4.5 Article

Learning from neural control of nonlinear systems in normal form

Journal

SYSTEMS & CONTROL LETTERS
Volume 58, Issue 9, Pages 633-638

Publisher

ELSEVIER
DOI: 10.1016/j.sysconle.2009.04.001

Keywords

Deterministic learning; Adaptive neural control; Nonlinear systems; Normal form; Persistent excitation (PE) condition; Closed-loop identification

Funding

  1. National Natural Science Foundation of China [60743011]
  2. New Century Excellent Talents in Universities (NCET)
  3. National Basic Research Program (973) of China [2007CB311005]
  4. Australian Research Councils Discovery [FF0455875]

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A deterministic learning theory was recently proposed which states that an appropriately designed adaptive neural controller can learn the system internal dynamics while attempting to control a class of simple nonlinear systems. In this paper, we investigate deterministic learning from adaptive neural control (ANC) of a class of nonlinear systems in normal form with unknown affine terms. The existence of the unknown affine terms makes it difficult to achieve learning by using previous methods. To overcome the difficulties, firstly, an extension of a recent result is presented on stability analysis of linear time-varying (LTV) systems. Then, with a state transformation, the closed-loop control system is transformed into a LTV form for which exponential stability can be guaranteed when a partial persistent excitation (PE) condition is satisfied. Accurate approximation of the closed-loop control system dynamics is achieved in a local region along a recurrent orbit of closed-loop signals. Consequently, learning of control system dynamics (i.e. closed-loop identification) from adaptive neural control of nonlinear systems with unknown affine terms is implemented. (C) 2009 Elsevier B.V. All rights reserved.

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