农业工程学报
農業工程學報
농업공정학보
2010年
2期
190-196
,共7页
旋转机械%故障诊断%集合经验模式分解%模式混淆%动静碰磨
鏇轉機械%故障診斷%集閤經驗模式分解%模式混淆%動靜踫磨
선전궤계%고장진단%집합경험모식분해%모식혼효%동정팽마
rotating machinery%failure analysis%ensemble empirical mode decomposition (EEMD)%mode mixing%rub-impact fault
为了抑制经验模式分解中的模式混淆现象,提高分析精度,引入集合经验模式分解(EEMD)算法.在分析信号上叠加适当的随机高斯白噪声序列,改变信号的局部时间跨度,从而改变一次经验模式分解(EMD)中分析的特征尺度,通过足够多次EMD分解,相当于从多个角度提取信号的本质,最后由所有次分解得出的各本征模态函数(IMF)的均值作为输出,不但消除了人为噪声的影响,还清晰还原了信号的内在过程,准确揭示了其真实物理意义.通过仿真试验和实际的动静碰磨故障案例证实了EEMD算法的有效性,并与基本EMD算法和高频谐波法进行了对比,结果表明,EEMD虽然耗时较多但结果更准确,在旋转机械故障诊断领域应用前景广泛.
為瞭抑製經驗模式分解中的模式混淆現象,提高分析精度,引入集閤經驗模式分解(EEMD)算法.在分析信號上疊加適噹的隨機高斯白譟聲序列,改變信號的跼部時間跨度,從而改變一次經驗模式分解(EMD)中分析的特徵呎度,通過足夠多次EMD分解,相噹于從多箇角度提取信號的本質,最後由所有次分解得齣的各本徵模態函數(IMF)的均值作為輸齣,不但消除瞭人為譟聲的影響,還清晰還原瞭信號的內在過程,準確揭示瞭其真實物理意義.通過倣真試驗和實際的動靜踫磨故障案例證實瞭EEMD算法的有效性,併與基本EMD算法和高頻諧波法進行瞭對比,結果錶明,EEMD雖然耗時較多但結果更準確,在鏇轉機械故障診斷領域應用前景廣汎.
위료억제경험모식분해중적모식혼효현상,제고분석정도,인입집합경험모식분해(EEMD)산법.재분석신호상첩가괄당적수궤고사백조성서렬,개변신호적국부시간과도,종이개변일차경험모식분해(EMD)중분석적특정척도,통과족구다차EMD분해,상당우종다개각도제취신호적본질,최후유소유차분해득출적각본정모태함수(IMF)적균치작위수출,불단소제료인위조성적영향,환청석환원료신호적내재과정,준학게시료기진실물리의의.통과방진시험화실제적동정팽마고장안예증실료EEMD산법적유효성,병여기본EMD산법화고빈해파법진행료대비,결과표명,EEMD수연모시교다단결과경준학,재선전궤계고장진단영역응용전경엄범.
For suppressing the phenomenon of mode mixing in empirical mode decomposition (EMD) and increasing the analysis acetwacy, an improved algorithm named ensemble empirical mode decomposition (EEMD) was presented. A moderate Gauss white noise generated randomly was added to the original signal, which changed the local time span of the signal and rendered the analysis scales of EMD in a trial. By sufficient trials, considering as extracting the nature of the signal from different aspects, an ensemble mean of certain intrinsic mode function (IMF) decomposed by the EMD method was output as the final result of the new algorithm. The IMF eliminated bad effects of artificial noise, and indicated clearly the intrinsic processes of the signal with full of real meanings. EEMD method was validated by both simulation experiment and real rob-impact ease, and then was compared with basic EMD algorithm and high-fi'equency-hamaonic method. The results showed that EEMD was more precise but a little time-consuming, EEMD has good prospects of application in failure analysis of rotating machinery.