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An integrated method to detect the incipient degradation of bearings by vibration analysis and feature extraction

机译:一种通过振动分析和特征提取来检测轴承早期退化的综合方法

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摘要

As fundamental mechanical components, bearings are vital to various rotating machinery. By monitoring their conditions and predicting their remaining useful lives (RULs), some proactive maintenance may be done to reduce the unscheduled machine downtime and even catastrophes. One of the key issues in bearing prognostics is to detect the defect at the early stage so as to alert the operator, maintenance personnel and logistics personnel before the defect develops into an unrepairable failure. Since the signature of an incipient defect is relatively weak and masked by strong noise, robust signal de-noising and feature extraction methods are crucial to bearing prognostics. This paper introduces an integrated method to detect the incipient defects of bearings by vibration analysis and feature extraction. First, the vibration signals collected from a bearing accelerated life test are de-noised by a 3-layer wavelet packet decomposition (WPD). Second, an empirical mode decomposition (EMD) is performed to decompose the de-noised signal into intrinsic mode functions (IMFs) so as to extract features of bearing faults, and then some rules are defined to select the IMFs containing the fault information. Third, energy moments of the selected IMFs are extracted as features to detect the incipient defects. Fourth, the advantage of this energy moment is demonstrated by a comparative analysis with the classic time domain statistical features. In the end, the summary of this work and some future aspects are given.
机译:作为基本的机械组件,轴承对于各种旋转机械至关重要。通过监视其状况并预测其剩余使用寿命(RUL),可以进行一些主动维护,以减少计划外的机器停机时间,甚至减少灾难。轴承预测的关键问题之一是及早发现缺陷,以便在缺陷发展成为无法修复的故障之前,警告操作员,维护人员和物流人员。由于初期缺陷的特征相对较弱,并且被强噪声掩盖,因此可靠的信号降噪和特征提取方法对于轴承的预测至关重要。本文介绍了一种通过振动分析和特征提取来检测轴承早期缺陷的综合方法。首先,通过3层小波包分解(WPD)对从轴承加速寿命测试中收集的振动信号进行消噪。其次,通过经验模态分解(EMD)将降噪信号分解为固有模式函数(IMF),以提取轴承故障特征,然后定义一些规则以选择包含故障信息的IMF。第三,提取所选IMF的能量矩作为特征,以检测初期缺陷。第四,通过具有经典时域统计特征的比较分析证明了这种能量矩的优势。最后,给出了这项工作的总结以及一些未来的方面。

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