In condition based maintenance, different signal processing techniques are used to sense the faults through the vibration and acoustic emission signals, received from the machinery. These signal processing approaches mostly utilise time, frequency, and time-frequency domain analysis. The features obtained are later integrated with the different machine learning techniques to classify the faults into different categories. In this work, different statistical features of vibration signals in time and frequency domains are studied for the detection and localisation of faults in the roller bearings. These are later classified into healthy, outer race fault, inner race fault, and ball fault classes. The statistical features including skewness, ku...
Vibration analysis for conditional preventive maintenance is an essential tool for the industry. The...
ABSTRACT Induction motors are the most important and significant component of any industry. Inductio...
Rolling element bearing health condition is monitored by analysing its vibration signature. Raw vibr...
Rolling element bearings are a vital part in many rotating machinery, including vehicles. A defectiv...
AbstractDiagnoses of bearing faults are important to avoid catastrophic failures in rotating machine...
Vibration-based time domain features (TDFs) are commonly used to recognize patterns of machinery fau...
The present work proposes a new technique for bearing fault classification that combines time-freque...
Vibration and acoustic emission have received great attention of the research community for conditio...
In this study Fault diagnosis of Ball bearings is done by statistical analysis under various time do...
International audienceAmong the existing bearing faults, ball ones are known to be the most difficul...
A bearing is one of the important components in rotatory machines and has been widely used in variou...
Traditional fault diagnosis methods of bearings detect characteristic defect frequencies in the enve...
The condition of bearings, which are essential components in mechanisms, is crucial to safety. The a...
The present work proposes a new technique for bearing fault classification that combines time-freque...
The vibration signal obtained from operating machines contains information relating to machine condi...
Vibration analysis for conditional preventive maintenance is an essential tool for the industry. The...
ABSTRACT Induction motors are the most important and significant component of any industry. Inductio...
Rolling element bearing health condition is monitored by analysing its vibration signature. Raw vibr...
Rolling element bearings are a vital part in many rotating machinery, including vehicles. A defectiv...
AbstractDiagnoses of bearing faults are important to avoid catastrophic failures in rotating machine...
Vibration-based time domain features (TDFs) are commonly used to recognize patterns of machinery fau...
The present work proposes a new technique for bearing fault classification that combines time-freque...
Vibration and acoustic emission have received great attention of the research community for conditio...
In this study Fault diagnosis of Ball bearings is done by statistical analysis under various time do...
International audienceAmong the existing bearing faults, ball ones are known to be the most difficul...
A bearing is one of the important components in rotatory machines and has been widely used in variou...
Traditional fault diagnosis methods of bearings detect characteristic defect frequencies in the enve...
The condition of bearings, which are essential components in mechanisms, is crucial to safety. The a...
The present work proposes a new technique for bearing fault classification that combines time-freque...
The vibration signal obtained from operating machines contains information relating to machine condi...
Vibration analysis for conditional preventive maintenance is an essential tool for the industry. The...
ABSTRACT Induction motors are the most important and significant component of any industry. Inductio...
Rolling element bearing health condition is monitored by analysing its vibration signature. Raw vibr...