As a novel time-frequency analysis method, adaptive local iterative filtering (ALIF) can decompose the time series into several stable components which contain the main fault information. In addition, the amplitude of singular value obtained by singular value decomposition (SVD) can reflect the energy distribution. Naturally, there are certain differences in the energy produced by different faults such as the broken tooth, wearing and normal. Thus, a novel method of mechanical fault classification method based on adaptive local iterative filtering and singular value decomposition is proposed in this paper. Firstly, ALIF method decomposed the original vibration signal into a number of stable components to establish an initial feature vector ...
Considering the difficulty in the diagnosis of compound faults in rolling bearings, the paper combin...
Rolling bearings are important components in rotary machinery systems. In the field of multi-fault d...
Early fault diagnosis in rolling bearings is crucial to maintenance and safety in industry. To highl...
As a novel time-frequency analysis method, adaptive local iterative filtering (ALIF) can decompose t...
Singular value decomposition (SVD) is an effective method used in bearing fault diagnosis. Ideally t...
The impulsive fault feature signal of rolling bearings at the early failure stage is easily contamin...
International audienceThis paper thus proposes a new method combining Empirical Mode Decomposition (...
The vibration caused by an early defect on the rolling element bearing (REB) is very weak and easy t...
The fault frequencies are as they are and cannot be improved. One can only improve its estimation qu...
The diagnosis of early-stage defects of rolling element bearings (REBs) using vibration signals is a...
In condition based maintenance, different signal processing techniques are used to sense the faults ...
Addressing the problem that it is difficult to extract the features of vibration signal and diagnose...
The health condition of rolling-element bearings is important for machine performance and operating ...
In order to achieve the bearing fault diagnosis so as to ensure the steadiness of rotating machinery...
In order to fully exploit the useful information of winger Time-Frequency Spectrum,a fault diagnosis...
Considering the difficulty in the diagnosis of compound faults in rolling bearings, the paper combin...
Rolling bearings are important components in rotary machinery systems. In the field of multi-fault d...
Early fault diagnosis in rolling bearings is crucial to maintenance and safety in industry. To highl...
As a novel time-frequency analysis method, adaptive local iterative filtering (ALIF) can decompose t...
Singular value decomposition (SVD) is an effective method used in bearing fault diagnosis. Ideally t...
The impulsive fault feature signal of rolling bearings at the early failure stage is easily contamin...
International audienceThis paper thus proposes a new method combining Empirical Mode Decomposition (...
The vibration caused by an early defect on the rolling element bearing (REB) is very weak and easy t...
The fault frequencies are as they are and cannot be improved. One can only improve its estimation qu...
The diagnosis of early-stage defects of rolling element bearings (REBs) using vibration signals is a...
In condition based maintenance, different signal processing techniques are used to sense the faults ...
Addressing the problem that it is difficult to extract the features of vibration signal and diagnose...
The health condition of rolling-element bearings is important for machine performance and operating ...
In order to achieve the bearing fault diagnosis so as to ensure the steadiness of rotating machinery...
In order to fully exploit the useful information of winger Time-Frequency Spectrum,a fault diagnosis...
Considering the difficulty in the diagnosis of compound faults in rolling bearings, the paper combin...
Rolling bearings are important components in rotary machinery systems. In the field of multi-fault d...
Early fault diagnosis in rolling bearings is crucial to maintenance and safety in industry. To highl...