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Geometric Impedance Control on SE for Robotic Manipulators

2022-11-15 07:07:38
Joohwan Seo, Nikhil Potu Surya Prakash, Alexander Rose, Roberto Horowitz

Abstract

After its introduction, impedance control has been utilized as a primary control scheme for robotic manipulation tasks that involve interaction with unknown environments. While impedance control has been extensively studied, the geometric structure of SE(3) for the robotic manipulator itself and its use in formulating a robotic task has not been adequately addressed. In this paper, we propose a differential geometric approach to impedance control. Given a left-invariant error metric in SE(3), the corresponding error vectors in position and velocity are first derived. Using these geometrically consistent error vectors, we propose a novel impedance control scheme, which adequately accounts for the geometric structure of the manipulator in SE(3). The closed-loop stability for the proposed control schemes is verified using a Lyapunov function-based analysis. The proposed control design clearly outperformed a conventional impedance control approach when tracking challenging trajectory profiles.

Abstract (translated)

URL

https://arxiv.org/abs/2211.07945

PDF

https://arxiv.org/pdf/2211.07945.pdf


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