A new approach to identify the nonlinear model of an induction machine using two generalized neurons (GNs) is presented in this paper. Compared to the multilayer perceptron feedforward neural network, a GN has simpler structure and lesser requirement in terms of memory storage which is makes it attractive for hardware implementation. This method shows that with less number of weights, GN is able to learn the dynamics of an induction machine. The proposed model is made by two coupled networks. A modified particle swarm optimization algorithm is designed to solve this distinctive GN training problem. A pseudo-random binary sequence signal injected to the induction machine operating at its rated value was chosen as the test input signal. For v...
This paper provides a novel method for nonlinear identification of multiple turbogenerators in a fiv...
The design of robust power systems entails extensive use of computer simulations, increasing the dem...
This paper propose the use of artificial neural networks to control the speed of a Double Star Induc...
The use of artificial neural networks (ANNs) to identify and control induction machines is proposed....
Abstract: In the frame of a study on real-time emulators of electromechanical systems, we have built...
In this paper the authors present a new advanced control algorithm for speed and flux tracking of an...
Neural networks are used in a wide number of fields including signal and image processing, modeling ...
This search deals with the control of a process in order to take into account non linearities withou...
In this paper, the possibility to use neural networks for the monitoring of the load torque of induc...
The most suitable and generalized neural network that represents the control system dynamics is the ...
Abstract: Recently there has been increasing interest in the development of efficient control strate...
The application of a spiking neural network (SNN) and a multi-layer perceptron (MLP) for online iden...
The increasing complexity of a modern power grid highlights the need for advanced system identificat...
This paper proposes a new and a novel technique based on Artificial Neural Networks (ANNs) for nonli...
This paper presents a neural network that is able to give, together with the rotor fault diagnosis, ...
This paper provides a novel method for nonlinear identification of multiple turbogenerators in a fiv...
The design of robust power systems entails extensive use of computer simulations, increasing the dem...
This paper propose the use of artificial neural networks to control the speed of a Double Star Induc...
The use of artificial neural networks (ANNs) to identify and control induction machines is proposed....
Abstract: In the frame of a study on real-time emulators of electromechanical systems, we have built...
In this paper the authors present a new advanced control algorithm for speed and flux tracking of an...
Neural networks are used in a wide number of fields including signal and image processing, modeling ...
This search deals with the control of a process in order to take into account non linearities withou...
In this paper, the possibility to use neural networks for the monitoring of the load torque of induc...
The most suitable and generalized neural network that represents the control system dynamics is the ...
Abstract: Recently there has been increasing interest in the development of efficient control strate...
The application of a spiking neural network (SNN) and a multi-layer perceptron (MLP) for online iden...
The increasing complexity of a modern power grid highlights the need for advanced system identificat...
This paper proposes a new and a novel technique based on Artificial Neural Networks (ANNs) for nonli...
This paper presents a neural network that is able to give, together with the rotor fault diagnosis, ...
This paper provides a novel method for nonlinear identification of multiple turbogenerators in a fiv...
The design of robust power systems entails extensive use of computer simulations, increasing the dem...
This paper propose the use of artificial neural networks to control the speed of a Double Star Induc...