Most conventional diagnostic methods for fault diagnosis in rolling bearings are able to work only for the case of stationary operating conditions (constant speed and load), whereas, bearings often work at time-varying conditions. Some methods have been proposed for damage detection in bearings working under time-varying speed conditions. However, their application might increase the instrumentation cost because of providing a phase reference signal. Furthermore, some methods such as order tracking methods can only be applied for limited speed variations. In this study, a novel combined method for fault detection in rolling bearings based on cointegration is proposed for the development of fault features which are sensitive to the presence ...
Ensemble empirical mode decomposition (EEMD) is a newly developed noise assisted method aimed to so...
In order to accurately identify the fault conditions of rolling bearing, this paper presents a fault...
This study presents a fault detection of roller bearings through signal processing and optimization ...
Most conventional diagnostic methods for fault diagnosis in rolling bearings are able to work only f...
Abstract Early fault diagnosis of roller bearings is extremely important for rotating machines, espe...
Although Ensemble empirical mode decomposition (EEMD) method has been successfully applied to variou...
The present work proposes a new technique for bearing fault classification that combines time-freque...
The vibration signals provide useful information about the state of rolling bearing and the diagnosi...
Performing condition monitoring on critical machines such as gearboxes is essential to ensure that t...
In order to improve the effectiveness for identifying rolling bearing faults at an early stage, the ...
Rolling element bearings are a vital part in many rotating machinery, including vehicles. A defectiv...
In order to achieve the bearing fault diagnosis so as to ensure the steadiness of rotating machinery...
A bearing is one of the important components in rotatory machines and has been widely used in variou...
Time-frequency fault detection techniques were applied in this study, for monitoring real life indus...
Frequently, the Industry suggests non-trivial problems and new fields of research for the Academy. T...
Ensemble empirical mode decomposition (EEMD) is a newly developed noise assisted method aimed to so...
In order to accurately identify the fault conditions of rolling bearing, this paper presents a fault...
This study presents a fault detection of roller bearings through signal processing and optimization ...
Most conventional diagnostic methods for fault diagnosis in rolling bearings are able to work only f...
Abstract Early fault diagnosis of roller bearings is extremely important for rotating machines, espe...
Although Ensemble empirical mode decomposition (EEMD) method has been successfully applied to variou...
The present work proposes a new technique for bearing fault classification that combines time-freque...
The vibration signals provide useful information about the state of rolling bearing and the diagnosi...
Performing condition monitoring on critical machines such as gearboxes is essential to ensure that t...
In order to improve the effectiveness for identifying rolling bearing faults at an early stage, the ...
Rolling element bearings are a vital part in many rotating machinery, including vehicles. A defectiv...
In order to achieve the bearing fault diagnosis so as to ensure the steadiness of rotating machinery...
A bearing is one of the important components in rotatory machines and has been widely used in variou...
Time-frequency fault detection techniques were applied in this study, for monitoring real life indus...
Frequently, the Industry suggests non-trivial problems and new fields of research for the Academy. T...
Ensemble empirical mode decomposition (EEMD) is a newly developed noise assisted method aimed to so...
In order to accurately identify the fault conditions of rolling bearing, this paper presents a fault...
This study presents a fault detection of roller bearings through signal processing and optimization ...