Abstract: In this paper a New RBF Neural Network based Sliding Mode Adaptive Controller (NNNSMAC) for Robot Manipulator trajectory tracking in the presence of uncertainties and disturbances is introduced. The research offers a learning with minimal parameter (LMP) technique for robotic manipulator trajectory tracking. The technique decreases the online adaptive parameters number in the RBF Neural Network to only one, lowering computational costs and boosting real-time performance. The RBFNN analyses the system's hidden non-linearities, and its weight value parameters are updated online using adaptive laws to control the nonlinear system's output to track a specific trajectory. The RBF model is used to create a Lyapunov function-based adapti...
This paper presents a radial basis function (RBF) neural network control scheme for manipulators wit...
AbsZruct-This paper presents a nonlinear compensator using neural networks for trajectory control of...
Tracking control for robotic manipulators is required for numerous automation tasks in manufacturing...
This paper briefly discusses about the Robust Controller based on Adaptive Sliding Mode Technique wi...
An adaptive neural network controller is brought forward by the paper to solve trajectory tracking p...
This paper presents a discrete-time sliding mode control based on neural networks designed for robot...
A fuzzy sliding mode controller based on radial basis function neural network (RBFNN) is proposed in...
This paper presents a discrete-time sliding mode control based on neural networks designed for robot...
A fuzzy sliding mode controller based on radial basis function neural network (RBFNN) is proposed in...
This paper proposes an adaptive control algorithm for robot manipulators considering motor model. Fi...
The manipulator, in most cases, works in unstructured and changeable conditions. With large external...
An adaptive neural network controller is brought forward by the paper to solve trajectory tracking p...
To achieve robust finite-time trajectory tracking control, this paper proposes a novel neural-networ...
In this study, a robust control strategy is suggested for industrial robotic manipulators. First, to...
This paper proposes a fuzzy sliding mode controller with radial basis function neural network (RBFNN...
This paper presents a radial basis function (RBF) neural network control scheme for manipulators wit...
AbsZruct-This paper presents a nonlinear compensator using neural networks for trajectory control of...
Tracking control for robotic manipulators is required for numerous automation tasks in manufacturing...
This paper briefly discusses about the Robust Controller based on Adaptive Sliding Mode Technique wi...
An adaptive neural network controller is brought forward by the paper to solve trajectory tracking p...
This paper presents a discrete-time sliding mode control based on neural networks designed for robot...
A fuzzy sliding mode controller based on radial basis function neural network (RBFNN) is proposed in...
This paper presents a discrete-time sliding mode control based on neural networks designed for robot...
A fuzzy sliding mode controller based on radial basis function neural network (RBFNN) is proposed in...
This paper proposes an adaptive control algorithm for robot manipulators considering motor model. Fi...
The manipulator, in most cases, works in unstructured and changeable conditions. With large external...
An adaptive neural network controller is brought forward by the paper to solve trajectory tracking p...
To achieve robust finite-time trajectory tracking control, this paper proposes a novel neural-networ...
In this study, a robust control strategy is suggested for industrial robotic manipulators. First, to...
This paper proposes a fuzzy sliding mode controller with radial basis function neural network (RBFNN...
This paper presents a radial basis function (RBF) neural network control scheme for manipulators wit...
AbsZruct-This paper presents a nonlinear compensator using neural networks for trajectory control of...
Tracking control for robotic manipulators is required for numerous automation tasks in manufacturing...