Nothing Special   »   [go: up one dir, main page]

Zhang et al., 2019 - Google Patents

Improved local cepstrum and its applications for gearbox and rolling bearing fault detection

Zhang et al., 2019

Document ID
14721526398385386627
Author
Zhang X
Zhou R
Zhang W
Publication year
Publication venue
Measurement Science and Technology

External Links

Snippet

Cepstrum is a kind of powerful and widely used method in the fields of speech signal processing, echo signal detection, building acoustics, seismic analysis, condition monitoring and fault diagnosis. But in some circumstances, such as signals with localized distribution of …
Continue reading at iopscience.iop.org (other versions)

Classifications

    • GPHYSICS
    • G01MEASURING; TESTING
    • G01MTESTING STATIC OR DYNAMIC BALANCE OF MACHINES OR STRUCTURES; TESTING STRUCTURES OR APPARATUS NOT OTHERWISE PROVIDED FOR
    • G01M13/00Testing of machine parts
    • G01M13/02Testing of gearing or of transmission mechanisms

Similar Documents

Publication Publication Date Title
Wang et al. Subband averaging kurtogram with dual-tree complex wavelet packet transform for rotating machinery fault diagnosis
Li et al. Multi-dimensional variational mode decomposition for bearing-crack detection in wind turbines with large driving-speed variations
Yan et al. Improved Hilbert–Huang transform based weak signal detection methodology and its application on incipient fault diagnosis and ECG signal analysis
Zhang et al. Improved local cepstrum and its applications for gearbox and rolling bearing fault detection
Luo et al. A kurtosis-guided adaptive demodulation technique for bearing fault detection based on tunable-Q wavelet transform
Qin et al. Weak transient fault feature extraction based on an optimized Morlet wavelet and kurtosis
Guo et al. Fault feature extraction for rolling element bearing diagnosis based on a multi-stage noise reduction method
Wang et al. A time–frequency-based maximum correlated kurtosis deconvolution approach for detecting bearing faults under variable speed conditions
Meng et al. Fault diagnosis of rolling bearing based on second generation wavelet denoising and morphological filter
Wang et al. A morphogram with the optimal selection of parameters used in morphological analysis for enhancing the ability in bearing fault diagnosis
CN109029999B (en) Rolling bearing fault diagnosis method based on enhanced modulation bispectrum analysis
CN108731945B (en) Method for extracting fault signal characteristic information of aircraft engine rotor system
Chen et al. Improved VMD-FRFT based on initial center frequency for early fault diagnosis of rolling element bearing
Wang et al. A computer-vision-based rotating speed estimation method for motor bearing fault diagnosis
Wang et al. Weak fault diagnosis of rolling bearing under variable speed condition using IEWT-based enhanced envelope order spectrum
Barbini et al. Phase editing as a signal pre-processing step for automated bearing fault detection
Shi et al. The VMD-scale space based hoyergram and its application in rolling bearing fault diagnosis
Yang et al. A novel weak fault signal detection approach for a rolling bearing using variational mode decomposition and phase space parallel factor analysis
Xin et al. Novel data-driven short-frequency mutual information entropy threshold filtering and its application to bearing fault diagnosis
Ding et al. Multiple instantaneous frequency ridge based integration strategy for bearing fault diagnosis under variable speed operations
Yu et al. Adaptive multiple second-order synchrosqueezing wavelet transform and its application in wind turbine gearbox fault diagnosis
Hai et al. Rolling bearing fault feature extraction using non-convex periodic group sparse method
Xue et al. Application of enhanced empirical wavelet transform and correlation kurtosis in bearing fault diagnosis
Gong et al. Application of optimized multiscale mathematical morphology for bearing fault diagnosis
Kumar et al. Diagnosis of an incipient defect in a worm gearbox using minimum entropy deconvolution and local cepstrum