DocumentCode
1438686
Title
Electrostatic Monitoring of Gas Path Debris for Aero-engines
Author
Wen, Zhenhua ; Zuo, Hongfu ; Pecht, Michael G.
Author_Institution
Sch. of Mechatron. Eng., Zhengzhou Inst. of Aeronaut. Ind. Manage., Zhengzhou, China
Volume
60
Issue
1
fYear
2011
fDate
3/1/2011 12:00:00 AM
Firstpage
33
Lastpage
40
Abstract
We present advanced condition monitoring technology based on electrostatic induction for detecting the debris in aero-engines exhaust gas. We also discuss the key technologies related to electrostatic monitoring systems, such as sensing technology, signal processing, feature extraction, and abnormal particle identification. The finite element method and data fitting method are applied to analyze the sensing characteristics of the sensor. We apply empirical mode decomposition and independent component analysis to effectively remove the noise mixed in with the monitoring signal. Certain diagnostic features extracted from the de-noised signal are presented here. A knowledge-acquisition model based on rough sets theory and artificial neural networks is constructed to identify the abnormal particles. The experiment results show the effectiveness of the methods proposed in this paper, and provide some guidelines for future research in this field for the aviation industry.
Keywords
aerospace components; aerospace engineering; aerospace engines; finite element analysis; neural nets; rough set theory; abnormal particle identification; aero-engines exhaust gas; artificial neural network; aviation industry; condition monitoring technology; data fitting method; diagnostic feature extraction; electrostatic induction; electrostatic monitoring system; empirical mode decomposition; finite element method; gas path debris; independent component analysis; key technology; knowledge-acquisition model; rough set theory; sensing technology; signal de-noising; signal processing; Electrodes; Electrostatics; Engines; Feature extraction; Monitoring; Sensitivity; Sensors; Aero-engine; condition monitoring; electrostatic sensor; feature extraction; knowledge acquisition; signal processing;
fLanguage
English
Journal_Title
Reliability, IEEE Transactions on
Publisher
ieee
ISSN
0018-9529
Type
jour
DOI
10.1109/TR.2011.2104830
Filename
5704535
Link To Document