Intelligent diagnosis applies deep learning algorithms to mechanical fault diagnosis, which can classify the fault forms of machines or parts efficiently. At present, the intelligent diagnosis of rolling bearings mostly adopts a single-sensor signal, and multisensor information can provide more comprehensive fault features for the deep learning model to improve the generalization ability. In order to apply multisensor information more effectively, this paper proposes a multiscale convolutional neural network model based on global average pooling. The diagnostic model introduces a multiscale convolution kernel in the feature extraction process, which improves the robustness of the model. Meanwhile, its parallel structure also makes up for th...
In actual industrial application scenarios, noise pollution makes it difficult to extract fault feat...
Multi-sensor data fusion is a feasible technique to achieve accurate and robust results in fault dia...
Deep learning (DL) has been successfully used in fault diagnosis. Training deep neural networks, suc...
Bearings are one of the most important parts of a rotating machine. Bearing failure can lead to mech...
The rolling bearing is a critical part of rotating machinery and its condition determines the perfor...
Bearings are the key and important components of rotating machinery. Effective bearing fault diagnos...
Abstract A health diagnosis mechanism of rolling element bearings is necessary since the most freque...
Aiming to address the problems of a low fault detection rate and poor diagnosis performance under di...
As one of the most vital parts of rotating equipment, it is an essential work to diagnose rolling be...
Aiming to address the problems of a low fault detection rate and poor diagnosis performance under di...
As a key component of electromechanical equipment in the intelligent manufacturing process, rolling ...
Fault diagnosis is critical to maintaining the performance of rotating machinery and ensuring the sa...
The use of deep learning for fault diagnosis is already a common approach. However, integrating disc...
The use of deep learning for fault diagnosis is already a common approach. However, integrating disc...
Rotating machinery usually suffers from a type of fault, where the fault feature extracted in the fr...
In actual industrial application scenarios, noise pollution makes it difficult to extract fault feat...
Multi-sensor data fusion is a feasible technique to achieve accurate and robust results in fault dia...
Deep learning (DL) has been successfully used in fault diagnosis. Training deep neural networks, suc...
Bearings are one of the most important parts of a rotating machine. Bearing failure can lead to mech...
The rolling bearing is a critical part of rotating machinery and its condition determines the perfor...
Bearings are the key and important components of rotating machinery. Effective bearing fault diagnos...
Abstract A health diagnosis mechanism of rolling element bearings is necessary since the most freque...
Aiming to address the problems of a low fault detection rate and poor diagnosis performance under di...
As one of the most vital parts of rotating equipment, it is an essential work to diagnose rolling be...
Aiming to address the problems of a low fault detection rate and poor diagnosis performance under di...
As a key component of electromechanical equipment in the intelligent manufacturing process, rolling ...
Fault diagnosis is critical to maintaining the performance of rotating machinery and ensuring the sa...
The use of deep learning for fault diagnosis is already a common approach. However, integrating disc...
The use of deep learning for fault diagnosis is already a common approach. However, integrating disc...
Rotating machinery usually suffers from a type of fault, where the fault feature extracted in the fr...
In actual industrial application scenarios, noise pollution makes it difficult to extract fault feat...
Multi-sensor data fusion is a feasible technique to achieve accurate and robust results in fault dia...
Deep learning (DL) has been successfully used in fault diagnosis. Training deep neural networks, suc...