INCAS Bulletin (Sep 2009)

Control of uncertain systems by feedback linearization with neural networks augmentation. Part I. Controller design

  • Ioan URSU,
  • Adrian TOADER,
  • George TECUCEANU

DOI
https://doi.org/10.13111/2066-8201.2009.1.1.16
Journal volume & issue
Vol. 1, no. 1
pp. 84 – 90

Abstract

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The paper highlights the main steps of adaptive output feedback control for non-affine uncertain systems – both in parameters and dynamics – having a known relative degree. Given a reference model, the objective is to design a controller that forces the measured system output to track the reference model output with bounded errors. A single hidden layer neural network is used to counteract feedback linearization error. A dynamic observer of tracking error is added. The treatment of control saturation is also sketched. The mathematical model for the longitudinal dynamics of an experimental helicopter is used as framework.