Radial Basis Function-Neural Networks are well-established function approximators. This paper presents an adaptive Gaussian RBF-NN with an extended learning-while controlling behaviour. The weights, function centres and widths are updated online based on a sliding mode control element. In this way, the need for fixing parameters a priori is overcome and the network is able to adapt to dynamically changing systems. The aim of this work is to present an extended adaptive neuro-controller for trajectory tracking of serial robots with unknown dynamics. The adaptive RBF-NN is used to approximate the unknown robot manipulator dynamics-function. It is combined with a conventional controller and a bio-inpsired extension for the control of a robot i...
This paper presents an investigation on the trajectory control of a robot using a new type of recurr...
This dissertation is concerned with the development of neural network-based methods to the control o...
The extreme nonlinearity of robotic systems renders the control design step harder. The consideratio...
An adaptive neural network controller is brought forward by the paper to solve trajectory tracking p...
Tracking control for robotic manipulators is required for numerous automation tasks in manufacturing...
Abstract: In this paper a New RBF Neural Network based Sliding Mode Adaptive Controller (NNNSMAC) fo...
This paper briefly discusses about the Robust Controller based on Adaptive Sliding Mode Technique wi...
Abstract:- In this paper, an innovative robust adaptive tracking control method for robotic systems ...
© 2019 Elsevier B.V. Robot learning from demonstration (LfD) enables robots to be fast programmed. T...
This paper presents a radial basis function (RBF) neural network control scheme for manipulators wit...
This article proposes an RBFNN (Radial Basis Function Neural Network) and sliding mode based control...
A fuzzy sliding mode controller based on radial basis function neural network (RBFNN) is proposed in...
A controller architecture for nonlinear systems described by Gaussian RBF neural networks is propose...
[[abstract]]The paper presents a direct adaptive control architecture for a class of nonlinear dynam...
Radial Basis Function Neural Networks are well suited for learning the systemdynamics of a robot man...
This paper presents an investigation on the trajectory control of a robot using a new type of recurr...
This dissertation is concerned with the development of neural network-based methods to the control o...
The extreme nonlinearity of robotic systems renders the control design step harder. The consideratio...
An adaptive neural network controller is brought forward by the paper to solve trajectory tracking p...
Tracking control for robotic manipulators is required for numerous automation tasks in manufacturing...
Abstract: In this paper a New RBF Neural Network based Sliding Mode Adaptive Controller (NNNSMAC) fo...
This paper briefly discusses about the Robust Controller based on Adaptive Sliding Mode Technique wi...
Abstract:- In this paper, an innovative robust adaptive tracking control method for robotic systems ...
© 2019 Elsevier B.V. Robot learning from demonstration (LfD) enables robots to be fast programmed. T...
This paper presents a radial basis function (RBF) neural network control scheme for manipulators wit...
This article proposes an RBFNN (Radial Basis Function Neural Network) and sliding mode based control...
A fuzzy sliding mode controller based on radial basis function neural network (RBFNN) is proposed in...
A controller architecture for nonlinear systems described by Gaussian RBF neural networks is propose...
[[abstract]]The paper presents a direct adaptive control architecture for a class of nonlinear dynam...
Radial Basis Function Neural Networks are well suited for learning the systemdynamics of a robot man...
This paper presents an investigation on the trajectory control of a robot using a new type of recurr...
This dissertation is concerned with the development of neural network-based methods to the control o...
The extreme nonlinearity of robotic systems renders the control design step harder. The consideratio...