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Fault feature extraction of low speed roller bearing based on Teager energy operator and CEEMD

机译:基于茶叶能量运营商和CEEMD的低速滚子轴承故障特征提取

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摘要

The fault signals of low-speed rolling elements bearing are non-stationary and non-linear, and consequently it is difficult to extract the fault characteristics by the traditional time and frequency domains analysis methods. Furthermore, the vibration signals suffer from severe signal attenuation and noise corruption during the signal transmission process. In order to effectively enhance and extract the fault characteristics from weak bearing signal, it requires effective signal processing strategies or high sensitive sensors to detect the low energy bearing vibration signals. In this paper, one such signal processing method is proposed to detect fault characteristics combined Teager energy operator and Complementary Ensemble Empirical Mode Decomposition (CEEMD). In this method, firstly Teager energy operator is used to strengthen the signal after wavelet noise reduction since it has good temporal resolution and adaptive ability for signal transient changes, and has unique advantages in detecting signal impact characteristics. Then CEEMD algorithm is carried out to extract bearing fault through Intrinsic Mode Function (IMF) decomposition. The proposed method is validated by a scaling model test rig of a wind turbine. The results validate that the method can effectively extract the fault characteristics of low-speed bearings and identify the bearing fault. (C) 2019 Elsevier Ltd. All rights reserved.
机译:低速滚动元件轴承的故障信号是非静止和非线性的,因此难以通过传统的时间和频率域分析方法提取故障特性。此外,在信号传输过程中,振动信号遭受严重的信号衰减和噪声损坏。为了有效增强和提取来自弱轴承信号的故障特性,需要有效的信号处理策略或高敏感传感器来检测低能量承载振动信号。在本文中,提出了一种这样的信号处理方法来检测故障特性组合茶叶能量操作员和互补集合经验模式分解(CeeMD)。在该方法中,首先使用Teager能量操作员来加强小波降噪后的信号,因为它具有良好的时间分辨率和信号瞬态变化的自适应能力,并且在检测信号冲击特性方面具有独特的优势。然后通过内在模式函数(IMF)分解来执行CEEMD算法以提取承载故障。所提出的方法由风力涡轮机的缩放模型试验台验证。结果验证了该方法可以有效地提取低速轴承的故障特性并识别轴承故障。 (c)2019年elestvier有限公司保留所有权利。

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