An improvement of induction machine rotor fault diagnosis based on neural network approach is presented. A neural network can substitute in a more effective way the faulted machine models used to formalize the knowledge base of the diagnostic system with suitably chosen inputs and outputs. Training the neural network by data achieved through experimental tests on healthy machines and through simulation in case of faulted machines, the diagnostic system can discern between `healthy' and `faulty' machines. This procedure substitutes the statement of a trigger threshold, needed in the diagnostic procedure based on the machine models
Various applications of AI techniques (expert systems, neural networks and fuzzy logic) presented in...
Current signal monitoring (CSM) can be used as an effective tool for diagnosing broken rotor bars fa...
The detection of broken rotor bars in three-phase squirrel cage induction motors by means of current...
An improvement of induction machine rotor fault diagnosis based on a neural network approach is pres...
Fault detection and diagnosis is currently a very important problem in induction machine management....
Fault detection and diagnosis is currently a very important problem in induction machine management....
The paper deals with the analysis of an Artificial Neural Network (ANN) approach suitable for on - l...
A Multy Layer Perceptron Neural Network able to recognize inter-turn short-circuits in the stator of...
A Multy Layer Perceptron Neural Network able to recognize inter-turn short-circuits in the stator of...
This paper presents a neural network that is able to give, together with the rotor fault diagnosis, ...
The paper presents the possibility of using neural networks in the detection of stator and rotor ele...
The benefits of machine condition monitoring have been widely recognized as superior with respect to...
This work studied the use of neural networks for model based fault diagnostics of induction motors. ...
Abstract-Induction motors are subject to incipient faults which, if undetected, can lead to serious ...
Diagnostics of electrical machines is complicated process based on such elements as: measurements of...
Various applications of AI techniques (expert systems, neural networks and fuzzy logic) presented in...
Current signal monitoring (CSM) can be used as an effective tool for diagnosing broken rotor bars fa...
The detection of broken rotor bars in three-phase squirrel cage induction motors by means of current...
An improvement of induction machine rotor fault diagnosis based on a neural network approach is pres...
Fault detection and diagnosis is currently a very important problem in induction machine management....
Fault detection and diagnosis is currently a very important problem in induction machine management....
The paper deals with the analysis of an Artificial Neural Network (ANN) approach suitable for on - l...
A Multy Layer Perceptron Neural Network able to recognize inter-turn short-circuits in the stator of...
A Multy Layer Perceptron Neural Network able to recognize inter-turn short-circuits in the stator of...
This paper presents a neural network that is able to give, together with the rotor fault diagnosis, ...
The paper presents the possibility of using neural networks in the detection of stator and rotor ele...
The benefits of machine condition monitoring have been widely recognized as superior with respect to...
This work studied the use of neural networks for model based fault diagnostics of induction motors. ...
Abstract-Induction motors are subject to incipient faults which, if undetected, can lead to serious ...
Diagnostics of electrical machines is complicated process based on such elements as: measurements of...
Various applications of AI techniques (expert systems, neural networks and fuzzy logic) presented in...
Current signal monitoring (CSM) can be used as an effective tool for diagnosing broken rotor bars fa...
The detection of broken rotor bars in three-phase squirrel cage induction motors by means of current...