您好,欢迎来到中国测试科技资讯平台!

首页> 《中国测试》期刊 >本期导读>基于改进EMD和形态滤波的滚动轴承故障诊断

基于改进EMD和形态滤波的滚动轴承故障诊断

3234    2016-02-03

免费

全文售价

作者:文成, 周传德

作者单位:重庆科技学院机械与动力工程学院, 重庆 401331


关键词:改进经验模态分解;形态滤波;滚动轴承;故障诊断


摘要:

针对滚动轴承故障振动信号的非平稳性特点,提出一种改进经验模态分解(EMD)和形态滤波相结合来提取故障特征信息的方法。该方法首先在原信号中加入高频谐波并进行EMD分解,减小传统EMD分解中存在的模态混叠现象,然后从高频本征模态分量(IMF)中去除高频谐波得到故障冲击成分,经形态滤波消噪后进行频谱分析,提取出故障特征信息。信号仿真分析该方法的实施过程,并将该方法成功运用于滚动轴承内圈和外圈故障的诊断。实验结果表明该方法能够有效提取滚动轴承故障特征信息,实现故障诊断。


Rolling bearing fault diagnosis based on improved EMD and morphological filter

WEN Cheng, ZHOU Chuande

College of Mechanical and Power Engineering, Chongqing University of Science and Technology, Chongqing 401331, China

Abstract: A new technology is proposed to solve the non-stationarity in vibration signals of antifriction bearing faults in accordance with the improved empirical mode decomposition (EMD) and morphological filters. First, a high-frequency harmonic was added into the original signal and then decomposed by means of EMD to reduce the mode mixing phenomenon in traditional EMD. Next, the high-frequency harmonic was removed from the high-frequency intrinsic mode component (IMF) to obtain fault impact compositions. The fault characteristic information was extracted by spectrum analysis after morphological filter de-noising. At the same time, the above steps were simulated by signals. This method was applied to diagnose the faults in inner and outer races of antifriction bearings. The experimental results show that the method can extract the fault characteristics and diagnose the faults of antifriction bearings.

Keywords: improved empirical mode decomposition;morphological filter;rolling bearing;fault diagnosis

2016, 42(1): 121-125  收稿日期: 2015-07-28;收到修改稿日期: 2015-08-17

基金项目: 国家自然科学基金项目(51205431)

作者简介: 文成(1972-),男,副教授,硕士,研究方向为信号分析与处理、机电测试与故障诊断。

参考文献

[1] HUANG N E, SHEN Z, LONG S R. The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis[J]. Proceeding of Royal Society of London Series,1998(454):903-905.
[2] 杨江天,周培钰. 经验模态分解和Laplace小波在柴油机齿轮系故障诊断中的应用[J]. 机械工程学报,2011,47(7):109-115.
[3] HUANG N E, WU M, LONG S R. A confidence limit for the empirical mode decomposition and Hilbert spectral analysis[J]. Proceeding of Royal Society London A,2003(459):2317-2345.
[4] 赵进平. 异常事件对EMD方法的影响及其解决方法研究[J]. 青岛海洋大学学报,2001,31(6):805-814.
[5] 刘小峰,秦树人,柏林. 基于小波包的经验模态分解法的研究应用[J]. 中国机械工程,2007,18(10):1201-1204.
[6] WU Z H, HUANG N E. Ensemble empirical mode decomposition:a noise-assisted data analysis method[J]. Advances in Adaptive Data Analysis,2009,1(1):1-41.
[7] 陈略,訾艳阳,何正嘉. 总体平均经验模态分解与1.5维谱方法的研究[J]. 西安交通大学学报,2009,43(5):94-98.
[8] 胡爱军,孙敬敬,向玲. 经验模态分解中的模态混叠问题[J].振动、测试与诊断,2011,31(4):429-434.
[9] NIKOLAOU N G, ANTONIADIS I A. Application of morphological operators as envelope extractors for impulsive-type periodic signals[J]. Mechanical Systems and Signal Processing,2003,17(6):1147-1162.
[10] 胡爱军,唐贵基,安连锁. 基于数学形态学的旋转机械振动信号降噪方法[J]. 机械工程学报,2006,42(4):127-130.
[11] WANG J, XU G H, ZHANG Q, et al. Application of improved morphological filter to the extraction of impulsive attenuation signals[J]. Mechanical Systems and Signal Processing,2009(23):236-245.