Title
The recovery of weak impulsive signals based on stochastic resonance and moving least squares fitting.
Abstract
In this paper a stochastic resonance (SR)-based method for recovering weak impulsive signals is developed for quantitative diagnosis of faults in rotating machinery. It was shown in theory that weak impulsive signals follow the mechanism of SR, but the SR produces a nonlinear distortion of the shape of the impulsive signal. To eliminate the distortion a moving least squares fitting method is introduced to reconstruct the signal from the output of the SR process. This proposed method is verified by comparing its detection results with that of a morphological filter based on both simulated and experimental signals. The experimental results show that the background noise is suppressed effectively and the key features of impulsive signals are reconstructed with a good degree of accuracy, which leads to an accurate diagnosis of faults in roller bearings in a run-to failure test.
Year
DOI
Venue
2014
10.3390/s140813692
SENSORS
Keywords
Field
DocType
weak impulsive signals,parameter-tuning stochastic resonance,moving least squares fitting,recovery
Least squares,Background noise,Computer science,Simulation,Stochastic process,Algorithm,Moving least squares,Electronic engineering,Bearing (mechanical),Stochastic resonance,Nonlinear distortion,Distortion
Journal
Volume
Issue
ISSN
14
8.0
1424-8220
Citations 
PageRank 
References 
2
0.56
2
Authors
5
Name
Order
Citations
PageRank
Kuosheng Jiang151.03
Guanghua Xu2357.15
Lin Liang320.89
Tangfei Tao4245.99
Feng-Shou Gu551.72