Application of feature reduction techniques for automatic bearing degradation assessment

Jaouher Ben Ali, L. Saidi, A. Mouelhi, B. Chebel-Morello, F. Fnaiech
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引用次数: 9

Abstract

Bearings are important assets for most industrial applications. The non-destructive diagnosis of these elements needs an accurate and reliable acquisition of its dynamic vibration signals affected by noise and the other part of system such as gears, shafts, etc. Empirical mode decomposition is an advanced signal processing tool for bearing fault feature extraction. In this paper, empirical mode decomposition is used to decompose non-linear and non-stationary bearing vibration signals into several stationary intrinsic mode functions and the empirical mode decomposition energy entropy is computed for each intrinsic mode function. Moreover, principal component analysis and linear discriminant analysis are used for feature reduction. Based on the Fisher's criterion, experimental results show that linear discriminant analysis features are highlighted compared to principal component analysis features and original empirical mode decomposition features for bearing fault diagnosis as type (inner race, outer race, rolling element) and severity (normal, degraded, faulting).
特征约简技术在轴承退化自动评估中的应用
轴承是大多数工业应用的重要资产。这些元件的无损诊断需要准确可靠地获取其受噪声影响的动态振动信号以及系统其他部分(如齿轮、轴等)的动态振动信号。经验模态分解是一种先进的轴承故障特征提取的信号处理工具。本文采用经验模态分解方法,将非线性非平稳轴承振动信号分解为若干平稳的本征模态函数,并计算每个本征模态函数的经验模态分解能量熵。利用主成分分析和线性判别分析进行特征约简。基于Fisher准则的实验结果表明,与主成分分析特征和原始经验模态分解特征相比,线性判别分析特征在轴承故障诊断中更突出,如类型(内圈、外圈、滚动体)和严重程度(正常、退化、故障)。
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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