IET Control Theory & Applications (Apr 2022)

A neural network adaptive interval observer design for nonlinear systems

  • Zeren Yi,
  • Wei Xie,
  • Longwen Liu,
  • Bugong Xu

DOI
https://doi.org/10.1049/cth2.12258
Journal volume & issue
Vol. 16, no. 6
pp. 615 – 624

Abstract

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Abstract A design method of neural network adaptive interval observer for the continuous‐time unknown nonlinear system is proposed. The bounds of unknown nonlinear functions are described by the state and the input, so that the bounds of the nonlinear function vector are unmeasurable. Therefore, this method can be used to observe systems with higher degree of nonlinearity and any priori knowledge about systems. In this work, the hyper basis function neural network (HBFNN) is presented to estimate the boundary (including lower and upper bounds) of the unknown nonlinear function vector. Furthermore, the non‐negativity and stability of the error dynamic system are given, and the convergence and non‐negativity are also guaranteed. Compared with the traditional interval observer, the efficiency of the proposed approach is verified through a numerical simulation example.