Compressive sensing provides a new idea for machinery monitoring, which greatly reduces the burden on data transmission. After that, the compressed signal will be used for fault diagnosis by feature extraction and fault classification. However, traditional fault diagnosis heavily depends on the prior knowledge and requires a signal reconstruction which will cost great time consumption. For this problem, a deep belief network (DBN) is used here for fault detection directly on compressed signal. This is the first time DBN is combined with the compressive sensing. The PCA analysis shows that DBN has successfully separated different features. The DBN method which is tested on compressed gearbox signal, achieves 92.5 % accuracy for 25 % compress...
Given the complexity of the operating conditions of rolling bearings in the actual rolling process o...
Fault diagnosis in rotating machinery is significant to avoid serious accidents; thus, an accurate a...
Convolutional neural network has been widely investigated for machinery condition monitoring, but it...
Compressive sensing provides a new idea for machinery monitoring, which greatly reduces the burden o...
Condition classification of rolling element bearings in rotating machines is important to prevent th...
Mechanical fault can cause economic loss of different degrees, even casualties. Timely fault diagnos...
The high sampling frequency of traditional Nyquist sampling theory not only puts greater requirement...
Intelligent machine health monitoring and fault diagnosis are becoming increasingly important for mo...
Diagnosing incipient faults of rotating machines is very important for reducing economic losses and ...
Helical gearboxes play a critical role in power transmission of industrial applications. They are vu...
In the big data background, the accuracy of fault diagnosis and recognition has been difficult to be...
Helical gearboxes play a critical role in power transmission of industrial applications. They are vu...
Due to the complex transfer paths of vibration signals, and a large number of vibration excitations,...
Vibration-based analysis is the most commonly used technique to monitor the condition of gearboxes. ...
Because deep belief networks (DBNs) in deep learning have a powerful ability to extract useful infor...
Given the complexity of the operating conditions of rolling bearings in the actual rolling process o...
Fault diagnosis in rotating machinery is significant to avoid serious accidents; thus, an accurate a...
Convolutional neural network has been widely investigated for machinery condition monitoring, but it...
Compressive sensing provides a new idea for machinery monitoring, which greatly reduces the burden o...
Condition classification of rolling element bearings in rotating machines is important to prevent th...
Mechanical fault can cause economic loss of different degrees, even casualties. Timely fault diagnos...
The high sampling frequency of traditional Nyquist sampling theory not only puts greater requirement...
Intelligent machine health monitoring and fault diagnosis are becoming increasingly important for mo...
Diagnosing incipient faults of rotating machines is very important for reducing economic losses and ...
Helical gearboxes play a critical role in power transmission of industrial applications. They are vu...
In the big data background, the accuracy of fault diagnosis and recognition has been difficult to be...
Helical gearboxes play a critical role in power transmission of industrial applications. They are vu...
Due to the complex transfer paths of vibration signals, and a large number of vibration excitations,...
Vibration-based analysis is the most commonly used technique to monitor the condition of gearboxes. ...
Because deep belief networks (DBNs) in deep learning have a powerful ability to extract useful infor...
Given the complexity of the operating conditions of rolling bearings in the actual rolling process o...
Fault diagnosis in rotating machinery is significant to avoid serious accidents; thus, an accurate a...
Convolutional neural network has been widely investigated for machinery condition monitoring, but it...