Convolutional neural networks (CNNs) have been widely applied in motor fault diagnosis. However, to obtain high recognition accuracy, massive training data are typically required and transmitted to the cloud/local server for training, which may suffer from security and privacy problems. In this study, a noise-boosted CNN (NBCNN) model is developed to achieve accelerated training and improved recognition accuracy with limited training samples. First, the NBCNN model with a noise-injection fully connected layer is established. Then, a strategy for noise selection and injection is proposed to obtain an optimal matching among the data, model, and noise. Finally, the optimal injected noise accelerates the convergence of model training and...
Rolling bearings are one of the most widely used bearings in industrial machines. Deterioration in t...
It is crucial to carry out the fault diagnosis of rotating machinery by extracting the features that...
Convolutional neural network has been widely investigated for machinery condition monitoring, but it...
Real-time motor fault diagnosis can detect motor faults on time and prompt the repair or replacement...
Artificial intelligence fields have been using deep learning in recent years. Due to its powerful da...
Many industrial facilities, amongst others, are very sensitive to any sudden hazards that can be exp...
Induction motors operate in difficult environments in the industry. Monitoring the performance of mo...
Induction motors are widely used in manufacturing industries failures in them could be fatal and cos...
Traditional fault diagnosis methods require complex signal processing and expert experience, and the...
Continuous long-term monitoring of motor health is crucial for the early detection of abnormalities ...
Intelligent fault diagnosis (IFD) models have the potential to increase the level of automation and ...
Gearboxes are key transmission components and widely used in various industrial applications. Due to...
Intelligent fault diagnosis techniques have replaced time-consuming and unreliable human analysis, i...
Rotating machinery is one of the major components of industries that suffer from various faults due ...
International audienceObjectives. This paper aims to investigate the feasibility and the validity of...
Rolling bearings are one of the most widely used bearings in industrial machines. Deterioration in t...
It is crucial to carry out the fault diagnosis of rotating machinery by extracting the features that...
Convolutional neural network has been widely investigated for machinery condition monitoring, but it...
Real-time motor fault diagnosis can detect motor faults on time and prompt the repair or replacement...
Artificial intelligence fields have been using deep learning in recent years. Due to its powerful da...
Many industrial facilities, amongst others, are very sensitive to any sudden hazards that can be exp...
Induction motors operate in difficult environments in the industry. Monitoring the performance of mo...
Induction motors are widely used in manufacturing industries failures in them could be fatal and cos...
Traditional fault diagnosis methods require complex signal processing and expert experience, and the...
Continuous long-term monitoring of motor health is crucial for the early detection of abnormalities ...
Intelligent fault diagnosis (IFD) models have the potential to increase the level of automation and ...
Gearboxes are key transmission components and widely used in various industrial applications. Due to...
Intelligent fault diagnosis techniques have replaced time-consuming and unreliable human analysis, i...
Rotating machinery is one of the major components of industries that suffer from various faults due ...
International audienceObjectives. This paper aims to investigate the feasibility and the validity of...
Rolling bearings are one of the most widely used bearings in industrial machines. Deterioration in t...
It is crucial to carry out the fault diagnosis of rotating machinery by extracting the features that...
Convolutional neural network has been widely investigated for machinery condition monitoring, but it...