Adaptive Neural Network-Based Satellite Attitude Control in the Presence of CMG Uncertainty

W. MacKunis, F. Leve, P. M. Patre, N. Fitz-Coy, W. E. Dixon

Research output: Contribution to journalArticlepeer-review

Abstract

An attitude tracking controller is developed for control moment gyroscope (CMG)-actuated satellites, which is shown to achieve accurate attitude tracking in the presence of unmodeled external disturbance torques, parametric uncertainty, and nonlinear CMG disturbances. Since the disturbances/uncertainties do not all satisfy the typical linear-in-the-parameters (LP) assumption, a neural network (NN) is included in the control development. The innovation of the result is the development of a Lyapunov-based design/analysis that indicates exponential convergence to an arbitrarily small domain. The result is obtained despite the characteristics of the uncertainty; the nonvanishing disturbance terms; and the fact that the control input is premultiplied by a non-square, time-varying, nonlinear, uncertain matrix. In addition to the Lyapunov-based analysis, experimental results demonstrate the performance of the developed controller.
Original languageAmerican English
JournalAerospace Science and Technology
Volume54
DOIs
StatePublished - Jul 2016

Keywords

  • attitude tracking controller
  • control moment gyroscope-actuated satellites

Disciplines

  • Aerospace Engineering
  • Space Vehicles

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