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Application of RL in control systems using the example of a rotatory inverted pendulum

  • In this paper, the use of reinforcement learning (RL) in control systems is investigated using a rotatory inverted pendulum as an example. The control behavior of an RL controller is compared to that of traditional LQR and MPC controllers. This is done by evaluating their behavior under optimal conditions, their disturbance behavior, their robustness and their development process. All the investigated controllers are developed using MATLAB and the Simulink simulation environment and later deployed to a real pendulum model powered by a Raspberry Pi. The RL algorithm used is Proximal Policy Optimization (PPO). The LQR controller exhibits an easy development process, an average to good control behavior and average to good robustness. A linear MPC controller could show excellent results under optimal operating conditions. However, when subjected to disturbances or deviations from the equilibrium point, it showed poor performance and sometimes instable behavior. Employing a nonlinear MPC Controller in real time was not possible due to the high computational effort involved. The RL controller exhibits by far the most versatile and robust control behavior. When operated in the simulation environment, it achieved a high control accuracy. When employed in the real system, however, it only shows average accuracy and a significantly greater performance loss compared to the simulation than the traditional controllers. With MATLAB, it is not yet possible to directly post-train the RL controller on the Raspberry Pi, which is an obstacle to the practical application of RL in a prototyping or teaching setting. Nevertheless, RL in general proves to be a flexible and powerful control method, which is well suited for complex or nonlinear systems where traditional controllers struggle.

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Metadaten
Author:M. Wittig, René Rütters, Michael Bragard
DOI:https://doi.org/10.33968/2024.53
ISBN:978-3-910103-02-3
Parent Title (German):Tagungsband AALE 2024 : Fit für die Zukunft: praktische Lösungen für die industrielle Automation
Publisher:le-tex publishing services GmbH
Place of publication:Leipzig
Editor:Jörg Reiff-Stephan, Jens Jäkel, André Schwarz
Document Type:Conference Proceeding
Language:English
Year of Completion:2024
Date of first Publication:2024/02/12
Date of the Publication (Server):2024/03/01
Tag:LQR; MPC; PPO; Reinforcement Learning; Rotatory Inverted Pendulum
First Page:241
Last Page:248
Note:
20. AALE-Konferenz. Bielefeld, 06.03.-08.03.2024.
(Tagungsband unter https://doi.org/10.33968/2024.29)
Link:https://doi.org/10.33968/2024.53
Zugriffsart:weltweit
Institutes:FH Aachen / Fachbereich Elektrotechnik und Informationstechnik
collections:Verlag / le-tex publishing services GmbH
Licence (German):License LogoCreative Commons - Namensnennung-Keine kommerzielle Nutzung-Weitergabe unter gleichen Bedingungen