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A Learning-based Iterative Control Framework for Controlling a Robot Arm with Pneumatic Artificial Muscles

Hao Ma, Dieter B�chler, Bernhard Sch�lkopf, Michael Muehlebach

Year
2022
Citations
9
Access
Open access

Abstract

In this work, we propose a new learning-based iterative control (IC) framework that enables a complex softrobotic arm to track trajectories accurately. Compared to traditional iterative learning control (ILC), which operates on a single fixed reference trajectory, we use a deep learning approach to generalize across various reference trajectories. The resulting nonlinear mapping computes feedforward actions and is used in a two degrees of freedom control design. Our method incorporates prior knowledge about the system dynamics and by learning only feedforward actions, it mitigates the risk of instability. We demonstrate a low sample complexity and an excellent tracking performance in real-world experiments. The experiments are carried out on a custom-made robot arm with four degrees of freedom that is actuated with pneumatic artificial muscles. The experiments include high acceleration and high velocity motion.

Keywords

Iterative learning controlRobotic armPneumatic artificial musclesComputer scienceRobotMedical roboticsRobot controlControl (management)Artificial intelligencePneumatic flow control

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