Rolling bearings are important components of rotating machines. For their preventive maintenance, it is not enough to know whether there is any fault or the fault type. For an effective maintenance, a fault severity monitoring needs to be conducted. Currently, the bearing fault diagnosis method based on time–frequency image (TFI) recognition is attracting increasing attention. This paper contributes to the ongoing investigation by proposing a new approach for the fault severity monitoring of rolling bearings based on the texture feature extraction of sparse TFIs. The first and main step is to obtain accurate TFIs from the vibration signals of rolling bearings. Traditional time–frequency analysis methods have disadvantages such a...
Addressing the problem that it is difficult to extract the features of vibration signal and diagnose...
Bearing is one of the important things in machining. Bearing are considered as critical mechanical c...
Rolling-bearing faults can be effectively reflected using time-frequency characteristics. However, t...
Rolling bearings are important components of rotating machines. For their preventive maintenance, it...
The present work proposes a new technique for bearing fault classification that combines time-freque...
In order to diagnose the faults of rolling bearings in motors via time-frequency analysis of bearing...
The present work proposes a new technique for bearing fault classification that combines time-freque...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
In condition based maintenance, different signal processing techniques are used to sense the faults ...
It is very difficult to extract the feature frequency of the vibration signal of the rolling bearing...
We investigated the feasibility of utilizing the normalized characteristic frequencies for diagnosin...
The health condition of rolling bearing can directly influence to the efficiency and lifecycle of ro...
Rolling bearings are critical to the normal operation of mechanical systems, which often undergo tim...
The detection of faults and operational abnormalities in rotating machine elements like rolling elem...
Time-frequency fault detection techniques were applied in this study, for monitoring real life indus...
Addressing the problem that it is difficult to extract the features of vibration signal and diagnose...
Bearing is one of the important things in machining. Bearing are considered as critical mechanical c...
Rolling-bearing faults can be effectively reflected using time-frequency characteristics. However, t...
Rolling bearings are important components of rotating machines. For their preventive maintenance, it...
The present work proposes a new technique for bearing fault classification that combines time-freque...
In order to diagnose the faults of rolling bearings in motors via time-frequency analysis of bearing...
The present work proposes a new technique for bearing fault classification that combines time-freque...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
In condition based maintenance, different signal processing techniques are used to sense the faults ...
It is very difficult to extract the feature frequency of the vibration signal of the rolling bearing...
We investigated the feasibility of utilizing the normalized characteristic frequencies for diagnosin...
The health condition of rolling bearing can directly influence to the efficiency and lifecycle of ro...
Rolling bearings are critical to the normal operation of mechanical systems, which often undergo tim...
The detection of faults and operational abnormalities in rotating machine elements like rolling elem...
Time-frequency fault detection techniques were applied in this study, for monitoring real life indus...
Addressing the problem that it is difficult to extract the features of vibration signal and diagnose...
Bearing is one of the important things in machining. Bearing are considered as critical mechanical c...
Rolling-bearing faults can be effectively reflected using time-frequency characteristics. However, t...