Rotating machinery is one of the major components of industries that suffer from various faults due to the constant workload. Therefore, a fast and reliable fault diagnosis method is essential for machine condition monitoring. In this study, noise eliminated ensemble empirical mode decomposition (NEEEMD) was used for fault feature extraction. A convolution neural network (CNN) classifier was applied for classification because of its feature learning ability. A generalized CNN architecture was proposed to reduce the model training time. A sample size of 64×64×3 pixels RGB scalograms are used as the classifier input. However, CNN requires a large number of training data to achieve high accuracy and robustness. Deep convolution gen...
Bearings are the significant components among the rolling machine elements subjected to high wear an...
Blade fault diagnosis had become more significant and impactful for rotating machinery operators in ...
Traditional intelligent fault diagnosis methods focus on distinguishing different fault modes, but i...
Rotating machinery is one of the major components of industries that suffer from various faults due ...
Rotating machinery is one type of major industrial component that suffers from various faults and da...
Rotating machinery is one type of major industrial component that suffers from various faults and da...
Fault diagnosis is critical to ensure the safety and reliable operation of rotating machinery. Most ...
Machine learning techniques have been successfully applied in intelligent fault diagnosis of rolling...
Bearings are one of the most important parts of a rotating machine. Bearing failure can lead to mech...
Primary detection and removal of mechanical fault is vital for the recovery of mechanical and electr...
This paper presents a convolutional neural network (CNN) based approach for fault diagnosis of rotat...
This paper proposes an intelligent diagnosis method for rotating machinery faults based on improved ...
Condition monitoring of rotating machineries is a challenging topic across various industries. Throu...
Fault diagnosis is critical to maintaining the performance of rotating machinery and ensuring the sa...
Rolling bearings are one of the most widely used bearings in industrial machines. Deterioration in t...
Bearings are the significant components among the rolling machine elements subjected to high wear an...
Blade fault diagnosis had become more significant and impactful for rotating machinery operators in ...
Traditional intelligent fault diagnosis methods focus on distinguishing different fault modes, but i...
Rotating machinery is one of the major components of industries that suffer from various faults due ...
Rotating machinery is one type of major industrial component that suffers from various faults and da...
Rotating machinery is one type of major industrial component that suffers from various faults and da...
Fault diagnosis is critical to ensure the safety and reliable operation of rotating machinery. Most ...
Machine learning techniques have been successfully applied in intelligent fault diagnosis of rolling...
Bearings are one of the most important parts of a rotating machine. Bearing failure can lead to mech...
Primary detection and removal of mechanical fault is vital for the recovery of mechanical and electr...
This paper presents a convolutional neural network (CNN) based approach for fault diagnosis of rotat...
This paper proposes an intelligent diagnosis method for rotating machinery faults based on improved ...
Condition monitoring of rotating machineries is a challenging topic across various industries. Throu...
Fault diagnosis is critical to maintaining the performance of rotating machinery and ensuring the sa...
Rolling bearings are one of the most widely used bearings in industrial machines. Deterioration in t...
Bearings are the significant components among the rolling machine elements subjected to high wear an...
Blade fault diagnosis had become more significant and impactful for rotating machinery operators in ...
Traditional intelligent fault diagnosis methods focus on distinguishing different fault modes, but i...