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Adaptive Tracking Control with Uncertainty-Aware and State-Dependent Feedback Action Blending for Robot Manipulators

Xuwei Wu, Annika Kirner, Gianluca Garofalo, Christian Ott, Paul Kotyczka, Alexander Dietrich

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Abstract

Adaptive control can significantly improve tracking performance of robot manipulators subject to modeling errors in dynamics. In this letter, we propose a new framework combining the composite adaptive controller using a natural adaptation law and an extension of the adaptive variance algorithm (AVA) for controller blending. The proposed approach not only automati- cally adjusts the feedback action to reduce the risk of violating actuator constraints but also anticipates substantial modeling errors by means of an uncertainty measure, thus preventing severe performance deterioration. A formal stability analysis of the closed-loop system is conducted. The control scheme is experimentally validated and directly compared with baseline methods on a torque-controlled KUKA LWR IV+.

Index terms

Motion Control Robust/Adaptive Control Formal Methods in Robotics and Automation