In order to improve the accuracy of the fault diagnosis of roller bearings, this paper proposes a kind of fault diagnosis algorithm based on manifold learning combined with a wavelet neural network. First, a high-dimensional feature signal set is obtained using a conventional feature extraction algorithm; second, an improved Laplacian characteristic mapping algorithm is proposed to reduce the dimensions of the characteristics and obtain an effective characteristic signal. Finally, the processed characteristic signal is inputted into the constructed wavelet neural network whose output is the types of fault. In the actual experiment of recognizing data sets on roller bearing failures, the validity and accuracy of the method for diagnosing fau...
To address the difficulty of early fault diagnosis of rolling bearings, this paper proposes a rollin...
Data-driven based rolling bearing fault diagnosis has been widely investigated in recent years. Howe...
This study proposes a novel fault diagnosis method that is based on empirical wavelet transform (EWT...
In order to improve the accuracy of the fault diagnosis of roller bearings, this paper proposes a ki...
Aiming at the fault diagnosis of rolling element bearings, propose a method for fine diagnosis of be...
A new technique for an automated detection and diagnosis of rolling bearing faults is presented. The...
As a critical component in rotating machinery field, rolling bearings are prone to damage under the ...
As one of the important parts of modern mechanical equipment, the accurate real-time diagnosis of ro...
Wavelet neural networks (WNN) combing the properties of the wavelet transform and the advantages of ...
Bearings are widely used in various electrical and mechanical equipment. As their core components, f...
In this dissertation, Wavelet-ANN (Artificial Neural Network) and Wavelet-ESVR (Energy Singular Valu...
Roller bearing is one of the machine industry’s common components. The roller bearing operation stat...
Accurate fault diagnosis is critical to operating rotating machinery safely and efficiently. Traditi...
A method based on wavelet and deep neural network for rolling-element bearing fault data automatic c...
Deep learning has extensive application in fault diagnosis regarding the health monitoring of machin...
To address the difficulty of early fault diagnosis of rolling bearings, this paper proposes a rollin...
Data-driven based rolling bearing fault diagnosis has been widely investigated in recent years. Howe...
This study proposes a novel fault diagnosis method that is based on empirical wavelet transform (EWT...
In order to improve the accuracy of the fault diagnosis of roller bearings, this paper proposes a ki...
Aiming at the fault diagnosis of rolling element bearings, propose a method for fine diagnosis of be...
A new technique for an automated detection and diagnosis of rolling bearing faults is presented. The...
As a critical component in rotating machinery field, rolling bearings are prone to damage under the ...
As one of the important parts of modern mechanical equipment, the accurate real-time diagnosis of ro...
Wavelet neural networks (WNN) combing the properties of the wavelet transform and the advantages of ...
Bearings are widely used in various electrical and mechanical equipment. As their core components, f...
In this dissertation, Wavelet-ANN (Artificial Neural Network) and Wavelet-ESVR (Energy Singular Valu...
Roller bearing is one of the machine industry’s common components. The roller bearing operation stat...
Accurate fault diagnosis is critical to operating rotating machinery safely and efficiently. Traditi...
A method based on wavelet and deep neural network for rolling-element bearing fault data automatic c...
Deep learning has extensive application in fault diagnosis regarding the health monitoring of machin...
To address the difficulty of early fault diagnosis of rolling bearings, this paper proposes a rollin...
Data-driven based rolling bearing fault diagnosis has been widely investigated in recent years. Howe...
This study proposes a novel fault diagnosis method that is based on empirical wavelet transform (EWT...