Adaptive neural output-feedback control for nonstrict- feedback time-delay fractional-order systems with output constraints and actuator nonlinearities
Registro en:
instname:Universidad de Bogotá Jorge Tadeo Lozano
reponame:Repositorio Institucional de la Universidad de Bogotá Jorge Tadeo Lozano
Autor
Zouari, Farouk
Ibeas, Asier
Boulkroune, Abdesselem
Cao, Jinde
Mehdi Arefi, Mohammad
Institución
Resumen
This study addresses the issue of the adaptive output tracking control for a
category of uncertain nonstrict-feedback delayed incommensurate fractional-order
systems in the presence of nonaffine structures, unmeasured pseudo-states, unknown
control directions, unknown actuator nonlinearities and output constraints. Firstly, the
mean value theorem and the Gaussian error function are introduced to eliminate the
difficulties that arise from the nonaffine structures and the unknown actuator
nonlinearities, respectively. Secondly, the immeasurable tracking error variables are
suitably estimated by constructing a fractional-order linear observer. Thirdly, the
neural network, the Razumikhin Lemma, the variable separation approach, and the
smooth Nussbaum-type function are used to deal with the uncertain nonlinear
dynamics, the unknown time-varying delays, the nonstrict feedback and the unknown
control directions, respectively. Fourthly, asymmetric barrier Lyapunov functions are
employed to overcome the violation of the output constraints and to tune online the parameters of the adaptive neural controller. Through rigorous analysis, it is proved
that the boundedness of all variables in the closed-loop system and the semi global
asymptotic tracking are ensured without transgression of the constraints. The principal
contributions of this study can be summarized as follows: (1) based on a uto’s
definitions and new lemmas, methods concerning the controllability, observability
and stability analysis of integer-order systems are extended to fractional-order ones,
(2) the output tracking objective for a relatively large class of uncertain systems is
achieved with a simple controller and less tuning parameters. Finally, computersimulation
studies from the robotic field are given to demonstrate the effectiveness of
the proposed controller.