Modeling, Approximation, and Control for a Class of Nonlinear Systems

This work investigates modeling, approximation, estimation, and control for classes of nonlinear systems whose state evolves in space $mathbb{R}^n times H$, where $mathbb{R}^n$ is a n-dimensional Euclidean space and $H$ is a infinite dimensional Hilbert space. Specifically, two classes of nonlinear...

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Main Author: Bobade, Parag Suhas
Other Authors: Engineering Science and Mechanics
Format: Others
Published: Virginia Tech 2017
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Online Access:http://hdl.handle.net/10919/80978
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spelling ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-809782020-11-11T05:36:54Z Modeling, Approximation, and Control for a Class of Nonlinear Systems Bobade, Parag Suhas Engineering Science and Mechanics Kurdila, Andrew J. Borggaard, Jeffrey T. Burns, John A. Woolsey, Craig A. Ross, Shane D. Adaptive Estimation Approximation Theory Functional Differential Equations This work investigates modeling, approximation, estimation, and control for classes of nonlinear systems whose state evolves in space $mathbb{R}^n times H$, where $mathbb{R}^n$ is a n-dimensional Euclidean space and $H$ is a infinite dimensional Hilbert space. Specifically, two classes of nonlinear systems are studied in this dissertation. The first topic develops a novel framework for adaptive estimation of nonlinear systems using reproducing kernel Hilbert spaces. A nonlinear adaptive estimation problem is cast as a time-varying estimation problem in $mathbb{R}^d times H$. In contrast to most conventional strategies for ODEs, the approach here embeds the estimate of the unknown nonlinear function appearing in the plant in a reproducing kernel Hilbert space (RKHS), $H$. Furthermore, the well-posedness of the framework in the new formulation is established. We derive the sufficient conditions for existence, uniqueness, and stability of an infinite dimensional adaptive estimation problem. A condition for persistence of excitation in a RKHS in terms of an evaluation functional is introduced to establish the convergence of finite dimensional approximations of the unknown function in RKHS. Lastly, a numerical validation of this framework is presented, which could have potential applications in terrain mapping algorithms. The second topic delves into estimation and control of history dependent differential equations. This study is motivated by the increasing interest in estimation and control techniques for robotic systems whose governing equations include history dependent nonlinearities. The governing dynamics are modeled using a specific form of functional differential equations. The class of history dependent differential equations in this work is constructed using integral operators that depend on distributed parameters. Consequently, the resulting estimation and control equations define a distributed parameter system whose state, and distributed parameters evolve in finite and infinite dimensional spaces, respectively. The well-posedness of the governing equations is established by deriving sufficient conditions for existence, uniqueness and stability for the class of functional differential equations. The error estimates for multiwavelet approximation of such history dependent operators are derived. These estimates help determine the rate of convergence of finite dimensional approximations of the online estimation equations to the infinite dimensional solution of distributed parameter system. At last, we present the adaptive sliding mode control strategy developed for the history dependent functional differential equations and numerically validate the results on a simplified pitch-plunge wing model. Ph. D. 2017-12-06T09:00:17Z 2017-12-06T09:00:17Z 2017-12-05 Dissertation vt_gsexam:13204 http://hdl.handle.net/10919/80978 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf Virginia Tech
collection NDLTD
format Others
sources NDLTD
topic Adaptive Estimation
Approximation Theory
Functional Differential Equations
spellingShingle Adaptive Estimation
Approximation Theory
Functional Differential Equations
Bobade, Parag Suhas
Modeling, Approximation, and Control for a Class of Nonlinear Systems
description This work investigates modeling, approximation, estimation, and control for classes of nonlinear systems whose state evolves in space $mathbb{R}^n times H$, where $mathbb{R}^n$ is a n-dimensional Euclidean space and $H$ is a infinite dimensional Hilbert space. Specifically, two classes of nonlinear systems are studied in this dissertation. The first topic develops a novel framework for adaptive estimation of nonlinear systems using reproducing kernel Hilbert spaces. A nonlinear adaptive estimation problem is cast as a time-varying estimation problem in $mathbb{R}^d times H$. In contrast to most conventional strategies for ODEs, the approach here embeds the estimate of the unknown nonlinear function appearing in the plant in a reproducing kernel Hilbert space (RKHS), $H$. Furthermore, the well-posedness of the framework in the new formulation is established. We derive the sufficient conditions for existence, uniqueness, and stability of an infinite dimensional adaptive estimation problem. A condition for persistence of excitation in a RKHS in terms of an evaluation functional is introduced to establish the convergence of finite dimensional approximations of the unknown function in RKHS. Lastly, a numerical validation of this framework is presented, which could have potential applications in terrain mapping algorithms. The second topic delves into estimation and control of history dependent differential equations. This study is motivated by the increasing interest in estimation and control techniques for robotic systems whose governing equations include history dependent nonlinearities. The governing dynamics are modeled using a specific form of functional differential equations. The class of history dependent differential equations in this work is constructed using integral operators that depend on distributed parameters. Consequently, the resulting estimation and control equations define a distributed parameter system whose state, and distributed parameters evolve in finite and infinite dimensional spaces, respectively. The well-posedness of the governing equations is established by deriving sufficient conditions for existence, uniqueness and stability for the class of functional differential equations. The error estimates for multiwavelet approximation of such history dependent operators are derived. These estimates help determine the rate of convergence of finite dimensional approximations of the online estimation equations to the infinite dimensional solution of distributed parameter system. At last, we present the adaptive sliding mode control strategy developed for the history dependent functional differential equations and numerically validate the results on a simplified pitch-plunge wing model. === Ph. D.
author2 Engineering Science and Mechanics
author_facet Engineering Science and Mechanics
Bobade, Parag Suhas
author Bobade, Parag Suhas
author_sort Bobade, Parag Suhas
title Modeling, Approximation, and Control for a Class of Nonlinear Systems
title_short Modeling, Approximation, and Control for a Class of Nonlinear Systems
title_full Modeling, Approximation, and Control for a Class of Nonlinear Systems
title_fullStr Modeling, Approximation, and Control for a Class of Nonlinear Systems
title_full_unstemmed Modeling, Approximation, and Control for a Class of Nonlinear Systems
title_sort modeling, approximation, and control for a class of nonlinear systems
publisher Virginia Tech
publishDate 2017
url http://hdl.handle.net/10919/80978
work_keys_str_mv AT bobadeparagsuhas modelingapproximationandcontrolforaclassofnonlinearsystems
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