The fault-induced impulses with uneven amplitudes and durations are always accompa-nied with amplitude modulation and (or) frequency modulation, which leads to that the acquired vibration/acoustic signals for rotating machine fault diagnosis always present nonlinear and nonstationary properties. Such an effect affects precise fault detection, especially when the impulses are submerged in heavy background noise. To address this issue, a nonstationary weak signal detection strategy is proposed based on a time-delayed feedback stochastic resonance (TFSR) model. The TFSR is a long-memory system that can utilize historical information to enhance the signal periodicity in the feed-back process, and such an effect is beneficial to periodic signal ...
In modern industries, condition monitoring is considered as the most promising technology to ensure ...
This study demonstrates how a time domain data based non-linear approach known as Stochastic Resonan...
There is a great interest to apply BSS methods in mechanical system signal processing for monitoring...
Stochastic resonance is the use of nonlinear systems to synchronize an original signal with noise. T...
Since the weak fault characteristics of mechanical equipment are often difficult to extract in stron...
In this paper a stochastic resonance (SR)-based method for recovering weak impulsive signals is deve...
To extract weak faults under strong noise, a method for feature extraction of weak faults with time-...
For solving detection problems of multifrequency weak signals in noisy background, a novel weak sign...
Abstract — Multiscale noise tuning stochastic resonance (MSTSR) has been proved to be an effective m...
Investigations carried out so far on the application of Stochastic Resonance (SR) to mechanical syst...
In recent years, methods for detecting motor bearing faults have attracted increasing attention. How...
Stochastic Resonance is a phenomenon, studied and mainly exploited in telecommunication, which permi...
The stochastic resonance (SR) method is widely applied to fault feature extraction of rotary machine...
This study demonstrates how a time domain data based non-linear approach known as Stochastic Resonan...
Aiming at the problems of early weak fault feature extraction of bearings in rotating machinery, an ...
In modern industries, condition monitoring is considered as the most promising technology to ensure ...
This study demonstrates how a time domain data based non-linear approach known as Stochastic Resonan...
There is a great interest to apply BSS methods in mechanical system signal processing for monitoring...
Stochastic resonance is the use of nonlinear systems to synchronize an original signal with noise. T...
Since the weak fault characteristics of mechanical equipment are often difficult to extract in stron...
In this paper a stochastic resonance (SR)-based method for recovering weak impulsive signals is deve...
To extract weak faults under strong noise, a method for feature extraction of weak faults with time-...
For solving detection problems of multifrequency weak signals in noisy background, a novel weak sign...
Abstract — Multiscale noise tuning stochastic resonance (MSTSR) has been proved to be an effective m...
Investigations carried out so far on the application of Stochastic Resonance (SR) to mechanical syst...
In recent years, methods for detecting motor bearing faults have attracted increasing attention. How...
Stochastic Resonance is a phenomenon, studied and mainly exploited in telecommunication, which permi...
The stochastic resonance (SR) method is widely applied to fault feature extraction of rotary machine...
This study demonstrates how a time domain data based non-linear approach known as Stochastic Resonan...
Aiming at the problems of early weak fault feature extraction of bearings in rotating machinery, an ...
In modern industries, condition monitoring is considered as the most promising technology to ensure ...
This study demonstrates how a time domain data based non-linear approach known as Stochastic Resonan...
There is a great interest to apply BSS methods in mechanical system signal processing for monitoring...