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基于主轴故障诊断的微弱信号特征提取技术
引用本文:代晓明,韩秋实,王红军. 基于主轴故障诊断的微弱信号特征提取技术[J]. 机床与液压, 2014, 42(19): 195-198
作者姓名:代晓明  韩秋实  王红军
作者单位:1. 机械科学研究总院,北京100044; 北京信息科技大学信息管理学院,北京100192
2. 北京信息科技大学机电工程学院,北京,100192
基金项目:北京市自然科学基金资助项目(KZ201211232039);北京信息科技大学学校科研基金资助项目
摘    要:微弱信号特征提取对于主轴系统早期故障诊断有着重要意义。从抑制噪声和利用噪声达到提高信噪比的角度出发,基于信号处理领域的研究成果,列举了可用于主轴系统微弱信号特征的提取方法。这些方法包括抑制噪声提高信噪比的信号处理方法和利用噪声增强微弱信号的方法,抑制噪声提高信噪比的信号处理方法有谱峭度、小波变换、经验模式分解、循环平稳理论、盲源分离、流形学习等;利用噪声增强微弱信号的方法有随机共振和总体平均经验模式分解。为主轴故障诊断研究提供了参考。

关 键 词:主轴系统  故障诊断  微弱信号  特征提取  信噪比

Technology of Weak Signal Feature Extraction Based on Spindle Fault Diagnosis
DAI Xiaoming,HAN Qiushi,WANG Hongjun. Technology of Weak Signal Feature Extraction Based on Spindle Fault Diagnosis[J]. Machine Tool & Hydraulics, 2014, 42(19): 195-198
Authors:DAI Xiaoming  HAN Qiushi  WANG Hongjun
Abstract:The feature extraction of weak signal is of important significance for early stage fault diagnosis in spindle system.Started from the aspects of suppressing and adding noise to improve the signal to noise ratio,feature extraction methods with weak signal of spindle system using were listed based on the research results of signal processing field.These methods of signal processing are included,to improve the ratio of signal to noise to suppressing noise and using noise to strengthen weak signal.The methods of suppressing noise are Spectral Kurtosis,Empirical Mode Decomposition,Wavelet Transform,Cyclostationarity,Blind Source Separation,and Manifold Learning etc.The methods of strengthening weak signal by adding noise are Stochastic Resonance and Ensemble Empirical Mode Decomposition.References are provided for research of spindle fault diagnosis.
Keywords:Mechanical system  Fault diagnosis  Weak signal  Feature extraction  Signal to noise ratio
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