Rolling bearings are important in rotating machinery and equipment. This research proposes variational mode decomposition (VMD)-DenseNet to diagnose faults in bearings. The research feature involves analyzing the Hilbert spectrum through VMD whereby the vibration signal is converted into an image. Healthy and various faults show different characteristics on the image, thus there is no need to select features. Coupled with the lightweight network, DenseNet, for image classification and prediction. DenseNet is used to build a model of motor fault diagnosis; its structure is simple, and the calculation speed is fast. The method of using DenseNet for image feature learning can perform feature extraction on each image block of the image, providi...
Nowadays, most deep-learning-based bearing fault diagnosis methods are studied under the condition o...
The fault diagnosis of bearing in machinery system plays a vital role in ensuring the normal operati...
International audienceA Deep Learning protocol is developed for identification of typical faults occ...
Rolling bearings are important in rotating machinery and equipment. This research proposes variation...
Rotating machinery often works under complex and variable working conditions; the vibration signals ...
Motor failure is one of the biggest problems in the safe and reliable operation of large mechanical ...
Rotating machines are widely used in today’s world. As these machines perform the biggest tasks in i...
Faults in bearings usually manifest as marginal defects that intensify over time, allowing for well-...
International audienceThe monitoring of rolling element bearing is indexed as a critical task for co...
International audienceThe monitoring of rolling element bearing is indexed as a critical task for co...
This paper proposes an intelligent diagnosis method for rotating machinery faults based on improved ...
The insufficient learning ability of traditional convolutional neural network for key fault features...
The condition monitoring of rotating machinery is always a focus of intelligent fault diagnosis. In ...
Compared to time-consuming and unreliable manual analysis, intelligent fault diagnosis techniques us...
Data-driven rolling-bearing fault diagnosis methods are mostly based on deep-learning models, and th...
Nowadays, most deep-learning-based bearing fault diagnosis methods are studied under the condition o...
The fault diagnosis of bearing in machinery system plays a vital role in ensuring the normal operati...
International audienceA Deep Learning protocol is developed for identification of typical faults occ...
Rolling bearings are important in rotating machinery and equipment. This research proposes variation...
Rotating machinery often works under complex and variable working conditions; the vibration signals ...
Motor failure is one of the biggest problems in the safe and reliable operation of large mechanical ...
Rotating machines are widely used in today’s world. As these machines perform the biggest tasks in i...
Faults in bearings usually manifest as marginal defects that intensify over time, allowing for well-...
International audienceThe monitoring of rolling element bearing is indexed as a critical task for co...
International audienceThe monitoring of rolling element bearing is indexed as a critical task for co...
This paper proposes an intelligent diagnosis method for rotating machinery faults based on improved ...
The insufficient learning ability of traditional convolutional neural network for key fault features...
The condition monitoring of rotating machinery is always a focus of intelligent fault diagnosis. In ...
Compared to time-consuming and unreliable manual analysis, intelligent fault diagnosis techniques us...
Data-driven rolling-bearing fault diagnosis methods are mostly based on deep-learning models, and th...
Nowadays, most deep-learning-based bearing fault diagnosis methods are studied under the condition o...
The fault diagnosis of bearing in machinery system plays a vital role in ensuring the normal operati...
International audienceA Deep Learning protocol is developed for identification of typical faults occ...