Publication | Closed Access
Neural Network Control of a Robotic Manipulator With Input Deadzone and Output Constraint
389
Citations
71
References
2015
Year
EngineeringRobust ControlSystems EngineeringNeural Network ControlRobot LearningTracking ControlOutput ConstraintNonlinear ControlAdaptive Neural NetworkMechatronicsIntelligent ControlAdaptive Neural NetworksControl DesignInput DeadzoneMotion ControlRobot ControlState ObserverMechanical SystemsProcess ControlAdaptive ControlBarrier Lyapunov FunctionBusinessRobotics
In this paper, we present adaptive neural network tracking control of a robotic manipulator with input deadzone and output constraint. A barrier Lyapunov function is employed to deal with the output constraints. Adaptive neural networks are used to approximate the deadzone function and the unknown model of the robotic manipulator. Both full state feedback control and output feedback control are considered in this paper. For the output feedback control, the high gain observer is used to estimate unmeasurable states. With the proposed control, the output constraints are not violated, and all the signals of the closed loop system are semi-globally uniformly bounded. The performance of the proposed control is illustrated through simulations.
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