| Literature DB >> 35626620 |
Yang Li1, Quanmin Zhu2, Jianhua Zhang1, Zhaopeng Deng1.
Abstract
A new fixed-time adaptive neural network control strategy is designed for pure-feedback non-affine nonlinear systems with state constraints according to the feedback signal of the error system. Based on the adaptive backstepping technology, the Lyapunov function is designed for each subsystem. The neural network is used to identify the unknown parameters of the system in a fixed-time, and the designed control strategy makes the output signal of the system track the expected signal in a fixed-time. Through the stability analysis, it is proved that the tracking error converges in a fixed-time, and the design of the upper bound of the setting time of the error system only needs to modify the parameters and adaptive law of the controlled system controller, which does not depend on the initial conditions.Entities:
Keywords: adaptive control; neural network control; non-affine nonlinear systems; nonlinear constraint systems; pure feedback
Year: 2022 PMID: 35626620 PMCID: PMC9141358 DOI: 10.3390/e24050737
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.738
Figure 3Trajectories of the output and the desired signal.
Figure 4Trajectories of the homeomorphism mapping states.
Figure 5Trajectories of the system states.
Figure 6Trajectories of the controller.
Figure 7Trajectories of the output and the desired signal.
Figure 8Trajectories of the controller.