首页> 外文会议>ASME international mechanical engineering congress and exposition >PERIODICAL FEATURE EXTRACTION AND FAULT DIAGNOSIS FOR GEARBOX USING LOCAL CEPSTRUM TECHNOLOGY
【24h】

PERIODICAL FEATURE EXTRACTION AND FAULT DIAGNOSIS FOR GEARBOX USING LOCAL CEPSTRUM TECHNOLOGY

机译:基于局部倒谱技术的齿轮箱周期性特征提取与故障诊断

获取原文

摘要

Results of numerous studies and experiments show that cepstrum analysis has the ability of simplifying the equally spaced sideband feature in the spectrum and highlights the signal components of defects. However, for most cases of early gear failure, the periodic phenomenon is always buried in strong background noises and the interference of the rotating frequency with its harmonics. Moreover, the features would be further weakened by the average effect of Fourier transform after cepstrum processing. In this paper, an improved cepstrum method named local cepstrum is proposed. The detection principle of local cepstrum is mainly based on the part of spectrum information to enhance the capability of extracting periodical features of detected signals. Besides, the autocorrelation and extended Shannon Entropy Function are also involved enhancing the periodic impulsive features. In the end, only several distinct lines with larger magnitudes would be left in the local cepstrum, which is very effective for gear fault detection and identification. Both simulation and experimental analysis show that the proposed method, which is more sensitive to the gear failure compared with conventional cepstrum analysis, could partially eliminate the interference of background noise and extract the periodical features of premature failure signals effectively.
机译:许多研究和实验的结果表明,综糖分析具有简化频谱中等间隔的边带特征的能力,并突出显示缺陷的信号分量。然而,对于大多数早期齿轮故障的情况下,周期性现象总是埋在强大的背景噪声和旋转频率的干扰与其谐波。此外,通过缩粒处理后傅立叶变换的平均效果将进一步削弱该特征。本文提出了一种称为局部综注的改进的综糖方法。局部综注的检测原理主要基于频谱信息的一部分,以增强提取检测信号的周期特征的能力。此外,自相关和扩展的Shannon熵功能也涉及增强周期性冲动功能。最后,只有几种具有较大幅度的不同线条将留在局部克斯特劳中,这对于齿轮故障检测和识别非常有效。仿真和实验分析均表明,与常规综糖分析相比,该方法对齿轮发育更敏感,可以部分消除背景噪声的干扰,从而有效地提取过早故障信号的周期特征。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号