Adaptive Model Predictive Control of a Two-wheeled Robot Manipulator with Varying Mass

This paper presents the adaptive model predictive control approach for a two-wheeled robot manipulator with varying mass. The mass variation corresponds to the robot picking and placing objects or loads from one place to another. A linear parameter varying model of the system is derived consisting o...

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Main Authors: Mert Önkol, Coşku Kasnakoğlu
Format: Article
Language:English
Published: SAGE Publishing 2018-03-01
Series:Measurement + Control
Online Access:https://doi.org/10.1177/0020294018758527
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spelling doaj-b3140dce4ec94f8295d119a1137ca8822020-11-25T03:17:35ZengSAGE PublishingMeasurement + Control0020-29402018-03-015110.1177/0020294018758527Adaptive Model Predictive Control of a Two-wheeled Robot Manipulator with Varying MassMert ÖnkolCoşku KasnakoğluThis paper presents the adaptive model predictive control approach for a two-wheeled robot manipulator with varying mass. The mass variation corresponds to the robot picking and placing objects or loads from one place to another. A linear parameter varying model of the system is derived consisting of local linear models of the system at different values of the varying parameter. An adaptive model predictive control controller is designed to control the fast-varying center of gravity angle in the inner loop. The reference for the inner loop is generated by a slower outer loop controlling the linear position using a linear quadratic Gaussian regulator. This adaptive model predictive control/linear quadratic Gaussian control system is simulated on the nonlinear model of the robot, and the closed-loop performance of the proposed scheme is compared with a system having inner/outer loop controllers as proportional integral derivative/proportional integral derivative, feedback linearization/linear quadratic Gaussian, and linear quadratic Gaussian/linear quadratic Gaussian. It is seen that adaptive model predictive control shows mostly superior and otherwise very good performance when compared to these benchmarks in terms of reference tracking and robustness to mass parameter variations.https://doi.org/10.1177/0020294018758527
collection DOAJ
language English
format Article
sources DOAJ
author Mert Önkol
Coşku Kasnakoğlu
spellingShingle Mert Önkol
Coşku Kasnakoğlu
Adaptive Model Predictive Control of a Two-wheeled Robot Manipulator with Varying Mass
Measurement + Control
author_facet Mert Önkol
Coşku Kasnakoğlu
author_sort Mert Önkol
title Adaptive Model Predictive Control of a Two-wheeled Robot Manipulator with Varying Mass
title_short Adaptive Model Predictive Control of a Two-wheeled Robot Manipulator with Varying Mass
title_full Adaptive Model Predictive Control of a Two-wheeled Robot Manipulator with Varying Mass
title_fullStr Adaptive Model Predictive Control of a Two-wheeled Robot Manipulator with Varying Mass
title_full_unstemmed Adaptive Model Predictive Control of a Two-wheeled Robot Manipulator with Varying Mass
title_sort adaptive model predictive control of a two-wheeled robot manipulator with varying mass
publisher SAGE Publishing
series Measurement + Control
issn 0020-2940
publishDate 2018-03-01
description This paper presents the adaptive model predictive control approach for a two-wheeled robot manipulator with varying mass. The mass variation corresponds to the robot picking and placing objects or loads from one place to another. A linear parameter varying model of the system is derived consisting of local linear models of the system at different values of the varying parameter. An adaptive model predictive control controller is designed to control the fast-varying center of gravity angle in the inner loop. The reference for the inner loop is generated by a slower outer loop controlling the linear position using a linear quadratic Gaussian regulator. This adaptive model predictive control/linear quadratic Gaussian control system is simulated on the nonlinear model of the robot, and the closed-loop performance of the proposed scheme is compared with a system having inner/outer loop controllers as proportional integral derivative/proportional integral derivative, feedback linearization/linear quadratic Gaussian, and linear quadratic Gaussian/linear quadratic Gaussian. It is seen that adaptive model predictive control shows mostly superior and otherwise very good performance when compared to these benchmarks in terms of reference tracking and robustness to mass parameter variations.
url https://doi.org/10.1177/0020294018758527
work_keys_str_mv AT mertonkol adaptivemodelpredictivecontrolofatwowheeledrobotmanipulatorwithvaryingmass
AT coskukasnakoglu adaptivemodelpredictivecontrolofatwowheeledrobotmanipulatorwithvaryingmass
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