Owing to the symmetry of the rolling bearing structure and the rotating operation mode, the rolling bearing works in a complex environment. It is very easy to be submerged by noise and misdiagnosis. For the non-stationary signal in variable speed state, this paper presents a condition monitoring method based on deep belief network (DBN) optimized by multi-order fractional Fourier transform (FRFT) and sparrow search algorithm (SSA). Firstly, the fractional Fourier transform based on curve feature segmentation is used to filter the fault vibration signal and extract the fault feature frequency. Then, the fault features are input into the SSA-DBN model for training, and the bearing fault features are classified, identified, and diagnosed. Fina...
Deep learning has extensive application in fault diagnosis regarding the health monitoring of machin...
Rotating machinery often works under complex and variable working conditions; the vibration signals ...
Rolling bearing faults often lead to electromechanical system failure due to its high speed and comp...
Given the complexity of the operating conditions of rolling bearings in the actual rolling process o...
In the rolling bearing fault diagnosis, the vibration signal of single sensor is usually nonstationa...
Bearing is one of the most vital components of industrial machinery. The failure of bearing causes s...
Because deep belief networks (DBNs) in deep learning have a powerful ability to extract useful infor...
Rolling bearings play a pivotal role in rotating machinery. The remaining useful life prediction and...
According to the rolling bearing local fault vibration mechanism, a monopulse feature extraction and...
In response to the problem that nonlinear and non-stationary rolling bearing fault signals are easil...
Data-driven rolling-bearing fault diagnosis methods are mostly based on deep-learning models, and th...
As one of the important parts of modern mechanical equipment, the accurate real-time diagnosis of ro...
When rolling bearings fail, it is usually difficult to determine the degree of damage. To address th...
Rolling bearings are widely used in industrial manufacturing, and ensuring their stable and effectiv...
This paper presents a method which automatically detects and diagnoses defects of rolling element be...
Deep learning has extensive application in fault diagnosis regarding the health monitoring of machin...
Rotating machinery often works under complex and variable working conditions; the vibration signals ...
Rolling bearing faults often lead to electromechanical system failure due to its high speed and comp...
Given the complexity of the operating conditions of rolling bearings in the actual rolling process o...
In the rolling bearing fault diagnosis, the vibration signal of single sensor is usually nonstationa...
Bearing is one of the most vital components of industrial machinery. The failure of bearing causes s...
Because deep belief networks (DBNs) in deep learning have a powerful ability to extract useful infor...
Rolling bearings play a pivotal role in rotating machinery. The remaining useful life prediction and...
According to the rolling bearing local fault vibration mechanism, a monopulse feature extraction and...
In response to the problem that nonlinear and non-stationary rolling bearing fault signals are easil...
Data-driven rolling-bearing fault diagnosis methods are mostly based on deep-learning models, and th...
As one of the important parts of modern mechanical equipment, the accurate real-time diagnosis of ro...
When rolling bearings fail, it is usually difficult to determine the degree of damage. To address th...
Rolling bearings are widely used in industrial manufacturing, and ensuring their stable and effectiv...
This paper presents a method which automatically detects and diagnoses defects of rolling element be...
Deep learning has extensive application in fault diagnosis regarding the health monitoring of machin...
Rotating machinery often works under complex and variable working conditions; the vibration signals ...
Rolling bearing faults often lead to electromechanical system failure due to its high speed and comp...