Addressing the problem that it is difficult to extract the features of vibration signal and diagnose the fault of rolling bearing, we propose a novel diagnosis method combining multisynchrosqueezing S transform and faster dictionary learning (MSSST-FDL). Firstly, MSSST is adopted to transform vibration signals into high-resolution time-frequency images. Then, the local binary pattern (LBP) operator is introduced to extract the low-dimensional texture features of time-frequency images, which improves the speed of fault recognition. Finally, nonnegative matrix factorization (NMF) with only one hyperparameter and nonnegative linear equation are used to solve the dictionary learning and feature coding, respectively. The feature coding is input ...
In order to improve the fault detection accuracy for rolling bearings, an automated fault diagnosis ...
Rolling bearings are key components in most mechanical facilities; hence, the diagnosis of their fau...
Vibration signals of the defect rolling element bearings are usually immersed in strong background ...
In condition based maintenance, different signal processing techniques are used to sense the faults ...
Aiming at the fact that the vibration signal of rolling bearing would exactly display non-stationary...
Rolling bearing faults often lead to electromechanical system failure due to its high speed and comp...
In actual industrial application scenarios, noise pollution makes it difficult to extract fault feat...
Traditional fault diagnosis methods of bearings detect characteristic defect frequencies in the enve...
Intelligent fault diagnosis gives timely information about the condition of mechanical components. S...
The health condition of rolling bearing can directly influence to the efficiency and lifecycle of ro...
The fault frequencies are as they are and cannot be improved. One can only improve its estimation qu...
Fault diagnosis is essentially a kind of pattern recognition. The measured signal samples usually di...
The traditional rolling bearing diagnosis algorithms have problems such as insufficient information ...
According to the dynamic characteristics of the rolling bearing vibration signal and the distributio...
Statistical features extraction from bearing fault signals requires a substantial level of knowledge...
In order to improve the fault detection accuracy for rolling bearings, an automated fault diagnosis ...
Rolling bearings are key components in most mechanical facilities; hence, the diagnosis of their fau...
Vibration signals of the defect rolling element bearings are usually immersed in strong background ...
In condition based maintenance, different signal processing techniques are used to sense the faults ...
Aiming at the fact that the vibration signal of rolling bearing would exactly display non-stationary...
Rolling bearing faults often lead to electromechanical system failure due to its high speed and comp...
In actual industrial application scenarios, noise pollution makes it difficult to extract fault feat...
Traditional fault diagnosis methods of bearings detect characteristic defect frequencies in the enve...
Intelligent fault diagnosis gives timely information about the condition of mechanical components. S...
The health condition of rolling bearing can directly influence to the efficiency and lifecycle of ro...
The fault frequencies are as they are and cannot be improved. One can only improve its estimation qu...
Fault diagnosis is essentially a kind of pattern recognition. The measured signal samples usually di...
The traditional rolling bearing diagnosis algorithms have problems such as insufficient information ...
According to the dynamic characteristics of the rolling bearing vibration signal and the distributio...
Statistical features extraction from bearing fault signals requires a substantial level of knowledge...
In order to improve the fault detection accuracy for rolling bearings, an automated fault diagnosis ...
Rolling bearings are key components in most mechanical facilities; hence, the diagnosis of their fau...
Vibration signals of the defect rolling element bearings are usually immersed in strong background ...