Observer-based adaptive neural tracking control for a class of nonlinear systems with prescribed performance and input dead-zone constraints

Neural Netw. 2022 Mar:147:126-135. doi: 10.1016/j.neunet.2021.12.019. Epub 2021 Dec 29.

Abstract

This paper investigates the problem of output feedback neural network (NN) learning tracking control for nonlinear strict feedback systems subject to prescribed performance and input dead-zone constraints. First, an NN is utilized to approximate the unknown nonlinear functions, then a state observer is developed to estimate the unmeasurable states. Second, based on the command filter method, an output feedback NN learning backstepping control algorithm is established. Third, a prescribed performance function is employed to ensure the transient performance of the closed-loop systems and forces the tracking error to fall within the prescribed performance boundary. It is rigorously proved mathematically that all the signals in the closed-loop systems are semi-globally uniformly ultimately bounded and the tracking error can converge to an arbitrarily small neighborhood of the origin. Finally, a numerical example and an application example of the electromechanical system are given to show effectiveness of the acquired control algorithm.

Keywords: Dynamic surface control; Input dead-zone; Neural network; Output feedback; Prescribed performance control.

MeSH terms

  • Algorithms
  • Computer Simulation
  • Feedback
  • Neural Networks, Computer*
  • Nonlinear Dynamics*