Online learning of stable robust adaptive controllers design based on data-dependent feedback linearization with application to rotary inverted pendulum

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Date

2024

Authors

Mehmet Uğur Soydemir
Savaş Şahin
Aykut Kocaoǧlu
Parvin Bulucu
Cüneyt Güzeliş

Journal Title

Journal ISSN

Volume Title

Publisher

Springer Science and Business Media Deutschland GmbH

Open Access Color

HYBRID

Green Open Access

No

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No
Impulse
Top 10%
Influence
Average
Popularity
Top 10%

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Abstract

This study introduces an online (supervised) learning method to design nonlinear auto-regressive moving average (NARMA) controllers for feedback-linearized nonlinear single-input single-output (SISO) systems. The algorithm ensures Schur stability of the overall closed-loop system and provides adaptiveness and robustness for the NARMA controllers. The first stage of the method derives in a data-dependent way a feedback-linearized model of the nonlinear plant by using its input and output sample pairs. The method’s second stage which constitutes the novel part of the presented study builds up an online learning scheme for the linear auto-regressive moving average (ARMA) controller based on an already learned feedback-linearized model of the nonlinear plant. During online supervised learning ARMA parameters of the feedback-linearized SISO plant model and the closed-loop ARMA model are computed by minimizing the plant identification and the closed-loop system tracking errors. Both errors are defined as ℓ<inf>1ε</inf> namely ε-insensitive loss functions that provide NARMA controller the robustness against noise and outliers. The proposed online learning control algorithm is applied to a rotary inverted pendulum model and to a real rotary inverted pendulum setup. The tracking performance of the developed controller is compared with those of the linear quadratic regulator and coupled sliding mode controller in terms of mean square error. © 2024 Elsevier B.V. All rights reserved.

Description

Keywords

Coupled Sliding Mode Control, Feedback Linearization, Learning Controller, Rotary Inverted Pendulum, Stable Robust Adaptive Control, Adaptive Control Systems, Closed Loop Systems, Controllers, Design, E-learning, Errors, Inverted Pendulum, Learning Algorithms, Learning Systems, Mean Square Error, Online Systems, Robustness (control Systems), Sliding Mode Control, Coupled Sliding Mode Control, Feedback Linearisation, Learning Controllers, Non-linear Auto-regressive Moving Averages, Nonlinear Auto-regressive Moving Averages, Online Learning, Robust-adaptive Control, Rotary Inverted Pendulums, Sliding-mode Control, Stable Robust Adaptive Control, Feedback Linearization, Adaptive control systems, Closed loop systems, Controllers, Design, E-learning, Errors, Inverted pendulum, Learning algorithms, Learning systems, Mean square error, Online systems, Robustness (control systems), Sliding mode control, Coupled sliding mode control, Feedback linearisation, Learning controllers, Non-linear auto-regressive moving averages, Nonlinear auto-regressive moving averages, Online learning, Robust-adaptive control, Rotary inverted pendulums, Sliding-mode control, Stable robust adaptive control, Feedback linearization, Feedback Linearization, Coupled Sliding Mode Control, Rotary Inverted Pendulum, Stable Robust Adaptive Control, Learning Controller

Fields of Science

0209 industrial biotechnology, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

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WoS Q

Scopus Q

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OpenCitations Citation Count
3

Source

Neural Computing and Applications

Volume

36

Issue

18

Start Page

10881

End Page

10896
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Scopus : 3

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Mendeley Readers : 5

SCOPUS™ Citations

3

checked on Apr 10, 2026

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