International audienceIn this work, an effort is made to characterize seven bearing states depending on the energy entropy of Intrinsic Mode Functions (IMFs) resulted from the Empirical Modes Decomposition (EMD).Three run-to-failure bearing vibration signals representing different defects either degraded or different failing components (roller, inner race and outer race) with healthy state lead to seven bearing states under study. Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) are used for feature reduction. Then, six classification scenarios are processed via a Probabilistic Neural Network (PNN) and a Simplified Fuzzy Adaptive resonance theory Map (SFAM) neural network. In other words, the three extracted featu...
The present work proposes a new technique for bearing fault classification that combines time-freque...
Vibration-based signal processing is the most popular and effective approach for fault diagnosis of ...
A study is presented to compare the performance of bearing fault detection using three types of art...
To improve the accuracy of bearing fault recognition, a novel bearing fault diagnosis (PAVMD-EE-PNN)...
Nowadays, Factors of a competition of Hard Disk Drive (HDD) industry have reduced the cost of manufa...
Bearings are used in a wide variety of rotating machineries. Bearing vibration signals are non-stati...
Bearings are essential components in the most electrical equipment. Procedures for monitoring the co...
In recent years, many studies have been conducted in bearing fault diagnosis, which has attracted in...
This paper proposes five artificial intelligent (AI) methods to determine in- duction motor bearing...
Rolling bearings are one of the most widely used bearings in industrial machines. Deterioration in t...
Bearing degradation is the most common source of faults in electrical machines. In this context, th...
International audienceMachine health condition (MHC) prediction is useful for preventing unexpected ...
This paper presents an approach of intelligent fault classification of induction motor bearing (IMB...
AbstractRolling element bearings are the most crucial part of any rotating machines. The failures of...
Bearing fault diagnosis has a pivotal role in condition-based maintenance. Vibration spectra analysi...
The present work proposes a new technique for bearing fault classification that combines time-freque...
Vibration-based signal processing is the most popular and effective approach for fault diagnosis of ...
A study is presented to compare the performance of bearing fault detection using three types of art...
To improve the accuracy of bearing fault recognition, a novel bearing fault diagnosis (PAVMD-EE-PNN)...
Nowadays, Factors of a competition of Hard Disk Drive (HDD) industry have reduced the cost of manufa...
Bearings are used in a wide variety of rotating machineries. Bearing vibration signals are non-stati...
Bearings are essential components in the most electrical equipment. Procedures for monitoring the co...
In recent years, many studies have been conducted in bearing fault diagnosis, which has attracted in...
This paper proposes five artificial intelligent (AI) methods to determine in- duction motor bearing...
Rolling bearings are one of the most widely used bearings in industrial machines. Deterioration in t...
Bearing degradation is the most common source of faults in electrical machines. In this context, th...
International audienceMachine health condition (MHC) prediction is useful for preventing unexpected ...
This paper presents an approach of intelligent fault classification of induction motor bearing (IMB...
AbstractRolling element bearings are the most crucial part of any rotating machines. The failures of...
Bearing fault diagnosis has a pivotal role in condition-based maintenance. Vibration spectra analysi...
The present work proposes a new technique for bearing fault classification that combines time-freque...
Vibration-based signal processing is the most popular and effective approach for fault diagnosis of ...
A study is presented to compare the performance of bearing fault detection using three types of art...