This study proposes an adaptive neural network controller for a 3-DOF robotic manipulator that is subject to backlashlike hysteresis and friction. Two neural networks are used to approximate the dynamics and the hysteresis non-linearity. A neural network, which utilises a radial basis function approximates the robot's dynamics. The other neural network, which employs a hyperbolic tangent activation function, is used to approximate the unknown backlash-like hysteresis. The authors also consider two cases: full state and output feedback control. For output feedback, where system states are unknown, a high gain observer is employed to estimate the states. The proposed controllers ensure the boundedness of the control signals. Simulations are a...
This thesis deals with on-line adaptive control of a class of dynamic systems preceded by backlash-l...
[[abstract]]An adaptive neural-network tracking control with a guaranteed H ∞ performance is propose...
Abstract — In this paper, we investigate the control design for a class of strict-feedback nonlinear...
Abstract: This paper proposes an adaptive control suitable for motion control of robot manipulators ...
An adaptive control strategy has been developed for flexible-joint robotic manipulators in the prese...
An adaptive control based on a new Multiscale Chebyshev Neural Network (MSCNN) identification is pro...
In this paper, we present adaptive neural network tracking control of a robotic manipulator with inp...
This paper proposes a control strategy based on artificial neural networks (ANNs) for a positioning ...
An adaptive neural network controller is brought forward by the paper to solve trajectory tracking p...
Abstract—An adaptive neural-network tracking control with a guaranteedH1 performance is proposed for...
Abstract: In this paper, a neural network based adaptive sliding mode control scheme for hysteretic ...
This paper proposes an adaptive control suitable for motion control of robot manipulators with struc...
Abstract: In this paper a New RBF Neural Network based Sliding Mode Adaptive Controller (NNNSMAC) fo...
This paper presents several neural network based control strategies for the trajectory control of ro...
This paper proposes an adaptive predefined performance neural control scheme for robotic manipulator...
This thesis deals with on-line adaptive control of a class of dynamic systems preceded by backlash-l...
[[abstract]]An adaptive neural-network tracking control with a guaranteed H ∞ performance is propose...
Abstract — In this paper, we investigate the control design for a class of strict-feedback nonlinear...
Abstract: This paper proposes an adaptive control suitable for motion control of robot manipulators ...
An adaptive control strategy has been developed for flexible-joint robotic manipulators in the prese...
An adaptive control based on a new Multiscale Chebyshev Neural Network (MSCNN) identification is pro...
In this paper, we present adaptive neural network tracking control of a robotic manipulator with inp...
This paper proposes a control strategy based on artificial neural networks (ANNs) for a positioning ...
An adaptive neural network controller is brought forward by the paper to solve trajectory tracking p...
Abstract—An adaptive neural-network tracking control with a guaranteedH1 performance is proposed for...
Abstract: In this paper, a neural network based adaptive sliding mode control scheme for hysteretic ...
This paper proposes an adaptive control suitable for motion control of robot manipulators with struc...
Abstract: In this paper a New RBF Neural Network based Sliding Mode Adaptive Controller (NNNSMAC) fo...
This paper presents several neural network based control strategies for the trajectory control of ro...
This paper proposes an adaptive predefined performance neural control scheme for robotic manipulator...
This thesis deals with on-line adaptive control of a class of dynamic systems preceded by backlash-l...
[[abstract]]An adaptive neural-network tracking control with a guaranteed H ∞ performance is propose...
Abstract — In this paper, we investigate the control design for a class of strict-feedback nonlinear...