The ability of engineering systems to process multi-scale information is a crucial requirement in the development of an intelligent fault diagnosis model. This study develops a hybrid multi-scale convolutional neural network model coupled with multi-attention capability (HMS-MACNN) to solve both the inefficient and insufficient extrapolation problems of multi-scale models in fault diagnosis of a system operating in complex environments. The model's capabilities are demonstrated by its ability to capture the rich multi-scale characteristics of a gearbox including time and frequency multi-scale information. The capabilities of the Multi-Attention Module, which consists of an adaptive weighted rule and a novel weighted soft-voting rule, are re...
Learning powerful discriminative features is the key for machine fault diagnosis. Most existing meth...
With outstanding deep feature learning and nonlinear classification abilities, Convolutional Neural ...
Learning powerful discriminative features is the key for machine fault diagnosis. Most existing meth...
Machine learning techniques have been successfully applied for the intelligent fault diagnosis of ro...
The use of deep learning for fault diagnosis is already a common approach. However, integrating disc...
The use of the convolutional neural network for fault diagnosis has been a common method of research...
Multi-view information fusion can provide more accurate, complete and reliable data descriptions for...
Fault diagnosis is critical to maintaining the performance of rotating machinery and ensuring the sa...
This paper proposes a novel intelligent fault diagnosis method to automatically identify different h...
Intelligent diagnosis applies deep learning algorithms to mechanical fault diagnosis, which can clas...
Collaborative fault diagnosis has become a hot research topic in fault detection and identification,...
Intelligent bearing fault diagnosis is a necessary approach to ensure the stable operation of rotati...
In complicated mechanical systems, fault diagnosis, especially regarding feature extraction from mul...
Learning powerful discriminative features is the key for machine fault diagnosis. Most existing meth...
Learning powerful discriminative features is the key for machine fault diagnosis. Most existing meth...
Learning powerful discriminative features is the key for machine fault diagnosis. Most existing meth...
With outstanding deep feature learning and nonlinear classification abilities, Convolutional Neural ...
Learning powerful discriminative features is the key for machine fault diagnosis. Most existing meth...
Machine learning techniques have been successfully applied for the intelligent fault diagnosis of ro...
The use of deep learning for fault diagnosis is already a common approach. However, integrating disc...
The use of the convolutional neural network for fault diagnosis has been a common method of research...
Multi-view information fusion can provide more accurate, complete and reliable data descriptions for...
Fault diagnosis is critical to maintaining the performance of rotating machinery and ensuring the sa...
This paper proposes a novel intelligent fault diagnosis method to automatically identify different h...
Intelligent diagnosis applies deep learning algorithms to mechanical fault diagnosis, which can clas...
Collaborative fault diagnosis has become a hot research topic in fault detection and identification,...
Intelligent bearing fault diagnosis is a necessary approach to ensure the stable operation of rotati...
In complicated mechanical systems, fault diagnosis, especially regarding feature extraction from mul...
Learning powerful discriminative features is the key for machine fault diagnosis. Most existing meth...
Learning powerful discriminative features is the key for machine fault diagnosis. Most existing meth...
Learning powerful discriminative features is the key for machine fault diagnosis. Most existing meth...
With outstanding deep feature learning and nonlinear classification abilities, Convolutional Neural ...
Learning powerful discriminative features is the key for machine fault diagnosis. Most existing meth...