Nowadays, most deep-learning-based bearing fault diagnosis methods are studied under the condition of steady speed, while the performance of these models cannot be fully played under time-varying conditions. Therefore, in order to facilitate the practical application of a deep learning model in bearing fault diagnosis, a vibration–speed fusion network is proposed, which utilizes a transformer with a self-attention module to extract vibration features and utilizes a sparse autoencoder (SAE) network to extract sparse features from speed pulse signal. The vibration–speed fusion network enables the efficient fusion of different signals in a high-dimensional vector space with a high degree of model interpretability, without additional signal pro...
Rolling element bearing is an important component in various machinery. Faulty on bearing cause seve...
Deep learning (DL) has been successfully used in fault diagnosis. Training deep neural networks, suc...
The industry is moving towards maintenance strategies that consider component health, which require ...
Due to enhanced safety, cost-effectiveness, and reliability requirements, fault diagnosis of bearing...
The condition monitoring of rotating machinery is always a focus of intelligent fault diagnosis. In ...
Rolling bearings are important in rotating machinery and equipment. This research proposes variation...
Faults in bearings usually manifest as marginal defects that intensify over time, allowing for well-...
Rolling bearings are important in rotating machinery and equipment. This research proposes variation...
The fault diagnosis of bearing in machinery system plays a vital role in ensuring the normal operati...
The insufficient learning ability of traditional convolutional neural network for key fault features...
Statistical features extraction from bearing fault signals requires a substantial level of knowledge...
In this paper, discrete orthonormal Stockwell transform (DOST)-based vibration imaging is proposed a...
Bearing fault diagnosis is imperative for the maintenance, reliability, and durability of rotary mac...
Compared to time-consuming and unreliable manual analysis, intelligent fault diagnosis techniques us...
Bearing is one of the most critical mechanical components in rotating machinery. To identify the run...
Rolling element bearing is an important component in various machinery. Faulty on bearing cause seve...
Deep learning (DL) has been successfully used in fault diagnosis. Training deep neural networks, suc...
The industry is moving towards maintenance strategies that consider component health, which require ...
Due to enhanced safety, cost-effectiveness, and reliability requirements, fault diagnosis of bearing...
The condition monitoring of rotating machinery is always a focus of intelligent fault diagnosis. In ...
Rolling bearings are important in rotating machinery and equipment. This research proposes variation...
Faults in bearings usually manifest as marginal defects that intensify over time, allowing for well-...
Rolling bearings are important in rotating machinery and equipment. This research proposes variation...
The fault diagnosis of bearing in machinery system plays a vital role in ensuring the normal operati...
The insufficient learning ability of traditional convolutional neural network for key fault features...
Statistical features extraction from bearing fault signals requires a substantial level of knowledge...
In this paper, discrete orthonormal Stockwell transform (DOST)-based vibration imaging is proposed a...
Bearing fault diagnosis is imperative for the maintenance, reliability, and durability of rotary mac...
Compared to time-consuming and unreliable manual analysis, intelligent fault diagnosis techniques us...
Bearing is one of the most critical mechanical components in rotating machinery. To identify the run...
Rolling element bearing is an important component in various machinery. Faulty on bearing cause seve...
Deep learning (DL) has been successfully used in fault diagnosis. Training deep neural networks, suc...
The industry is moving towards maintenance strategies that consider component health, which require ...