Rolling element bearing defects are among the main reasons for the breakdown of electrical machines, and therefore, early diagnosis of these is necessary to avoid more catastrophic failure consequences. This paper presents a novel approach for identifying rolling element bearing defects in brushless DC motors under non-stationary operating conditions. Stator current and lateral vibration measurements are selected as fault indicators to extract meaningful features, using a discrete wavelet transform. These features are further reduced via the application of orthogonal fuzzy neighbourhood discriminative analysis. A recurrent neural network is then used to detect and classify the presence of bearing faults. The proposed system is implemented a...
This paper presents a method based on classification techniques for automatic fault diagnosis of ro...
This paper deals with the diagnosis of faults in roller-element bearings as the core of a dedicated ...
Frequently, the Industry suggests non-trivial problems and new fields of research for the Academy. T...
Bearings are essential components in the most electrical equipment. Procedures for monitoring the co...
Bearing degradation is the most common source of faults in electrical machines. In this context, th...
This paper is about diagnosis and classification of bearing faults using Neural Networks (NN), emplo...
In this work, we present a diagnosis system for rolling bearings that leverages simultaneous measure...
This paper presents a method, based on classification techniques, for automatic detection and diagno...
Electrical machines are prone to faults and failures and demand incessant monitoring for their confi...
It is essential to have prior warning of incipient fault (s) in any critical equipment occurring ...
network expert system for rolling element bearing fault diagnosis Pratesh Jayaswal1, SN Verma2 and A...
This paper presents a method, based on classification techniques, for automatic detection and diagno...
AbstractRolling element bearings are the most crucial part of any rotating machines. The failures of...
The most frequent causes of failure in electrical machines are due to bearing related faults. By mea...
Today's industry uses increasingly complex machines, some with extremely demanding performance crite...
This paper presents a method based on classification techniques for automatic fault diagnosis of ro...
This paper deals with the diagnosis of faults in roller-element bearings as the core of a dedicated ...
Frequently, the Industry suggests non-trivial problems and new fields of research for the Academy. T...
Bearings are essential components in the most electrical equipment. Procedures for monitoring the co...
Bearing degradation is the most common source of faults in electrical machines. In this context, th...
This paper is about diagnosis and classification of bearing faults using Neural Networks (NN), emplo...
In this work, we present a diagnosis system for rolling bearings that leverages simultaneous measure...
This paper presents a method, based on classification techniques, for automatic detection and diagno...
Electrical machines are prone to faults and failures and demand incessant monitoring for their confi...
It is essential to have prior warning of incipient fault (s) in any critical equipment occurring ...
network expert system for rolling element bearing fault diagnosis Pratesh Jayaswal1, SN Verma2 and A...
This paper presents a method, based on classification techniques, for automatic detection and diagno...
AbstractRolling element bearings are the most crucial part of any rotating machines. The failures of...
The most frequent causes of failure in electrical machines are due to bearing related faults. By mea...
Today's industry uses increasingly complex machines, some with extremely demanding performance crite...
This paper presents a method based on classification techniques for automatic fault diagnosis of ro...
This paper deals with the diagnosis of faults in roller-element bearings as the core of a dedicated ...
Frequently, the Industry suggests non-trivial problems and new fields of research for the Academy. T...