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Fault diagnosis method for an Aeroengine Based on Independent Component Analysis and the Discrete Hidden Markov Model 被引量:1

Fault diagnosis method for an Aeroengine Based on Independent Component Analysis and the Discrete Hidden Markov Model
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摘要 The vibration signals of an aeroengine are a very important information source for fault diagnosis and condition monitoring. Considering the nonstationarity and low repeatability of the vibration signals, it is necessary to find a corresponding method for feature extraction and fault recognition. In this paper, based on Independent Component Analysis (ICA) and the Discrete Hidden Markov Model (DHMM), a new fault diagnosis approach named ICA-DHMM is proposed. In this method, ICA separates the source signals from the mixed vibration signals and then extracts features from them, DHMM works as a classifier to recognize the conditions of the aeroengine. Compared with the DHMM, which use the amplitude spectrum of mixed signals as feature parameters, experimental results show this method has higher diagnosis accuracy. The vibration signals of an aeroengine are a very important information source for fault diagnosis and condition monitoring. Considering the nonstationarity and low repeatability of the vibration signals, it is necessary to find a corresponding method for feature extraction and fault recognition. In this paper, based on Independent Component Analysis (ICA) and the Discrete Hidden Markov Model (DHMM), a new fault diagnosis approach named ICA-DHMM is proposed. In this method, ICA separates the source signals from the mixed vibration signals and then extracts features from them, DHMM works as a classifier to recognize the conditions of the aeroengine. Compared with the DHMM, which use the amplitude spectrum of mixed signals as feature parameters, experimental results show this method has higher diagnosis accuracy.
出处 《International Journal of Plant Engineering and Management》 2009年第4期193-201,共9页 国际设备工程与管理(英文版)
基金 supported by the National Natural Science Foundation of China under Grant No.60672184
关键词 independent component analysis (ICA) feature extraction discrete hidden Markov model DHMM) AEROENGINE fault diagnosis independent component analysis (ICA), feature extraction, discrete hidden Markov model ( DHMM), aeroengine, fault diagnosis
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  • 1何强,博士学位论文,2000年
  • 2杨行峻,语音信号数字处理,1995年

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