In order to extract fault feature of signal. An improved blind deconvolution algorithm which based on generalized morphological filtering and improved KL distance clustering methods was proposed to deal with industrial field noise,multi interference sources and disadvantage of blind extraction algorithm. First,the generalized morphological filter was used to extract the characteristic signal of observation signal. Then,the orthogonal matching pursuit algorithm was used to remove the period component of signal after being filtered. Finally,the improved KL distance was used to calculate distance of each component and obtain the separated signal by fuzzy C cluster. The results of computer simulation and real rolling bearing signals analysis sh...
Bearing fault signal analysis is an important means of bearing fault diagnosis. To effectively elimi...
As the supporting unit of rotating machinery, bearing can ensure efficient operation of the equipmen...
International audienceIn bearing fault diagnosis, ensemble empirical mode decomposition (EEMD) is a ...
In order to effectively separate and extract bearing composite faults, in view of the non-linearity,...
Weight-adjusted variant second order blind identification( WASOBI) algorithm had been used in fault ...
International audienceIn the last few years blind deconvolution techniques proved to be useful in or...
The detection and identification of bearing faults at their initial stage is pivotal in order to avo...
Aiming at the difficulty of extracting rolling bearing fault features under strong background noise ...
Acoustical machine monitoring is frequently complicated by noisy environments at a production site. ...
Because of the characteristics of weak signal and strong noise, the low-speed vibration signal fault...
In response to the problem that nonlinear and non-stationary rolling bearing fault signals are easil...
In the last years, Blind Deconvolution methods demonstrated their effectiveness for the diagnostics ...
To extract the weak fault features hidden in strong background interference in the event of the earl...
Blind deconvolution algorithms prove to be effective tools for fault identification, being able to e...
It is observed that the bearing failure of rotating machinery is a pulse in the vibration signal, bu...
Bearing fault signal analysis is an important means of bearing fault diagnosis. To effectively elimi...
As the supporting unit of rotating machinery, bearing can ensure efficient operation of the equipmen...
International audienceIn bearing fault diagnosis, ensemble empirical mode decomposition (EEMD) is a ...
In order to effectively separate and extract bearing composite faults, in view of the non-linearity,...
Weight-adjusted variant second order blind identification( WASOBI) algorithm had been used in fault ...
International audienceIn the last few years blind deconvolution techniques proved to be useful in or...
The detection and identification of bearing faults at their initial stage is pivotal in order to avo...
Aiming at the difficulty of extracting rolling bearing fault features under strong background noise ...
Acoustical machine monitoring is frequently complicated by noisy environments at a production site. ...
Because of the characteristics of weak signal and strong noise, the low-speed vibration signal fault...
In response to the problem that nonlinear and non-stationary rolling bearing fault signals are easil...
In the last years, Blind Deconvolution methods demonstrated their effectiveness for the diagnostics ...
To extract the weak fault features hidden in strong background interference in the event of the earl...
Blind deconvolution algorithms prove to be effective tools for fault identification, being able to e...
It is observed that the bearing failure of rotating machinery is a pulse in the vibration signal, bu...
Bearing fault signal analysis is an important means of bearing fault diagnosis. To effectively elimi...
As the supporting unit of rotating machinery, bearing can ensure efficient operation of the equipmen...
International audienceIn bearing fault diagnosis, ensemble empirical mode decomposition (EEMD) is a ...