Learning Feedback Linearization Based Stable Robust Adaptive NARMA Controller Design for Rotary Inverted Pendulum

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Date

2019

Authors

Mehmet Uğur Soydemir
Savaş Şahin
Parvin Bulucu
Aykut Kocaoǧlu
Cüneyt Güzeliş

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Volume Title

Publisher

Institute of Electrical and Electronics Engineers Inc.

Open Access Color

Green Open Access

Yes

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Abstract

This paper presents a Learning Feedback Linearization (LFL) based Nonlinear Auto-Regressive Moving Average (NARMA) controller design for a ROTary inverted PENdulum (ROTPEN) plant. The proposed NARMA controller comprises of a linear controller and an LFL block. The LFL block concatenated with the nonlinear plant constitutes a linear closed loop system so that linear control is applicable. An online learning algorithm is used for the data-dependent identification of the linearized plant and then for the data-dependent design of the linear part of the NARMA controller. The identification of the linearized plant starts with the determination of the LFL block in a supervised way by exploiting the input and the corresponding state data obtained from the nonlinear plant. The linearized plant is then identified as an ARMA model by the data generated with the combination of the already learned LFL block and the nonlinear plant. Robustness of the linearized system model is obtained by employing the ϵ-insensitive loss function ℓ<inf>1 ϵ</inf>(••) as the identification error of the linearized system. The Schur stability of the overall closed loop system is ensured by the linear inequality constraints imposed in the minimization of the ℓ<inf>1 ϵ</inf>(••) tracking error for determining the linear controller parameters. The proposed LFL based NARMA controller is tested on ROTPEN model and its performance is compared with the Proportional-Derivative controller and Hammerstein based NARMA adaptive controller. © 2020 Elsevier B.V. All rights reserved.

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Keywords

Closed Loop Systems, Constraint Theory, Controllers, Learning Algorithms, Linear Control Systems, Pendulums, Adaptive Controllers, Corresponding State, Identification Errors, Linear Inequality Constraints, Non-linear Auto-regressive Moving Averages, Online Learning Algorithms, Proportional-derivative Controllers, Rotary Inverted Pendulums, Feedback Linearization, Closed loop systems, Constraint theory, Controllers, Learning algorithms, Linear control systems, Pendulums, Adaptive controllers, Corresponding state, Identification errors, Linear inequality constraints, Non-linear auto-regressive moving averages, Online learning algorithms, Proportional-derivative controllers, Rotary inverted pendulums, Feedback linearization

Fields of Science

0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

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1

Source

11th International Conference on Electrical and Electronics Engineering ELECO 2019

Volume

Issue

Start Page

795

End Page

799
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Scopus : 1

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