The traditional rolling bearing diagnosis algorithms have problems such as insufficient information on time-frequency images and poor feature extraction ability of the diagnosis model. These problems limit the improvement of diagnosis performance. In this article, the input of the time-frequency image and intelligent diagnosis algorithms are optimized. Firstly, the characteristics of two advanced time-frequency analysis algorithms are deeply analyzed, i.e., multisynchrosqueezing transform (MSST) and time-reassigned multisynchrosqueezing transform (TMSST). Then, we propose time-frequency compression fusion (TFCF) and a residual time-frequency mixed attention network (RTFANet). Among them, TFCF superposes and splices two time-frequency images...
Traditional feature extraction and selection is a labor-intensive process requiring expert knowledge...
Intelligent diagnosis applies deep learning algorithms to mechanical fault diagnosis, which can clas...
Statistical features extraction from bearing fault signals requires a substantial level of knowledge...
An artificial-intelligence (AI)-based method for fault diagnosis is a strong candidate for industria...
Addressing the problem that it is difficult to extract the features of vibration signal and diagnose...
In actual industrial application scenarios, noise pollution makes it difficult to extract fault feat...
Rotating machinery usually suffers from a type of fault, where the fault feature extracted in the fr...
In order to diagnose the faults of rolling bearings in motors via time-frequency analysis of bearing...
Data-driven rolling-bearing fault diagnosis methods are mostly based on deep-learning models, and th...
The insufficient learning ability of traditional convolutional neural network for key fault features...
Shock pulse method is a widely used technique for condition monitoring of rolling bearing. However, ...
Signals with multiple components and fast-varying instantaneous frequencies reduce the readability o...
Accurate fault diagnosis is critical to operating rotating machinery safely and efficiently. Traditi...
Mechanical equipment failure may cause massive economic and even life loss. Therefore, the diagnosis...
As one of the important parts of modern mechanical equipment, the accurate real-time diagnosis of ro...
Traditional feature extraction and selection is a labor-intensive process requiring expert knowledge...
Intelligent diagnosis applies deep learning algorithms to mechanical fault diagnosis, which can clas...
Statistical features extraction from bearing fault signals requires a substantial level of knowledge...
An artificial-intelligence (AI)-based method for fault diagnosis is a strong candidate for industria...
Addressing the problem that it is difficult to extract the features of vibration signal and diagnose...
In actual industrial application scenarios, noise pollution makes it difficult to extract fault feat...
Rotating machinery usually suffers from a type of fault, where the fault feature extracted in the fr...
In order to diagnose the faults of rolling bearings in motors via time-frequency analysis of bearing...
Data-driven rolling-bearing fault diagnosis methods are mostly based on deep-learning models, and th...
The insufficient learning ability of traditional convolutional neural network for key fault features...
Shock pulse method is a widely used technique for condition monitoring of rolling bearing. However, ...
Signals with multiple components and fast-varying instantaneous frequencies reduce the readability o...
Accurate fault diagnosis is critical to operating rotating machinery safely and efficiently. Traditi...
Mechanical equipment failure may cause massive economic and even life loss. Therefore, the diagnosis...
As one of the important parts of modern mechanical equipment, the accurate real-time diagnosis of ro...
Traditional feature extraction and selection is a labor-intensive process requiring expert knowledge...
Intelligent diagnosis applies deep learning algorithms to mechanical fault diagnosis, which can clas...
Statistical features extraction from bearing fault signals requires a substantial level of knowledge...