Multi-domain sequential signature analysis for machinery intelligent diagnosis

Jinjiang Wang, Yulong Zhang, Li-xiang Duan, Xuduo Wang
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引用次数: 2

Abstract

Feature extraction plays an important role in machinery fault diagnosis and prognosis. The features extracted from time, frequency and time-frequency domains are widely investigated to describe the properties of overall signal from different perspectives, seldom considering the sequential characteristic of time-series signal in which the fault information may be embedded. This paper investigates a novel approach combing modified Symbolic Aggregate approXimation (SAX) framework and Kernel Principal Component Analysis (KPCA) to extract fault information by analyzing sequential pattern in time-series signal for fault diagnosis. SAX reduces the dimensionality of raw data by transforming the original real valued time series into a discrete one with analyzing signal sequential characteristic and then multiple features are fused by KPCA for fault classification. The proposed approach has high computation efficiency and feature extraction accuracy. Experimental studies on reciprocating compressor valve demonstrate that the presented approach outperforms the methods of SAX-entropy using support vector machine for classification.
面向机械智能诊断的多域序列特征分析
特征提取在机械故障诊断和预测中起着重要的作用。从时间域、频率域和时频域提取的特征被广泛研究,从不同角度描述整个信号的特性,很少考虑可能嵌入故障信息的时间序列信号的序列特征。本文研究了一种将改进的符号聚合近似(SAX)框架与核主成分分析(KPCA)相结合,通过分析时间序列信号中的序列模式提取故障信息进行故障诊断的新方法。SAX通过分析信号序列特征,将原始实值时间序列转化为离散序列,对原始数据进行降维处理,再通过KPCA融合多个特征进行故障分类。该方法具有较高的计算效率和特征提取精度。对往复式压缩机阀门的实验研究表明,该方法优于基于支持向量机的sax -熵分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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