振动与冲击
振動與遲擊
진동여충격
JOURNAL OF VIBRATION AND SHOCK
2015年
4期
158-164,183
,共8页
希尔伯特黄变换%小波去噪%固有模态函数%希尔伯特谱%边际谱
希爾伯特黃變換%小波去譟%固有模態函數%希爾伯特譜%邊際譜
희이백특황변환%소파거조%고유모태함수%희이백특보%변제보
Hilbert-Huang transformation%wavelet domain denoising%intrinsic mode function (IMF)%Hilbert spectrum%marginal spectrum
概述了希尔伯特黄变换(HHT)的基本理论和算法,对信号经过经验模态分解(EMD)后得到的固有模态函数(IMF)求取振幅均值,差值筛选出与刀具磨损相关的 IMF 分量,并对单分量固有模态函数求取边际谱,获取边际谱最大幅值点,建立他们与刀具磨损之间的映射关系,进行特征提取,将其作为神经网络的输入特征向量,结合希尔伯特三维时频谱进行刀具磨损状态的判断。研究结果证明,该方法可以作为刀具磨损监测中信号特征提取的一种简单和可靠的方法。
概述瞭希爾伯特黃變換(HHT)的基本理論和算法,對信號經過經驗模態分解(EMD)後得到的固有模態函數(IMF)求取振幅均值,差值篩選齣與刀具磨損相關的 IMF 分量,併對單分量固有模態函數求取邊際譜,穫取邊際譜最大幅值點,建立他們與刀具磨損之間的映射關繫,進行特徵提取,將其作為神經網絡的輸入特徵嚮量,結閤希爾伯特三維時頻譜進行刀具磨損狀態的判斷。研究結果證明,該方法可以作為刀具磨損鑑測中信號特徵提取的一種簡單和可靠的方法。
개술료희이백특황변환(HHT)적기본이론화산법,대신호경과경험모태분해(EMD)후득도적고유모태함수(IMF)구취진폭균치,차치사선출여도구마손상관적 IMF 분량,병대단분량고유모태함수구취변제보,획취변제보최대폭치점,건립타문여도구마손지간적영사관계,진행특정제취,장기작위신경망락적수입특정향량,결합희이백특삼유시빈보진행도구마손상태적판단。연구결과증명,해방법가이작위도구마손감측중신호특정제취적일충간단화가고적방법。
After presenting the basic theory and algorithm of Hilbert-Huang transformation (HHT),a tool signal was decomposed with the empirical mode decomposition (EMD)method and its intrinsic mode functions (IMFs)were gained to obtain their average amplitude.The IMF components related to tool wear were chosen using a difference screen. Meanwhile,the marginal spectrum of a single intrinsic mode function was obtained and its maximum amplitude point was then found.By establishing the mapping relationship between maximum amplitude points and tool wear,the features of tool wear were extracted.Regarding them as input eigen-vectors of a neural network,and combined with Hilbert spectra, the tool wear status judgment was implemented.The study results showed that this approach is a simple and reliable method to detect the level of tool wear.