Controlling and processing of time-variant problem is universal in the fields of engineering and science, and the discrete-time recurrent neural network (RNN) model has been proven as an effective method for handling a variety of discrete time-variant problems. However, such model usually originates from the discretization research of continuous time-variant problem, and there is little research on the direct discretization method. To address the aforementioned problem, this article introduces a novel discrete-time RNN model for solving the discrete time-variant problem in a pioneering manner. Specifically, a discrete time-variant nonlinear system, which originates from the mathematical modeling of serial robot manipulator, is presented as ...
In this paper, a novel robust training algorithm of multi-input multi-output recurrent neural networ...
This paper presents a discrete-time sliding mode control based on neural networks designed for robot...
In this paper, a novel optimal adaptive radial basis function neural network (RBFNN) control has bee...
The improvement of recurrent neural network (RNN) algorithms is one of target of many researchers, a...
As a special kind of recurrent neural networks, Zhang neural network (ZNN) has been successfully app...
In the fields of artificial intelligence and control engineering, generalized-Sylvester matrix equat...
In this chapter, a Recurrent Higher Order Neural Network (RHONN) is used to identify the plant model...
The use of a new Recurrent Neural Network (RNN) for controlling a robot manipulator is presented in ...
Redundancy resolution is a critical problem in the control of robotic manipulators. Recurrent neural...
This paper presents a discrete-time sliding mode control based on neural networks designed for robo...
A novel approach to the derivation of a discrete-time decoupling control algorithm for robotic manip...
This paper presents a discrete-time variable structure control based on neural networks for a planar...
Noise and physical constraints of redundant manipulators are the two major challenges in the repetit...
Repetitive Motion Planning and Control of Redundant Robot Manipulators presents four typical motion ...
This paper presents a neural-network-based discrete-time variable structure control for a planar rob...
In this paper, a novel robust training algorithm of multi-input multi-output recurrent neural networ...
This paper presents a discrete-time sliding mode control based on neural networks designed for robot...
In this paper, a novel optimal adaptive radial basis function neural network (RBFNN) control has bee...
The improvement of recurrent neural network (RNN) algorithms is one of target of many researchers, a...
As a special kind of recurrent neural networks, Zhang neural network (ZNN) has been successfully app...
In the fields of artificial intelligence and control engineering, generalized-Sylvester matrix equat...
In this chapter, a Recurrent Higher Order Neural Network (RHONN) is used to identify the plant model...
The use of a new Recurrent Neural Network (RNN) for controlling a robot manipulator is presented in ...
Redundancy resolution is a critical problem in the control of robotic manipulators. Recurrent neural...
This paper presents a discrete-time sliding mode control based on neural networks designed for robo...
A novel approach to the derivation of a discrete-time decoupling control algorithm for robotic manip...
This paper presents a discrete-time variable structure control based on neural networks for a planar...
Noise and physical constraints of redundant manipulators are the two major challenges in the repetit...
Repetitive Motion Planning and Control of Redundant Robot Manipulators presents four typical motion ...
This paper presents a neural-network-based discrete-time variable structure control for a planar rob...
In this paper, a novel robust training algorithm of multi-input multi-output recurrent neural networ...
This paper presents a discrete-time sliding mode control based on neural networks designed for robot...
In this paper, a novel optimal adaptive radial basis function neural network (RBFNN) control has bee...