With the rapid growth of data volumes and complexity in the field of condition monitoring (CM) of machinery, the need to automate tasks such as information extraction and classification has become more important than ever. Artificial intelligence (AI) remains a promising solution to such challenging tasks. From a learning perspective, the majority of AI based shallow learning methods for CM have been applied for classification, whereas feature extraction task is still manually processed, which requires hand-crafted features based on expertise knowledge. Hence, the classification accuracy of the shallow learning method relies entirely on the quality of the extracted features. Contrariwise, AI based deep learning methods, and in particular th...
This study discusses convolutional neural networks (CNNs) for vibration signals analysis, including ...
The deep learning technologies have transformed many research areas with accuracy levels that the t...
Traditional fault diagnosis methods require complex signal processing and expert experience, and the...
Convolutional neural network has been widely investigated for machinery condition monitoring, but it...
International audienceA Deep Learning protocol is developed for identification of typical faults occ...
Condition monitoring (CM) is a useful application in industry 4.0, where the machine’s health is con...
Primary detection and removal of mechanical fault is vital for the recovery of mechanical and electr...
Abstract—This paper describes and compares three different state-of-the-art condition monitoring tec...
Induction motors are widely used in manufacturing industries failures in them could be fatal and cos...
Artificial intelligence fields have been using deep learning in recent years. Due to its powerful da...
Vibration data is one of the most informative data to be used for fault detection. It mostly employs...
Many industrial facilities, amongst others, are very sensitive to any sudden hazards that can be exp...
With recent advances in non-contact sensing technology such as cameras, unmanned aerial and ground v...
Since 2006, deep learning (DL) has become a rapidly growing research direction, redefining state-of-...
Intelligent fault diagnosis techniques have replaced time-consuming and unreliable human analysis, i...
This study discusses convolutional neural networks (CNNs) for vibration signals analysis, including ...
The deep learning technologies have transformed many research areas with accuracy levels that the t...
Traditional fault diagnosis methods require complex signal processing and expert experience, and the...
Convolutional neural network has been widely investigated for machinery condition monitoring, but it...
International audienceA Deep Learning protocol is developed for identification of typical faults occ...
Condition monitoring (CM) is a useful application in industry 4.0, where the machine’s health is con...
Primary detection and removal of mechanical fault is vital for the recovery of mechanical and electr...
Abstract—This paper describes and compares three different state-of-the-art condition monitoring tec...
Induction motors are widely used in manufacturing industries failures in them could be fatal and cos...
Artificial intelligence fields have been using deep learning in recent years. Due to its powerful da...
Vibration data is one of the most informative data to be used for fault detection. It mostly employs...
Many industrial facilities, amongst others, are very sensitive to any sudden hazards that can be exp...
With recent advances in non-contact sensing technology such as cameras, unmanned aerial and ground v...
Since 2006, deep learning (DL) has become a rapidly growing research direction, redefining state-of-...
Intelligent fault diagnosis techniques have replaced time-consuming and unreliable human analysis, i...
This study discusses convolutional neural networks (CNNs) for vibration signals analysis, including ...
The deep learning technologies have transformed many research areas with accuracy levels that the t...
Traditional fault diagnosis methods require complex signal processing and expert experience, and the...