Based on the combination of improved Local Mean Decomposition (LMD), Multi-scale Permutation Entropy (MPE) and Hidden Markov Model (HMM), the fault types of bearings are diagnosed. Improved LMD is proposed based on the self-similarity of roller bearing vibration signal by extending the right and left side of the original signal to suppress its edge effect. First, the vibration signals of the rolling bearing are decomposed into several product function (PF) components by improved LMD respectively. Then, the phase space reconstruction of the PF1 is carried out by using the mutual information (MI) method and the false nearest neighbor (FNN) method to calculate the delay time and the embedding dimension, and then the scale is set to obtain the ...
Fault diagnosis of rotating machinery is vital to identify incipient failures and avoid unexpected d...
Fault diagnosis of rolling bearing is of great importance to ensure high reliability and safety in t...
Feature extraction is one of the most difficult aspects of mechanical fault diagnosis, and it is dir...
Based on the combination of improved Local Mean Decomposition (LMD), Multi-scale Permutation Entropy...
Based on the combination of improved Local Mean Decomposition (LMD), Multi-scale Permutation Entropy...
A novel bearing vibration signal fault feature extraction and recognition method based on the improv...
This paper presents the local mean decomposition (LMD) integrated with multi-scale permutation entro...
A new rolling bearing fault diagnosis approach based on multiscale permutation entropy (MPE), Laplac...
In this paper, composite multiscale weighted permutation entropy (CMWPE) is proposed to evaluate the...
Aiming at the nonstationary characteristic of a gear fault vibration signal, a recognition method ba...
Fault diagnosis of rotating machinery is vital to identify incipient failures and avoid unexpected d...
As a nonlinear dynamic method for complexity measurement of time series, multiscale entropy (MSE) ha...
This paper presents a rolling bearing fault diagnosis approach by integrating wavelet packet decompo...
A method based on multiscale base-scale entropy (MBSE) and random forests (RF) for roller bearings f...
Rolling bearings are the vital components of large electromechanical equipment, thus it is of great ...
Fault diagnosis of rotating machinery is vital to identify incipient failures and avoid unexpected d...
Fault diagnosis of rolling bearing is of great importance to ensure high reliability and safety in t...
Feature extraction is one of the most difficult aspects of mechanical fault diagnosis, and it is dir...
Based on the combination of improved Local Mean Decomposition (LMD), Multi-scale Permutation Entropy...
Based on the combination of improved Local Mean Decomposition (LMD), Multi-scale Permutation Entropy...
A novel bearing vibration signal fault feature extraction and recognition method based on the improv...
This paper presents the local mean decomposition (LMD) integrated with multi-scale permutation entro...
A new rolling bearing fault diagnosis approach based on multiscale permutation entropy (MPE), Laplac...
In this paper, composite multiscale weighted permutation entropy (CMWPE) is proposed to evaluate the...
Aiming at the nonstationary characteristic of a gear fault vibration signal, a recognition method ba...
Fault diagnosis of rotating machinery is vital to identify incipient failures and avoid unexpected d...
As a nonlinear dynamic method for complexity measurement of time series, multiscale entropy (MSE) ha...
This paper presents a rolling bearing fault diagnosis approach by integrating wavelet packet decompo...
A method based on multiscale base-scale entropy (MBSE) and random forests (RF) for roller bearings f...
Rolling bearings are the vital components of large electromechanical equipment, thus it is of great ...
Fault diagnosis of rotating machinery is vital to identify incipient failures and avoid unexpected d...
Fault diagnosis of rolling bearing is of great importance to ensure high reliability and safety in t...
Feature extraction is one of the most difficult aspects of mechanical fault diagnosis, and it is dir...