轴承
軸承
축승
BEARING
2014年
11期
48-52,53
,共6页
任学平%庞震%辛向志%邢义通%马文生
任學平%龐震%辛嚮誌%邢義通%馬文生
임학평%방진%신향지%형의통%마문생
滚动轴承%故障诊断%小波包%最优熵%相关向量机
滾動軸承%故障診斷%小波包%最優熵%相關嚮量機
곤동축승%고장진단%소파포%최우적%상관향량궤
rolling bearing%fault diagnosis%wavelet packet%optimal entropy%RVM
为解决滚动轴承振动信号信噪比低和故障分类准确性不高的问题,提出了小波包最优熵和相关向量机相结合的故障诊断方法。首先采用小波包对采集到的信号进行信噪分离,寻找分解后信号的最优小波包节点熵;然后提取最优节点能量作为训练样本,对相关向量机的多故障分类器进行训练,实现轴承的智能诊断。试验表明,该方法可简单有效地分离噪声,并具有良好的分类能力,可以很好地应用于轴承故障诊断。
為解決滾動軸承振動信號信譟比低和故障分類準確性不高的問題,提齣瞭小波包最優熵和相關嚮量機相結閤的故障診斷方法。首先採用小波包對採集到的信號進行信譟分離,尋找分解後信號的最優小波包節點熵;然後提取最優節點能量作為訓練樣本,對相關嚮量機的多故障分類器進行訓練,實現軸承的智能診斷。試驗錶明,該方法可簡單有效地分離譟聲,併具有良好的分類能力,可以很好地應用于軸承故障診斷。
위해결곤동축승진동신호신조비저화고장분류준학성불고적문제,제출료소파포최우적화상관향량궤상결합적고장진단방법。수선채용소파포대채집도적신호진행신조분리,심조분해후신호적최우소파포절점적;연후제취최우절점능량작위훈련양본,대상관향량궤적다고장분류기진행훈련,실현축승적지능진단。시험표명,해방법가간단유효지분리조성,병구유량호적분류능력,가이흔호지응용우축승고장진단。
To solve the low signal -to -noise ratio of vibration signals for rolling bearings and the accuracy of fault clas-sification,a fault diagnosis method is presented,which combines wavelet packet optimal entropy and relevance vector machine(RVM).Firstly the acquisition signals are separated by wavelet packet,the optimal wavelet packet node entro-py of decomposed signal is searched.Then the energy of optimal node is extracted as training samples,the multi -fault classifier for RVMare trained,and the intelligent diagnosis for bearings is realized.The test shows that the method can simply and effectively separate noise,the classification ability is good,which can be good for fault diagnosis of bear-ings.