A research on rubbing feature extraction based on information fusion and signal decomposition algorithm

Q3 Physics and Astronomy
Mingyue Yu, Haonan Cong, Wangying Chen
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引用次数: 0

Abstract

To effectively identify the rotor–stator rubbing fault, the paper has brought forward a method combining principal component analysis (PCA), intrinsic time-scale decomposition (ITD), and information entropy (IE). Firstly, in considering that the characteristic information of faults extracted from the information collected by single sensor is not complete or comprehensive, the approach blends the vibration signals collected from 4 different positions at the same moment based on PCA algorithm; secondly, regarding that ITD algorithm can effectively avoid the problems of poor adaptivity and end effect, blended signals are broken down based on ITD algorithm; thirdly, calculate the IE of self-correlation function of each PRC based on the fact that the smaller IE is, the less confusion system has and the easier it is to extract fault characteristics, and treat the self-correlation function of PRC related with the minimum IE as optimal component to represent fault characteristics; fourthly, characteristic extraction of rotor–stator rubbing fault and identification are done on the basis of the frequency spectrum of optimal component. To prove the availability of method, vibration signals are subjected to validation and analysis, which are collected from different rotation speeds, casing thicknesses, rubbing positions, and types. The result indicates that the proposed PCA–ITD–IE can equally and effectively extract the characteristics of rotor–stator rubbing faults of aero-engine involved in various conditions.
基于信息融合和信号分解算法的摩擦特征提取研究
为了有效地识别转子-定子摩擦故障,本文提出了一种将主成分分析(PCA)、固有时标分解(ITD)和信息熵(IE)相结合的方法。首先,考虑到从单个传感器采集的信息中提取的故障特征信息不完整或不全面,该方法基于PCA算法对同一时刻从4个不同位置采集的振动信号进行融合;其次,考虑到ITD算法可以有效地避免自适应性差和终端效果差的问题,基于ITD算法对混合信号进行分解;第三,基于IE越小,系统越不混乱,越容易提取故障特征的事实,计算每个PRC的自相关函数的IE,并将与最小IE相关的PRC自相关函数作为表示故障特征的最优分量;第四,基于最优部件的频谱,对转子-定子碰摩故障进行特征提取和识别。为了证明该方法的可用性,对不同转速、套管厚度、摩擦位置和类型的振动信号进行了验证和分析。结果表明,所提出的PCA–ITD–IE能够平等有效地提取航空发动机在各种条件下转子-定子摩擦故障的特征。
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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来源期刊
Noise and Vibration Worldwide
Noise and Vibration Worldwide Physics and Astronomy-Acoustics and Ultrasonics
CiteScore
1.90
自引率
0.00%
发文量
34
期刊介绍: Noise & Vibration Worldwide (NVWW) is the WORLD"S LEADING MAGAZINE on all aspects of the cause, effect, measurement, acceptable levels and methods of control of noise and vibration, keeping you up-to-date on all the latest developments and applications in noise and vibration control.
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