Home /Research /Finite-Time Adaptive Fault-Tolerant Control for Robot Manipulators With Guaranteed Transient Performance
MANIPULATION

Finite-Time Adaptive Fault-Tolerant Control for Robot Manipulators With Guaranteed Transient Performance

Yongling Xia, Yeqing Yuan, Weichao Sun

Year
2025
Citations
21

Abstract

This article studies finite-time adaptive fault-tolerant control for uncertain robotic manipulator systems with guaranteed transient performance. Combining with backstepping method and neural network techniques, a novel finite-time adaptive fault-tolerant control method is presented, where neural networks are utilized to handle model uncertainties. By introducing an error transformation strategy and a performance function, the transient performance constraints of the system are converted into the stabilization problem of the unconstrained robot manipulator. In addition, adaptive fault-tolerant control weakens the effect of actuator failures on control performance, and a novel adaptive upper bound estimation strategy is adopted to compensate for neural network training errors and external disturbances. Subsequently, finite-time control ensures that the position tracking errors can converge to a small neighborhood around zero within a finite time and guarantees the required tracking performance. Finally, a simulation is conducted based on an actual two-link manipulator model to prove the superiority of our control approach, and the validity of the control approach is further verified on the Franka Emika Panda robot.

Keywords

BacksteppingControl theory (sociology)Transient (computer programming)Artificial neural networkFault toleranceAdaptive controlTracking errorComputer scienceActuatorControl engineering

Related papers

Browse all MANIPULATION papers