Abstract. This paper describes an adaptive neural control system for governing the movements of a robotic wheelchair. It presents a new model of recurrent neural network based on a RBF architecture and combining in its architecture local recurrence and synaptic connections with FIR filters. This model is used in two different control architectures to command the movements of a robotic wheelchair. The training equations and the stability conditions of the control system are obtained. Practical tests show that the results achieved using the proposed method are better than those obtained using PID controllers or other recurrent neural networks model
Redundancy resolution is a critical problem in the control of robotic manipulators. Recurrent neural...
AbstractThis paper presents the application of adaptive neural networks to robot manipulator control...
The characteristic compliance of soft/continuum robot manipulators entails them with the desirable f...
Abstract. This paper shows the results obtained in controlling a mobile robot by means of local recu...
The use of a new Recurrent Neural Network (RNN) for controlling a robot manipulator is presented in ...
This paper presents an investigation on the trajectory control of a robot using a new type of recurr...
In this thesis, we investigate how dynamics in recurrent neural networks can be used to solve some s...
International audienceThe purpose of the research addressed in this paper is to develop a real time ...
This paper describes the use of recurrent neural networks in the control of a simulated planar two-j...
Whilst the necessity of finding an intelligent-based controlling method for a two-leg walking robot ...
This paper presents a radial basis function (RBF) neural network control scheme for manipulators wit...
In this paper, an adaptive neural network approach is developed based on the integral nonsingular te...
Radial Basis Function-Neural Networks are well-established function approximators. This paper presen...
Arena P, Cruse H, Fortuna L, Patané L. An obstacle avoidance method for a redundant manipulator cont...
Abstract:- In this paper, an innovative robust adaptive tracking control method for robotic systems ...
Redundancy resolution is a critical problem in the control of robotic manipulators. Recurrent neural...
AbstractThis paper presents the application of adaptive neural networks to robot manipulator control...
The characteristic compliance of soft/continuum robot manipulators entails them with the desirable f...
Abstract. This paper shows the results obtained in controlling a mobile robot by means of local recu...
The use of a new Recurrent Neural Network (RNN) for controlling a robot manipulator is presented in ...
This paper presents an investigation on the trajectory control of a robot using a new type of recurr...
In this thesis, we investigate how dynamics in recurrent neural networks can be used to solve some s...
International audienceThe purpose of the research addressed in this paper is to develop a real time ...
This paper describes the use of recurrent neural networks in the control of a simulated planar two-j...
Whilst the necessity of finding an intelligent-based controlling method for a two-leg walking robot ...
This paper presents a radial basis function (RBF) neural network control scheme for manipulators wit...
In this paper, an adaptive neural network approach is developed based on the integral nonsingular te...
Radial Basis Function-Neural Networks are well-established function approximators. This paper presen...
Arena P, Cruse H, Fortuna L, Patané L. An obstacle avoidance method for a redundant manipulator cont...
Abstract:- In this paper, an innovative robust adaptive tracking control method for robotic systems ...
Redundancy resolution is a critical problem in the control of robotic manipulators. Recurrent neural...
AbstractThis paper presents the application of adaptive neural networks to robot manipulator control...
The characteristic compliance of soft/continuum robot manipulators entails them with the desirable f...