The most suitable and generalized neural network that represents the control system dynamics is the Elman Neural Network (ENN). This is due to its ability to memorize and emulate the system states. Moreover, ENNs learned by Genetic algorithms are found to be more representative to system order in terms of its structural complexity in comparison to those learned by back propagation algorithm. This facility is utilized efficiently to find the minimum ENN structure that represents the discrete-time state space model of the DC motor. Then by comparing the ENN weights with the well-known discrete-time state space equation in terms of the motor physical parameters (moment of inertia, torque constant, armature inductance, etc.), these parameters c...
This paper presents a scrutinized investigation on system identification using artificial neural net...
The paper deals with methods of identification of the parameters of an induction motor model using g...
A successful experiment has been done to train the neural network to determine the drum mills’engine...
The most suitable and generalized neural network that represents the control system dynamics is the ...
This paper uses Artificial Neural Networks (ANNs) in estimating speed and controlling it for a separ...
Rotor resistance identification has been well recognized as one of the most critical factors affecti...
This study presents a recurrent neural network (RNN)-based nonlinear state estimator that uses an El...
A new approach to identify the nonlinear model of an induction machine using two generalized neurons...
This study presents a recurrent neural network (RNN) based nonlinear state estimator which uses an E...
In this paper, we study an induction motor identification in all states and conditions whether trans...
This study presents a nonlinear state estimator based on recurrent neural network (RNN) which uses a...
In Indirect Field Orientation (IFO) of induction motors, the interest for parameters identification ...
This paper applies genetic algorithms to the problem of induction motor parameter determination. Gen...
A DC motor is applied to delicate speed and position in the industry. The stability and productivity...
Estimating the parameters of a geared DC motor is crucial in terms of its non-linear features. In th...
This paper presents a scrutinized investigation on system identification using artificial neural net...
The paper deals with methods of identification of the parameters of an induction motor model using g...
A successful experiment has been done to train the neural network to determine the drum mills’engine...
The most suitable and generalized neural network that represents the control system dynamics is the ...
This paper uses Artificial Neural Networks (ANNs) in estimating speed and controlling it for a separ...
Rotor resistance identification has been well recognized as one of the most critical factors affecti...
This study presents a recurrent neural network (RNN)-based nonlinear state estimator that uses an El...
A new approach to identify the nonlinear model of an induction machine using two generalized neurons...
This study presents a recurrent neural network (RNN) based nonlinear state estimator which uses an E...
In this paper, we study an induction motor identification in all states and conditions whether trans...
This study presents a nonlinear state estimator based on recurrent neural network (RNN) which uses a...
In Indirect Field Orientation (IFO) of induction motors, the interest for parameters identification ...
This paper applies genetic algorithms to the problem of induction motor parameter determination. Gen...
A DC motor is applied to delicate speed and position in the industry. The stability and productivity...
Estimating the parameters of a geared DC motor is crucial in terms of its non-linear features. In th...
This paper presents a scrutinized investigation on system identification using artificial neural net...
The paper deals with methods of identification of the parameters of an induction motor model using g...
A successful experiment has been done to train the neural network to determine the drum mills’engine...