Mining machines are strongly nonlinear systems, and their transmission vibration signals are nonlinear mixtures of different kinds of vibration sources. In addition, vibration signals measured by the accelerometer are contaminated by noise. As a result, it is inefficient and ineffective for the blind source separation (BSS) algorithm to separate the critical independent sources associated with the transmission fault vibrations. For this reason, a new method based on wavelet de-noising and nonlinear independent component analysis (ICA) is presented in this paper to tackle the nonlinear BSS problem with additive noise. The wavelet de-noising approach was first employed to eliminate the influence of the additive noise in the BSS procedure. The...
peer reviewedIn the field of structural health monitoring or machine condition monitoring, most vibr...
De-noising of signal processing is crucial for fault diagnosis in order to successfully conduct feat...
This paper presents a model to extract and select a proper set of features for diagnosing bearing de...
The vibration signal of rotating machinery compound faults acquired in actual fields has the charact...
Rotor systems have been extensively used in a variety of industrial applications. However an unexpec...
Abstract--- Fault diagnosis in gears has been the subject of intensive research as gears are critica...
A reliable monitoring of industrial drives plays a vital role to prevent from the performance degrad...
Maintenance is essential to prevent catastrophic failures in rotating machinery. A crack can cause a...
This paper presents a new fault diagnosis procedure for rotating machinery using the wavelet packets...
In recent years advanced signal processing techniques are used increasingly to excavate the nonstati...
Copyright: © 2021 by the authors. Machinery with several rotating and stationary components tends to...
Current age has been primarily revolutionized by the increased use of rotary machines in our everyda...
Fault diagnosis of rotating machinery mainly includes fault feature extraction and fault classificat...
This article presents aspects of a tool to assist in predictive maintenance based on vibration analy...
Fourier and wavelet analysis of vibration signals are the two most commonly used techniques for blad...
peer reviewedIn the field of structural health monitoring or machine condition monitoring, most vibr...
De-noising of signal processing is crucial for fault diagnosis in order to successfully conduct feat...
This paper presents a model to extract and select a proper set of features for diagnosing bearing de...
The vibration signal of rotating machinery compound faults acquired in actual fields has the charact...
Rotor systems have been extensively used in a variety of industrial applications. However an unexpec...
Abstract--- Fault diagnosis in gears has been the subject of intensive research as gears are critica...
A reliable monitoring of industrial drives plays a vital role to prevent from the performance degrad...
Maintenance is essential to prevent catastrophic failures in rotating machinery. A crack can cause a...
This paper presents a new fault diagnosis procedure for rotating machinery using the wavelet packets...
In recent years advanced signal processing techniques are used increasingly to excavate the nonstati...
Copyright: © 2021 by the authors. Machinery with several rotating and stationary components tends to...
Current age has been primarily revolutionized by the increased use of rotary machines in our everyda...
Fault diagnosis of rotating machinery mainly includes fault feature extraction and fault classificat...
This article presents aspects of a tool to assist in predictive maintenance based on vibration analy...
Fourier and wavelet analysis of vibration signals are the two most commonly used techniques for blad...
peer reviewedIn the field of structural health monitoring or machine condition monitoring, most vibr...
De-noising of signal processing is crucial for fault diagnosis in order to successfully conduct feat...
This paper presents a model to extract and select a proper set of features for diagnosing bearing de...