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集合经验模态分解的稳健滤波方法研究
引用本文:刘海波,赵宇凌.集合经验模态分解的稳健滤波方法研究[J].振动与冲击,2013,32(8):63-67.
作者姓名:刘海波  赵宇凌
作者单位:1. 91550部队94分队,大连 116023;2. 东北财经大学实验教学中心,大连 116025
摘    要:为了消除野值和噪声信号对观测数据的影响,给出一种基于集合经验分解的具有稳健性的滤波算法:首先用滑动中值滤波算法剔除原始数据中的野值,然后采用集合经验模态分解算法,抑制数据中的噪声。数值仿真和实际工程应用表明,该方法不仅能剔除野值,抑制信号中的噪声,提高信噪比,还能够有效消除模态混叠问题,将被测信号中不同的频率成分独立分解在不同的固有模态函数中,从而得到更清晰的时频分布,有利于实际数据处理中的信号分析和故障诊断。

关 键 词:振动与波  经验模态分解  EEMD  滤波  
收稿时间:2011-12-9
修稿时间:2012-6-27

Research on the Method of Robust Filtering Based on Ensemble Empirical Mode Decomposition
LIU Hai-bo,ZHAO Yu-ling.Research on the Method of Robust Filtering Based on Ensemble Empirical Mode Decomposition[J].Journal of Vibration and Shock,2013,32(8):63-67.
Authors:LIU Hai-bo  ZHAO Yu-ling
Affiliation:1. Section 94, Unit 91550 , Dalian 116023, China2. Experiment Teaching Center , Dongbei University of Finance and Economics ,Dalian 116025, China
Abstract:In order to eliminate outliers and noise impact on the observed data, given a robust filtering algorithm based on ensemble empirical mode decomposition: first with the sliding median filter removed outliers in raw data, then use ensemble empirical mode decomposition algorithm to suppress the noise in the data. Numerical simulation and actual engineering using shows that the method can not only eliminate outliers, suppress the noise signal and improve signal to noise ratio, but also can effectively eliminate the problem of aliasing modes, independently decompose the measured signal into different IMF to get a clearer time-frequency distribution, the actual data processing is conducive to the signal analysis and fault diagnosis.
Keywords:vibration and wave                                                      empirical mode decomposition                                                      EEMD                                                      filtering
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