In order to achieve high precision control of the dexterous hand, an adaptive neural network sliding mode control algorithm based on the U-K (Udwadia-Kalaba) equation is proposed. Firstly, based on the U-K equation and considering the ideal and non-ideal constrained force at each link of the dexterous hand, the detailed dynamic equation is derived. Secondly, considering the uncertainty of the non-ideal constrained force (mainly the friction force on each link of the dexterous hand) and the chattering phenomenon when using sliding mode control alone, the adaptive neural network and the sliding mode control algorithm are combined to realize the high-precision tracking and estimation of each link angle trajectory and the non-ideal constrained ...
In this study, a robust control strategy is suggested for industrial robotic manipulators. First, to...
This paper proposes an adaptive wave neural network nonsingular terminal sliding mode control (AWNN-...
Abstract – This study addresses the design and properties of a sliding-mode neural-network control (...
A combination of Adaptive Neural Network with sliding mode control (NNSMC) is proposed in this paper...
Abstract: In this paper a New RBF Neural Network based Sliding Mode Adaptive Controller (NNNSMAC) fo...
The hand has been a great tool for humans with the advantage of dexterous function and power to do d...
In this article, adaptive neural network control of coordinated manipulators is consid-ered in an ef...
In this paper, a neural network (NN) based adaptive controller has been successfully developed for t...
In this paper, an adaptive neural network approach is developed based on the integral nonsingular te...
International audienceA robust neural adaptive integral sliding mode control approach is proposed in...
In this paper, a neural network (NN) based adaptive controller has been successfully developed for t...
This paper presents a control method for the problem of trajectory jitter and poor tracking performa...
Robotic rehabilitation of the lower limb exoskeleton following neurological injury has proven to be ...
In this paper, the feedforward neural network with Levenberg-Marquardt backpropagation training algo...
The manipulator, in most cases, works in unstructured and changeable conditions. With large external...
In this study, a robust control strategy is suggested for industrial robotic manipulators. First, to...
This paper proposes an adaptive wave neural network nonsingular terminal sliding mode control (AWNN-...
Abstract – This study addresses the design and properties of a sliding-mode neural-network control (...
A combination of Adaptive Neural Network with sliding mode control (NNSMC) is proposed in this paper...
Abstract: In this paper a New RBF Neural Network based Sliding Mode Adaptive Controller (NNNSMAC) fo...
The hand has been a great tool for humans with the advantage of dexterous function and power to do d...
In this article, adaptive neural network control of coordinated manipulators is consid-ered in an ef...
In this paper, a neural network (NN) based adaptive controller has been successfully developed for t...
In this paper, an adaptive neural network approach is developed based on the integral nonsingular te...
International audienceA robust neural adaptive integral sliding mode control approach is proposed in...
In this paper, a neural network (NN) based adaptive controller has been successfully developed for t...
This paper presents a control method for the problem of trajectory jitter and poor tracking performa...
Robotic rehabilitation of the lower limb exoskeleton following neurological injury has proven to be ...
In this paper, the feedforward neural network with Levenberg-Marquardt backpropagation training algo...
The manipulator, in most cases, works in unstructured and changeable conditions. With large external...
In this study, a robust control strategy is suggested for industrial robotic manipulators. First, to...
This paper proposes an adaptive wave neural network nonsingular terminal sliding mode control (AWNN-...
Abstract – This study addresses the design and properties of a sliding-mode neural-network control (...