technology for motion planning in such unstructured environments as visual information may be insufficient or even unavailable. In this paper, we show the performance of a tactile feedback controller in joint-space, which is not bound to the null space of the manipulator. Additionally, we extend our tactile feedback control framework to hierarchical multi-space controllers with adaptive prioritization. This allows to dissolve the trade-off between low contact forces and good positional tracking and aims at applications, where desired trajectories must be held using manipulator redundancy and end-effector deviation is only admissible at high contact forces. The stability of this approach is discussed as well. Furthermore, we present an online stiffness estimation algorithm to increase the performance of our controllers in uncertain environments. Several real-world experiments with a 9-DOF multipurpose manipulator in collision with soft and hard objects show the capability of our work.
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关键词
adaptive motion control,uncertain environments,next generation robot applications,complex tasks,complex environments,motion planning,unstructured environments,visual information,tactile feedback controller,tactile feedback control framework,hierarchical multispace controllers,adaptive prioritization,positional tracking,manipulator redundancy,end effector deviation,stability,online stiffness estimation algorithm,9-DOF multipurpose manipulator
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