LMI-based neural observer for state and nonlinear function estimation

Woongsun Jeon, Ankush Chakrabarty, Ali Zemouche, Rajesh Rajamani

Research output: Contribution to journalArticlepeer-review

Abstract

This article develops a neuro-adaptive observer for state and nonlinear function estimation in systems with partially modeled process dynamics. The developed adaptive observer is shown to provide exponentially stable estimation errors in which both states and nonlinear functions converge to their true values. When the neural approximator has an approximation error with respect to the true nonlinear function, the observer can be used to provide an (Formula presented.) bound on the estimation error. The article does not require assumptions on the process dynamics or output equation being linear functions of neural network weights and instead assumes a reasonable affine parameter dependence in the process dynamics. A convex problem is formulated and an equivalent polytopic observer design method is developed. Finally, a hybrid estimation system that switches between a neuro-adaptive observer for system identification and a regular nonlinear observer for state estimation is proposed. The switched operation enables parameter estimation updates whenever adequate measurements are available. The performance of the developed adaptive observer is shown through simulations for a Van der Pol oscillator and a single link robot. In the application, no manual tuning of adaptation gains is needed and estimates of both the states and the nonlinear functions converge successfully.

Original languageEnglish (US)
JournalInternational Journal of Robust and Nonlinear Control
DOIs
StateAccepted/In press - 2024

Bibliographical note

Publisher Copyright:
© 2024 John Wiley & Sons Ltd.

Keywords

  • function approximation
  • learning for control
  • linear matrix inequalities
  • neural networks
  • nonlinear systems
  • observers

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