The data distribution of the vibration signal under different speed conditions of the gearbox is different, which leads to reduced accuracy of fault diagnosis. In this regard, this paper proposes a deep transfer fault diagnosis algorithm combining adaptive multi-threshold segmentation and subdomain adaptation. First of all, in the data acquisition stage, a non-contact, easy-to-arrange, and low-cost sound pressure sensor is used to collect equipment signals, which effectively solves the problems of contact installation limitations and increasingly strict layout requirements faced by traditional vibration signal-based methods. The continuous wavelet transform (CWT) is then used to convert the original vibration signal of the device into time–...
There are growing demands for condition-based monitoring of gearboxes, and techniques to improve the...
In recent years, research on gear pitting fault diagnosis has been conducted. Most of the research h...
The use of the convolutional neural network for fault diagnosis has been a common method of research...
The data distribution of the vibration signal under different speed conditions of the gearbox is dif...
This paper proposes an accurate and stable gearbox fault diagnosis scheme that combines a localized ...
Vibration signals of gearbox are sensitive to the existence of the fault. Based on vibration signals...
In this paper, in order to solve the problem that it is difficult to carry out accurate fault diagno...
Helical gearboxes play a critical role in power transmission of industrial applications. They are vu...
Vibration signals of gearbox under different loads are sensitive to the existence of the fault and c...
Helical gearboxes play a critical role in power transmission of industrial applications. They are vu...
Poor working environment leads to frequent failures of planetary gear trains. However, complex struc...
Poor working environment leads to frequent failures of planetary gear trains. However, complex struc...
This paper suggests a novel method for diagnosing planetary gearbox faults. It addresses the issue o...
The vibration signal of gearboxes contains abundant fault information, which can be used for conditi...
Gear mechanisms are an important element in a variety of industrial applications and about 80% of th...
There are growing demands for condition-based monitoring of gearboxes, and techniques to improve the...
In recent years, research on gear pitting fault diagnosis has been conducted. Most of the research h...
The use of the convolutional neural network for fault diagnosis has been a common method of research...
The data distribution of the vibration signal under different speed conditions of the gearbox is dif...
This paper proposes an accurate and stable gearbox fault diagnosis scheme that combines a localized ...
Vibration signals of gearbox are sensitive to the existence of the fault. Based on vibration signals...
In this paper, in order to solve the problem that it is difficult to carry out accurate fault diagno...
Helical gearboxes play a critical role in power transmission of industrial applications. They are vu...
Vibration signals of gearbox under different loads are sensitive to the existence of the fault and c...
Helical gearboxes play a critical role in power transmission of industrial applications. They are vu...
Poor working environment leads to frequent failures of planetary gear trains. However, complex struc...
Poor working environment leads to frequent failures of planetary gear trains. However, complex struc...
This paper suggests a novel method for diagnosing planetary gearbox faults. It addresses the issue o...
The vibration signal of gearboxes contains abundant fault information, which can be used for conditi...
Gear mechanisms are an important element in a variety of industrial applications and about 80% of th...
There are growing demands for condition-based monitoring of gearboxes, and techniques to improve the...
In recent years, research on gear pitting fault diagnosis has been conducted. Most of the research h...
The use of the convolutional neural network for fault diagnosis has been a common method of research...