Two neural learning controller designs for manipulators are considered. The first design is based on a neural inverse-dynamics system. The second is the combination of the first one with a neural adaptive state feedback system. Both types of controllers enable the manipulator to perform any given task very well after a period of training and to do other untrained tasks satisfactorily. The second design also enables the manipulator to compensate for unpredictable perturbations
We aim at the optimization of the tracking control of a robot to improve the robustness, under the e...
We aim at the optimization of the tracking control of a robot to improve the robustness, under the e...
Learning an inverse kinematic model of a robot is a well studied subject. However, achieving this wi...
This dissertation is concerned with the development of neural network-based methods to the control o...
This article examines state-of-the-art learning control schemes, particularly in applications for ro...
An efficient, adaptive neural learning paradigm for addressing the inverse kinematics of redundant m...
The extreme nonlinearity of robotic systems renders the control design step harder. The consideratio...
The extreme nonlinearity of robotic systems renders the control design step harder. The consideratio...
AbsZruct-This paper presents a nonlinear compensator using neural networks for trajectory control of...
This paper proposes an adaptive control suitable for motion control of robot manipulators with struc...
This paper presents several neural network based control strategies for the trajectory control of ro...
Learning an inverse kinematic model of a robot is a well studied subject. However, achieving this wi...
Learning an inverse kinematic model of a robot is a well studied subject. However, achieving this wi...
A new neural network (NN) control technique for robot manipulators is introduced in this paper. The ...
In this paper we are studying the Cartesian space robot manipulator control problem by using Neural ...
We aim at the optimization of the tracking control of a robot to improve the robustness, under the e...
We aim at the optimization of the tracking control of a robot to improve the robustness, under the e...
Learning an inverse kinematic model of a robot is a well studied subject. However, achieving this wi...
This dissertation is concerned with the development of neural network-based methods to the control o...
This article examines state-of-the-art learning control schemes, particularly in applications for ro...
An efficient, adaptive neural learning paradigm for addressing the inverse kinematics of redundant m...
The extreme nonlinearity of robotic systems renders the control design step harder. The consideratio...
The extreme nonlinearity of robotic systems renders the control design step harder. The consideratio...
AbsZruct-This paper presents a nonlinear compensator using neural networks for trajectory control of...
This paper proposes an adaptive control suitable for motion control of robot manipulators with struc...
This paper presents several neural network based control strategies for the trajectory control of ro...
Learning an inverse kinematic model of a robot is a well studied subject. However, achieving this wi...
Learning an inverse kinematic model of a robot is a well studied subject. However, achieving this wi...
A new neural network (NN) control technique for robot manipulators is introduced in this paper. The ...
In this paper we are studying the Cartesian space robot manipulator control problem by using Neural ...
We aim at the optimization of the tracking control of a robot to improve the robustness, under the e...
We aim at the optimization of the tracking control of a robot to improve the robustness, under the e...
Learning an inverse kinematic model of a robot is a well studied subject. However, achieving this wi...