Improved Dynamic Modeling and Robust Control of Autonomous Underwater Vehicles
In this dissertation, we seek to improve the dynamic modeling and control of autonomous underwater vehicles (AUVs). We address nonlinear hydrodynamic modeling, simplifying modeling assumptions, and robust control for AUVs. In the literature, various hydrodynamic models exist with varying model compl...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-844682020-09-29T05:32:16Z Improved Dynamic Modeling and Robust Control of Autonomous Underwater Vehicles Gibson, Scott Brian Electrical Engineering Stilwell, Daniel J. Woolsey, Craig A. MacKenzie, Allen B. Brizzolara, Stefano Tokekar, Pratap autonomous vehicles dynamics parameter estimation H-infinity control time-inhomogeneous Markov jump linear systems In this dissertation, we seek to improve the dynamic modeling and control of autonomous underwater vehicles (AUVs). We address nonlinear hydrodynamic modeling, simplifying modeling assumptions, and robust control for AUVs. In the literature, various hydrodynamic models exist with varying model complexity and with no universally accepted model. We compare various hydrodynamic models traditionally employed to predict the motion of AUVs by estimating model coefficients using least-squares and adaptive identifier techniques. Additionally, we derive several dynamic models for an AUV employing varying sets of simplifying assumptions. We experimentally assess the efficacy of invoking typical assumptions to simplify the equations of motion. For robust control design, we develop a procedure for designing robust attitude controllers based on loop-shaping ideas. We specifically address the challenge of adjusting the desired actuator bandwidth in a loop-shaping design framework. Finally, we present a novel receding horizon H-infinity control algorithm to improve the control of autonomous vehicle systems working in high-disturbance environments, employing a Markov jump linear system framework to model the stochastic and non-stationary disturbances experienced by the vehicle. Our main results include a new Bounded Real Lemma for stability analysis and an output feedback H-infinity control synthesis algorithm. This work uses numerical simulations and extensive field trials of autonomous underwater vehicles to identify and verify dynamic models and to validate control algorithms developed herein. Ph. D. 2018-08-02T08:00:18Z 2018-08-02T08:00:18Z 2018-08-01 Dissertation vt_gsexam:16585 http://hdl.handle.net/10919/84468 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf Virginia Tech |
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autonomous vehicles dynamics parameter estimation H-infinity control time-inhomogeneous Markov jump linear systems |
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autonomous vehicles dynamics parameter estimation H-infinity control time-inhomogeneous Markov jump linear systems Gibson, Scott Brian Improved Dynamic Modeling and Robust Control of Autonomous Underwater Vehicles |
description |
In this dissertation, we seek to improve the dynamic modeling and control of autonomous underwater vehicles (AUVs). We address nonlinear hydrodynamic modeling, simplifying modeling assumptions, and robust control for AUVs. In the literature, various hydrodynamic models exist with varying model complexity and with no universally accepted model. We compare various hydrodynamic models traditionally employed to predict the motion of AUVs by estimating model coefficients using least-squares and adaptive identifier techniques. Additionally, we derive several dynamic models for an AUV employing varying sets of simplifying assumptions. We experimentally assess the efficacy of invoking typical assumptions to simplify the equations of motion.
For robust control design, we develop a procedure for designing robust attitude controllers based on loop-shaping ideas. We specifically address the challenge of adjusting the desired actuator bandwidth in a loop-shaping design framework. Finally, we present a novel receding horizon H-infinity control algorithm to improve the control of autonomous vehicle systems working in high-disturbance environments, employing a Markov jump linear system framework to model the stochastic and non-stationary disturbances experienced by the vehicle. Our main results include a new Bounded Real Lemma for stability analysis and an output feedback H-infinity control synthesis algorithm.
This work uses numerical simulations and extensive field trials of autonomous underwater vehicles to identify and verify dynamic models and to validate control algorithms developed herein. === Ph. D. |
author2 |
Electrical Engineering |
author_facet |
Electrical Engineering Gibson, Scott Brian |
author |
Gibson, Scott Brian |
author_sort |
Gibson, Scott Brian |
title |
Improved Dynamic Modeling and Robust Control of Autonomous Underwater Vehicles |
title_short |
Improved Dynamic Modeling and Robust Control of Autonomous Underwater Vehicles |
title_full |
Improved Dynamic Modeling and Robust Control of Autonomous Underwater Vehicles |
title_fullStr |
Improved Dynamic Modeling and Robust Control of Autonomous Underwater Vehicles |
title_full_unstemmed |
Improved Dynamic Modeling and Robust Control of Autonomous Underwater Vehicles |
title_sort |
improved dynamic modeling and robust control of autonomous underwater vehicles |
publisher |
Virginia Tech |
publishDate |
2018 |
url |
http://hdl.handle.net/10919/84468 |
work_keys_str_mv |
AT gibsonscottbrian improveddynamicmodelingandrobustcontrolofautonomousunderwatervehicles |
_version_ |
1719343588067770368 |