In this paper, a new neural network technique for robot manipulator control is proposed. This technique called reference compensation technique(RCT), is to compensate for uncertainties in robot dynamics at input trajectory level rather than at the joint torque level. The ultimate goal of the proposed technique is to achieve an ideal computed-torque controlled system. Compensating at trajectory level carries several advantages over other neural network control schemes that compensate at robot joint torques : First, the position tracking performance is better. Second, the neural controller is more robust to feedback controller gain variations. Finally, practical implementation can be done with ease without changing the internal control algori...
This paper proposes a position control strategy based on Artificial Neural Networks (ANN) in the fac...
grantor: University of TorontoThis thesis summarizes an investigation of the application o...
The use of Neural Networks in solving nonlinear control problem is studied. A comparative study of v...
A new neural network (NN) control technique for robot manipulators is introduced in this paper. The ...
The basic robot control technique is the model based computed-torque control which is known to suffe...
It is well known that computed torque robot control is subjected to performance degradation due to u...
In this paper we are studying the Cartesian space robot manipulator control problem by using Neural ...
grantor: University of TorontoA neural network module was developed with the purpose of im...
In the paper is considered synthesis of the controller with tachometric feedback with feed forward c...
: The paper presents a neural network controller design for trajectory tracking for manipulators. Ly...
grantor: University of TorontoA neural network module was developed with the purpose of im...
In the paper is considered synthesis of the controller with tachometric feedback with feedforward co...
AbsZruct-This paper presents a nonlinear compensator using neural networks for trajectory control of...
grantor: University of TorontoThis thesis outlines the development and implementation of a...
grantor: University of TorontoThis thesis outlines the development and implementation of a...
This paper proposes a position control strategy based on Artificial Neural Networks (ANN) in the fac...
grantor: University of TorontoThis thesis summarizes an investigation of the application o...
The use of Neural Networks in solving nonlinear control problem is studied. A comparative study of v...
A new neural network (NN) control technique for robot manipulators is introduced in this paper. The ...
The basic robot control technique is the model based computed-torque control which is known to suffe...
It is well known that computed torque robot control is subjected to performance degradation due to u...
In this paper we are studying the Cartesian space robot manipulator control problem by using Neural ...
grantor: University of TorontoA neural network module was developed with the purpose of im...
In the paper is considered synthesis of the controller with tachometric feedback with feed forward c...
: The paper presents a neural network controller design for trajectory tracking for manipulators. Ly...
grantor: University of TorontoA neural network module was developed with the purpose of im...
In the paper is considered synthesis of the controller with tachometric feedback with feedforward co...
AbsZruct-This paper presents a nonlinear compensator using neural networks for trajectory control of...
grantor: University of TorontoThis thesis outlines the development and implementation of a...
grantor: University of TorontoThis thesis outlines the development and implementation of a...
This paper proposes a position control strategy based on Artificial Neural Networks (ANN) in the fac...
grantor: University of TorontoThis thesis summarizes an investigation of the application o...
The use of Neural Networks in solving nonlinear control problem is studied. A comparative study of v...