Real-time motor fault diagnosis can detect motor faults on time and prompt the repair or replacement of faulty motors, which minimizes the potential losses caused by motor faults. Deep learning (DL) methods have been intensively applied in motor fault diagnosis. Most DL algorithms need to be trained with sufficient computation resources on cloud or local servers. However, uploading the raw data and downloading the command instructions to the edge will cause inevitable time delays and security concerns. This article develops a DL algorithm based on efficient convolutional neural networks (ECNNs) that can be deployed on an edge computing node for real-time motor fault diagnosis and dynamic control. The effectiveness, efficiency, and robustnes...
International audienceObjectives. This paper aims to investigate the feasibility and the validity of...
Data-driven fault diagnosis algorithms represented by deep learning have been widely used in industr...
Motor failure is one of the biggest problems in the safe and reliable operation of large mechanical ...
Artificial intelligence fields have been using deep learning in recent years. Due to its powerful da...
Fault diagnosis in high-speed machining centers (HSM) is critical in manufacturing systems, since ea...
Electric motors are used extensively in numerous industries, and their failure can result not only i...
Convolutional neural networks (CNNs) have been widely applied in motor fault diagnosis. However, to ...
International audienceA Deep Learning protocol is developed for identification of typical faults occ...
Abstract The increasing complexity of modern industrial systems calls for automatic and innovative p...
The complex working conditions and nonlinear characteristics of the motor drive control system of in...
Abstract The reliability and availability of induction motors is significant which can be achieved b...
Induction motors are widely used in manufacturing industries failures in them could be fatal and cos...
Induction motors (IMs) are used extensively as driving actuators in electric vehicles. Motor rotors ...
Fault diagnosis of electric motors is a fundamental task for production line testing, and it is usua...
This paper aims to develop an efficient pattern recognition method for engine fault end-to-end detec...
International audienceObjectives. This paper aims to investigate the feasibility and the validity of...
Data-driven fault diagnosis algorithms represented by deep learning have been widely used in industr...
Motor failure is one of the biggest problems in the safe and reliable operation of large mechanical ...
Artificial intelligence fields have been using deep learning in recent years. Due to its powerful da...
Fault diagnosis in high-speed machining centers (HSM) is critical in manufacturing systems, since ea...
Electric motors are used extensively in numerous industries, and their failure can result not only i...
Convolutional neural networks (CNNs) have been widely applied in motor fault diagnosis. However, to ...
International audienceA Deep Learning protocol is developed for identification of typical faults occ...
Abstract The increasing complexity of modern industrial systems calls for automatic and innovative p...
The complex working conditions and nonlinear characteristics of the motor drive control system of in...
Abstract The reliability and availability of induction motors is significant which can be achieved b...
Induction motors are widely used in manufacturing industries failures in them could be fatal and cos...
Induction motors (IMs) are used extensively as driving actuators in electric vehicles. Motor rotors ...
Fault diagnosis of electric motors is a fundamental task for production line testing, and it is usua...
This paper aims to develop an efficient pattern recognition method for engine fault end-to-end detec...
International audienceObjectives. This paper aims to investigate the feasibility and the validity of...
Data-driven fault diagnosis algorithms represented by deep learning have been widely used in industr...
Motor failure is one of the biggest problems in the safe and reliable operation of large mechanical ...