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Bibliographic Details
Main Authors: Lovi, Alex, Fidan, Baris, Nielsen, Christopher
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.18119
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author Lovi, Alex
Fidan, Baris
Nielsen, Christopher
author_facet Lovi, Alex
Fidan, Baris
Nielsen, Christopher
contents In this paper we develop a multiple model reference adaptive controller (MMRAC) with blending. The systems under consideration are non-square, i.e., the number of inputs is not equal to the number of states; multi-input, linear, time-invariant with uncertain parameters that lie inside of a known, compact, and convex set. Moreover, the full state of the plant is available for feedback. A multiple model online identification scheme for the plant's state and input matrices is developed that guarantees the estimated parameters converge to the underlying plant model under the assumption of persistence of excitation. Using an exact matching condition, the parameter estimates are used in a control law such that the plant's states asymptotically track the reference signal generated by a state-space model reference. The control architecture is proven to provide boundedness of all closed-loop signals and to asymptotically drive the state tracking error to zero. Numerical simulations illustrate the stability and efficacy of the proposed MMRAC scheme.
format Preprint
id arxiv_https___arxiv_org_abs_2403_18119
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multiple Model Reference Adaptive Control with Blending for Non-Square Multivariable Systems
Lovi, Alex
Fidan, Baris
Nielsen, Christopher
Systems and Control
In this paper we develop a multiple model reference adaptive controller (MMRAC) with blending. The systems under consideration are non-square, i.e., the number of inputs is not equal to the number of states; multi-input, linear, time-invariant with uncertain parameters that lie inside of a known, compact, and convex set. Moreover, the full state of the plant is available for feedback. A multiple model online identification scheme for the plant's state and input matrices is developed that guarantees the estimated parameters converge to the underlying plant model under the assumption of persistence of excitation. Using an exact matching condition, the parameter estimates are used in a control law such that the plant's states asymptotically track the reference signal generated by a state-space model reference. The control architecture is proven to provide boundedness of all closed-loop signals and to asymptotically drive the state tracking error to zero. Numerical simulations illustrate the stability and efficacy of the proposed MMRAC scheme.
title Multiple Model Reference Adaptive Control with Blending for Non-Square Multivariable Systems
topic Systems and Control
url https://arxiv.org/abs/2403.18119