A novel intelligent fault diagnosis method for motor roller bearings which operate under unsteady rotating speed and load is proposed in this paper. The pseudo Wigner-Ville distribution (PWVD) and the relative crossing information (RCI) methods are used for extracting the feature spectra from the non-stationary vibration signal measured for condition diagnosis. The RCI is used to automatically extract the feature spectrum from the time-frequency distribution of the vibration signal. The extracted feature spectrum is instantaneous, and not correlated with the rotation speed and load. By using the ant colony optimization (ACO) clustering algorithm, the synthesizing symptom parameters (SSP) for condition diagnosis are obtained. The experimenta...
The present work shows a condition monitoring system applied to electric motors ball bearings. Unlik...
A novel bearing vibration signal fault feature extraction and recognition method based on the improv...
The data from machinery health monitoring contains high noise components and low information content...
This study proposes a new condition diagnosis method for rotating machinery developed using least sq...
This paper deals with the diagnosis of faults in roller-element bearings as the core of a dedicated ...
Industries are always looking for more efficient maintenance systems to minimize machine downtime an...
Abstract:- This paper presents a method of fault diagnosis for a rolling bearing used in a reciproca...
application/pdfCondition diagnosis plays a significant role in modern equipment management. Establis...
We investigated the feasibility of utilizing the normalized characteristic frequencies for diagnosin...
Rotating equipment is considered as a key component in several industrial sectors. In fact, the cont...
In condition based maintenance, different signal processing techniques are used to sense the faults ...
When rotating machinery fails, the consequent vibration signal contains rich fault feature informati...
A fault diagnosis approach for roller bearing based on improved intrinsic timescale decomposition de...
Abstract In order to make accurate judgements of rolling bearing main fault types using the small sa...
When rolling bearings fail, it is usually difficult to determine the degree of damage. To address th...
The present work shows a condition monitoring system applied to electric motors ball bearings. Unlik...
A novel bearing vibration signal fault feature extraction and recognition method based on the improv...
The data from machinery health monitoring contains high noise components and low information content...
This study proposes a new condition diagnosis method for rotating machinery developed using least sq...
This paper deals with the diagnosis of faults in roller-element bearings as the core of a dedicated ...
Industries are always looking for more efficient maintenance systems to minimize machine downtime an...
Abstract:- This paper presents a method of fault diagnosis for a rolling bearing used in a reciproca...
application/pdfCondition diagnosis plays a significant role in modern equipment management. Establis...
We investigated the feasibility of utilizing the normalized characteristic frequencies for diagnosin...
Rotating equipment is considered as a key component in several industrial sectors. In fact, the cont...
In condition based maintenance, different signal processing techniques are used to sense the faults ...
When rotating machinery fails, the consequent vibration signal contains rich fault feature informati...
A fault diagnosis approach for roller bearing based on improved intrinsic timescale decomposition de...
Abstract In order to make accurate judgements of rolling bearing main fault types using the small sa...
When rolling bearings fail, it is usually difficult to determine the degree of damage. To address th...
The present work shows a condition monitoring system applied to electric motors ball bearings. Unlik...
A novel bearing vibration signal fault feature extraction and recognition method based on the improv...
The data from machinery health monitoring contains high noise components and low information content...