This paper focuses on neural learning from adaptive neural control (ANC) for a class of flexible joint manipulator under the output tracking constraint. To facilitate the design, a new transformed function is introduced to convert the constrained tracking error into unconstrained error variable. Then, a novel adaptive neural dynamic surface control scheme is proposed by combining the neural universal approximation. The proposed control scheme not only decreases the dimension of neural inputs but also reduces the number of neural approximators. Moreover, it can be verified that all the closed-loop signals are uniformly ultimately bounded and the constrained tracking error converges to a small neighborhood around zero in a finite time. Partic...
In this article, adaptive neural network control of coordinated manipulators is consid-ered in an ef...
The learning space for executing general motions of a flexible joint manipulator is quite large and ...
[[abstract]]An adaptive neural-network tracking control with a guaranteed H ∞ performance is propose...
This paper presents dynamic learning from adaptive neural control with prescribed tracking error per...
This paper proposes a position control strategy based on Artificial Neural Networks (ANN) in the fac...
This paper focuses on dynamic learning from neural control for a class of nonlinear strict-feedback ...
Abstract By relying on the input–output feedback linearization approach, a novel adaptive controller...
An adaptive control strategy has been developed for flexible-joint robotic manipulators in the prese...
Abstract: In this paper, a controller for robot manipulators is proposed to guarantee the track-ing ...
In this paper, a controller for robot manipulators is proposed to guarantee the tracking error of th...
In this paper, a controller for robot manipulators is proposed to guarantee the tracking error of th...
In this paper, a controller for robot manipulators is proposed to guarantee the tracking error of th...
Abstract—This short paper describes the application of a model free, learning neural controller, tha...
Abstract:- In this paper a comparison of classical, adaptive and neural control strategies for a rob...
This thesis presents an intelligent strategy for controlling the tip position of a flexible-link man...
In this article, adaptive neural network control of coordinated manipulators is consid-ered in an ef...
The learning space for executing general motions of a flexible joint manipulator is quite large and ...
[[abstract]]An adaptive neural-network tracking control with a guaranteed H ∞ performance is propose...
This paper presents dynamic learning from adaptive neural control with prescribed tracking error per...
This paper proposes a position control strategy based on Artificial Neural Networks (ANN) in the fac...
This paper focuses on dynamic learning from neural control for a class of nonlinear strict-feedback ...
Abstract By relying on the input–output feedback linearization approach, a novel adaptive controller...
An adaptive control strategy has been developed for flexible-joint robotic manipulators in the prese...
Abstract: In this paper, a controller for robot manipulators is proposed to guarantee the track-ing ...
In this paper, a controller for robot manipulators is proposed to guarantee the tracking error of th...
In this paper, a controller for robot manipulators is proposed to guarantee the tracking error of th...
In this paper, a controller for robot manipulators is proposed to guarantee the tracking error of th...
Abstract—This short paper describes the application of a model free, learning neural controller, tha...
Abstract:- In this paper a comparison of classical, adaptive and neural control strategies for a rob...
This thesis presents an intelligent strategy for controlling the tip position of a flexible-link man...
In this article, adaptive neural network control of coordinated manipulators is consid-ered in an ef...
The learning space for executing general motions of a flexible joint manipulator is quite large and ...
[[abstract]]An adaptive neural-network tracking control with a guaranteed H ∞ performance is propose...