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首页> 外文期刊>Mechanical systems and signal processing >Fault feature extraction of gearbox by using overcomplete rational dilation discrete wavelet transform on signals measured from vibration sensors
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Fault feature extraction of gearbox by using overcomplete rational dilation discrete wavelet transform on signals measured from vibration sensors

机译:通过对振动传感器测量的信号进行过完全有理扩张离散小波变换提取变速箱故障特征。

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摘要

Gearbox fault diagnosis is very important for preventing catastrophic accidents. Vibration signals of gearboxes measured by sensors are useful and dependable as they carry key information related to the mechanical faults in gearboxes. Effective signal processing techniques are in necessary demands to extract the fault features contained in the collected gearbox vibration signals. Overcomplete rational dilation discrete wavelet transform (ORDWT) enjoys attractive properties such as better shift-invariance, adjustable time-frequency distributions and flexible wavelet atoms of tunable oscillation in comparison with classical dyadic wavelet transform (DWT). Due to these advantages, ORDWT is presented as a versatile tool that can be adapted to analysis of gearbox fault features of different types, especially in analyzing the non-stationary and transient characteristics of the signals. Aiming to extract the various types of fault features confronted in gearbox fault diagnosis, a fault feature extraction technique based on ORDWT is proposed in this paper. In the routine of the proposed technique, ORDWT is used as the pre-processing decomposition tool, and a corresponding postprocessing method is combined with ORDWT to extract the fault feature of a specific type. For extracting periodical impulses in the signal, an impulse matching algorithm is presented. In this algorithm, ORDWT bases of varied time-frequency distributions and varied oscillatory natures are adopted, moreover an improved signal impulsiveness measure derived from kurtosis is developed for choosing optimal ORDWT bases that perfectly match the hidden periodical impulses. For demodulation purpose, an improved instantaneous time-frequency spectrum (ITFS), based on the combination of ORDWT and Hilbert transform, is presented. For signal denoising applications, ORDWT is enhanced by neighboring coefficient shrinkage strategy as well as subband selection step to reveal the buried transient vibration contents. The proposed fault feature extraction technique is applied in a range of engineering applications, and the processing results demonstrate that the ORDWT-based feature extraction technique successfully identifies the incipient fault features in the cases where DWT and empirical mode decomposition method are less effective.
机译:变速箱故障诊断对于预防灾难性事故非常重要。由传感器测量的变速箱振动信号是有用且可靠的,因为它们带有与变速箱机械故障有关的关键信息。需要有效的信号处理技术来提取包含在变速箱振动信号中的故障特征。与经典二进小波变换(DWT)相比,超完备的有理膨胀离散小波变换(ORDWT)具有吸引人的属性,例如更好的平移不变性,可调整的时频分布以及可调振荡的灵活小波原子。由于这些优点,ORDWT被介绍为一种多功能工具,可用于分析不同类型的齿轮箱故障特征,尤其是在分析信号的非平稳和瞬态特性时。为了提取齿轮箱故障诊断中遇到的各种故障特征,提出了一种基于ORDWT的故障特征提取技术。在所提出技术的例程中,将ORDWT用作预处理分解工具,并将相应的后处理方法与ORDWT组合以提取特定类型的故障特征。为了提取信号中的周期性脉冲,提出了一种脉冲匹配算法。在该算法中,采用了时频分布变化和振荡性质变化的ORDWT基数,并且开发了一种从峰度得到的改进的信号冲量测度,以选择与隐藏的周期脉冲完美匹配的最优ORDWT基数。出于解调目的,基于ORDWT和Hilbert变换的组合,提出了一种改进的瞬时时间频谱(ITFS)。对于信号降噪应用,ORDWT通过相邻系数收缩策略以及子带选择步骤得到增强,以揭示掩埋的瞬态振动内容。所提出的故障特征提取技术已在一系列工程应用中得到了应用,处理结果表明,在DWT和经验模式分解方法效果不佳的情况下,基于ORDWT的特征提取技术可以成功地识别出早期的故障特征。

著录项

  • 来源
    《Mechanical systems and signal processing》 |2012年第11期|p.275-298|共24页
  • 作者单位

    State Key Laboratory for Manufacturing and Systems Engineering, School of Mechanical Engineering, Xi'an Jiaotong University, Xian 710049, PR china;

    State Key Laboratory for Manufacturing and Systems Engineering, School of Mechanical Engineering, Xi'an Jiaotong University, Xian 710049, PR china;

    State Key Laboratory for Manufacturing and Systems Engineering, School of Mechanical Engineering, Xi'an Jiaotong University, Xian 710049, PR china;

    State Key Laboratory for Manufacturing and Systems Engineering, School of Mechanical Engineering, Xi'an Jiaotong University, Xian 710049, PR china;

    State Key Laboratory for Manufacturing and Systems Engineering, School of Mechanical Engineering, Xi'an Jiaotong University, Xian 710049, PR china;

    State Key Laboratory for Manufacturing and Systems Engineering, School of Mechanical Engineering, Xi'an Jiaotong University, Xian 710049, PR china;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    fault diagnosis; overcomplete rational dilation discrete; wavelet transform; gearbox; periodical impulses; amplitude/frequency modulation; signal denoising;

    机译:故障诊断;超完备有理膨胀离散小波变换变速箱周期性冲动;幅度/频率调制;信号降噪;

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