Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Novel Fault Diagnosis Method for Rolling Bearing Based on Voiceprint Recognition With FasterNet‐CAM

View through CrossRef
ABSTRACT Contact measuring tools are not suitable in some specific working environments, such as high temperature or chemical metallurgical equipment, when non‐contact sensors should be considered. In this study, a rolling bearing fault diagnosis method based on voiceprint recognition is proposed. The original signal is converted into a Mel‐spectrum that can characterize the voiceprint characteristics which based on the features of human hearing, the idea of partial convolution is used for further feature extraction, and then input into the enhanced FasterNet network for classification. The Group‐CAM is integrated with the FasterNet network to confirm the significant portions of the voiceprint associated with the decision, thereby conforming the validity of the model's judgment throughout the recognition process. The experimental results show that the proposed method has an accuracy of 99.4%, a reasoning time of 4.48 s, and a throughput of 223.3 fps after iteration, which is optimal in the compared experiment, indicating that the model meets the lightweight requirement and can identify the acoustic signals of faulty bearings effectively. The method also intuitively highlights the key parts of the acoustic signals, which ensures that the decision‐making process of the model is transparent and trustworthy and enhances the interpretability and reliability of the diagnostic process.
Title: Novel Fault Diagnosis Method for Rolling Bearing Based on Voiceprint Recognition With FasterNet‐CAM
Description:
ABSTRACT Contact measuring tools are not suitable in some specific working environments, such as high temperature or chemical metallurgical equipment, when non‐contact sensors should be considered.
In this study, a rolling bearing fault diagnosis method based on voiceprint recognition is proposed.
The original signal is converted into a Mel‐spectrum that can characterize the voiceprint characteristics which based on the features of human hearing, the idea of partial convolution is used for further feature extraction, and then input into the enhanced FasterNet network for classification.
The Group‐CAM is integrated with the FasterNet network to confirm the significant portions of the voiceprint associated with the decision, thereby conforming the validity of the model's judgment throughout the recognition process.
The experimental results show that the proposed method has an accuracy of 99.
4%, a reasoning time of 4.
48 s, and a throughput of 223.
3 fps after iteration, which is optimal in the compared experiment, indicating that the model meets the lightweight requirement and can identify the acoustic signals of faulty bearings effectively.
The method also intuitively highlights the key parts of the acoustic signals, which ensures that the decision‐making process of the model is transparent and trustworthy and enhances the interpretability and reliability of the diagnostic process.

Related Results

Integration Techniques of Fault Detection and Isolation Using Interval Observers
Integration Techniques of Fault Detection and Isolation Using Interval Observers
An interval observer has been illustrated to be a suitable approach to detect and isolate faults affecting complex dynamical industrial systems. Concerning fault detection, interv...
Recent Patents on Cageless Rolling Bearings
Recent Patents on Cageless Rolling Bearings
Background: Rolling bearings are widely used as core components in mechanical equipment. Most bearings are equipped with a cage. However, when bearings work under conditions of lar...
Voiceprint Identification for Limited Dataset Using the Deep Migration Hybrid Model Based on Transfer Learning
Voiceprint Identification for Limited Dataset Using the Deep Migration Hybrid Model Based on Transfer Learning
The convolutional neural network (CNN) has made great strides in the area of voiceprint recognition; but it needs a huge number of data samples to train a deep neural network. In p...
Evolution and significance of CaM KMT- Calmodulin interaction- A journey of more than 40 years
Evolution and significance of CaM KMT- Calmodulin interaction- A journey of more than 40 years
The calmodulin (CaM) family serves as the primary calcium sensor. Upon receiving calcium signals, CaM binds calcium ions and regulates the activity of numerous effector proteins. I...
Research on Rolling-Sliding Integrated Auxiliary Bearing and its Application in High Temperature Reactor
Research on Rolling-Sliding Integrated Auxiliary Bearing and its Application in High Temperature Reactor
The active magnetic bearings (AMB), with the advantages of no friction, no abrasion, no lubrication and active control, is used in the primary helium circulator for high-temperatur...
Recent Patents on Rolling Bearing Cage
Recent Patents on Rolling Bearing Cage
Background: Rolling bearing is a critical component of mechanical systems, and its cage design significantly impacts operational performance. Research into cage design facilitates ...

Back to Top