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首页> 外文期刊>International Scholarly Research Notices >Vibration Signature Analysis and Parameter Extractions on Damages in Gears and Rolling Element Bearings
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Vibration Signature Analysis and Parameter Extractions on Damages in Gears and Rolling Element Bearings

机译:齿轮和滚动轴承的振动特征分析及参数提取

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This paper is to analyze and identify damage in gear teeth and rolling element bearings by establishing pattern feature parameters from vibration signatures. In the present work, different damage scenarios involving different combinations of gear tooth damage, bearing damage are considered. Each of the damage scenarios are studied and compared in the time domain, the frequency domain, and the joint time-frequency domain using the FM0 technique, the Fourier Transform, the Wigner-Ville Transform, and the Continuous Wavelet Transform, respectively. Results obtained from the three different signal domains are analyzed to develop indicative parameters and visual presentations that measure the integrity and wellness of the bearing and gear components. The joint time-frequency domain obtained from the continuous wavelet transform has shown to be a superior technique for providing clear visual examination solution for different types of component damages as well as for feature extractions used for computer-based machine health monitoring solution.
机译:本文旨在通过建立振动特征码的特征参数来分析和识别齿轮和滚动轴承的损坏。在目前的工作中,考虑了涉及齿轮齿损坏,轴承损坏的不同组合的不同损坏情况。分别使用FM0技术,傅立叶变换,维格纳-维勒变换和连续小波变换在时域,频域和联合时频域中研究和比较每种损伤情况。分析从三个不同信号域获得的结果,以开发指示性参数和视觉表示,以测量轴承和齿轮组件的完整性和健康性。从连续小波变换获得的联合时频域已被证明是一种出色的技术,可为不同类型的组件损坏以及用于基于计算机的机器健康状况监测解决方案的特征提取提供清晰的视觉检查解决方案。

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