In industrial drive systems, one of the widest group of machines are induction motors. During normal operation, these machines are exposed to various types of damages, resulting in high economic losses. Electrical circuits damages are more than half of all damages appearing in induction motors. In connection with the above, the task of early detection of machine defects becomes a priority in modern drive systems. The article presents the possibility of using deep neural networks to detect stator and rotor damages. The opportunity of detecting shorted turns and the broken rotor bars with the use of an axial flux signal is presented
In this paper, the performance of machine learning methods for squirrel cage induction motor broken ...
Electrical winding faults, namely stator short-circuits and rotor bar damage, in total constitute ar...
The detection of broken rotor bars in three-phase squirrel cage induction motors by means of current...
The paper presents the possibility of using neural networks in the detection of stator and rotor ele...
Due to the fact that inter-turn short-circuits are the ones of the most common causes of damage to s...
Bearing faults account for over 40% of induction motor faults, and for this reason, for several deca...
Bearing faults account for over 40% of induction motor faults, and for this reason, for several deca...
In this paper deep neural networks are proposed to diagnose inter-turn short-circuits of induction m...
Induction motors constitute the largest proportion of motors in industry. This type of motor experie...
The growing demand for dependable manufacturing techniques has sped up research into condition monit...
The growing demand for dependable manufacturing techniques has sped up research into condition monit...
The paper presents application of the radial neural network for detection of faults in induction mot...
Modern industrial plants are complex and very sensitive to costs to the business of unscheduled down...
Predictive diagnosis of motor defects can reduce repair and downtime costs of electrical equipment. ...
Electric motors are used extensively in numerous industries, and their failure can result not only i...
In this paper, the performance of machine learning methods for squirrel cage induction motor broken ...
Electrical winding faults, namely stator short-circuits and rotor bar damage, in total constitute ar...
The detection of broken rotor bars in three-phase squirrel cage induction motors by means of current...
The paper presents the possibility of using neural networks in the detection of stator and rotor ele...
Due to the fact that inter-turn short-circuits are the ones of the most common causes of damage to s...
Bearing faults account for over 40% of induction motor faults, and for this reason, for several deca...
Bearing faults account for over 40% of induction motor faults, and for this reason, for several deca...
In this paper deep neural networks are proposed to diagnose inter-turn short-circuits of induction m...
Induction motors constitute the largest proportion of motors in industry. This type of motor experie...
The growing demand for dependable manufacturing techniques has sped up research into condition monit...
The growing demand for dependable manufacturing techniques has sped up research into condition monit...
The paper presents application of the radial neural network for detection of faults in induction mot...
Modern industrial plants are complex and very sensitive to costs to the business of unscheduled down...
Predictive diagnosis of motor defects can reduce repair and downtime costs of electrical equipment. ...
Electric motors are used extensively in numerous industries, and their failure can result not only i...
In this paper, the performance of machine learning methods for squirrel cage induction motor broken ...
Electrical winding faults, namely stator short-circuits and rotor bar damage, in total constitute ar...
The detection of broken rotor bars in three-phase squirrel cage induction motors by means of current...