Increased attention has been paid to research on intelligent fault diagnosis under acoustic signals. However, the signal-to-noise ratio of acoustic signals is much lower than vibration signals, which increases the difficulty of signal denoising and feature extraction. To solve the above defect, a novel batch-normalized deep sparse filtering (DSF) method is proposed to diagnose the fault through the acoustic signals of rotating machinery. In the first stage, the collected acoustic signals are prenormalized to eliminate the adverse effects of singular samples, and then the normalized signal is transformed into frequency-domain signal through fast Fourier transform (FFT). In the second stage, the learned features are obtained by training batch...
Vibration and acoustic analysis actively support the nondestructive and noninvasive fault diagnostic...
In this paper; a new method for gear pitting fault detection is presented. The presented method is d...
Vibration and acoustic emission have received great attention of the research community for conditio...
Fault diagnosis of mechanical equipment is mainly based on the contact measurement and analysis of v...
The condition monitoring of rotating machinery is always a focus of intelligent fault diagnosis. In ...
Condition classification of rolling element bearings in rotating machines is important to prevent th...
In actual engineering applications, inevitable noise seriously affects the accuracy of fault diagnos...
Faults in bearings and gearboxes, which are widely used in rotating machines, can lead to heavy inve...
Fault diagnosis in rotating machinery is significant to avoid serious accidents; thus, an accurate a...
Discriminative feature extraction is a challenge for data-driven fault diagnosis. Although deep lear...
Nowadays, most deep-learning-based bearing fault diagnosis methods are studied under the condition o...
Due to enhanced safety, cost-effectiveness, and reliability requirements, fault diagnosis of bearing...
Bearings are essential components of rotating machinery used in mechanical systems, and fault diagno...
Recently, deep learning has become more and more extensive in the field of fault diagnosis. However,...
Machine fault diagnosis (MFD) has gained an important enthusiasm since the unfolding of the pattern ...
Vibration and acoustic analysis actively support the nondestructive and noninvasive fault diagnostic...
In this paper; a new method for gear pitting fault detection is presented. The presented method is d...
Vibration and acoustic emission have received great attention of the research community for conditio...
Fault diagnosis of mechanical equipment is mainly based on the contact measurement and analysis of v...
The condition monitoring of rotating machinery is always a focus of intelligent fault diagnosis. In ...
Condition classification of rolling element bearings in rotating machines is important to prevent th...
In actual engineering applications, inevitable noise seriously affects the accuracy of fault diagnos...
Faults in bearings and gearboxes, which are widely used in rotating machines, can lead to heavy inve...
Fault diagnosis in rotating machinery is significant to avoid serious accidents; thus, an accurate a...
Discriminative feature extraction is a challenge for data-driven fault diagnosis. Although deep lear...
Nowadays, most deep-learning-based bearing fault diagnosis methods are studied under the condition o...
Due to enhanced safety, cost-effectiveness, and reliability requirements, fault diagnosis of bearing...
Bearings are essential components of rotating machinery used in mechanical systems, and fault diagno...
Recently, deep learning has become more and more extensive in the field of fault diagnosis. However,...
Machine fault diagnosis (MFD) has gained an important enthusiasm since the unfolding of the pattern ...
Vibration and acoustic analysis actively support the nondestructive and noninvasive fault diagnostic...
In this paper; a new method for gear pitting fault detection is presented. The presented method is d...
Vibration and acoustic emission have received great attention of the research community for conditio...