Home /Research /Predefined-Time Reliable Control for Robotic Systems With Prescribed Performance
LEARNING

Predefined-Time Reliable Control for Robotic Systems With Prescribed Performance

Jianxing Liu, Yizhuo Sun, Zhuang Liu, Yabin Gao, Ligang Wu, José I. Leon, Leopoldo G. Franquelo

Year
2025
Citations
22

Abstract

This article presents a predefined-time reliable control strategy with prescribed performance for tracking control of robotic systems with actuator faults and parametric uncertainties. A compensation mechanism based on adaptive neural network is proposed for system uncertainties and nonlinear actuator faults, by which the control strategy does not need prior precise knowledge of uncertainties. A prescribed performance function (PPF) is introduced to improve the tracking performance. A predefined-time nonsingular terminal sliding mode control (NTSMC) strategy is proposed to realize the practical predefined-time convergence of the tracking errors. In addition, combined with the PPF, the predefined-time NTSMC is developed to ensure that actuator faults are tolerated. Meanwhile, the tracking errors always remain within prescribed bounds and converge to the equilibrium within the predefined time. Experiments verify the effectiveness and advantage of the proposed control strategy.

Keywords

Computer scienceControl engineeringControl (management)Control systemControl theory (sociology)EngineeringArtificial intelligence

Related papers

Browse all LEARNING papers