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Rolling bearing fault feature extraction under variable conditions using hybrid order tracking and EEMD

机译:使用混合顺序跟踪和EEMD在可变条件下滚动轴承故障特征提取

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摘要

To effectively extract rolling bearing fault feature under variable conditions, a hybrid method based on order tracking and EEMD is proposed in this paper. This method takes the advantages of order tracking, ensemble empirical mode decomposition and 1.5 dimension spectrum. Firstly, order tracking is used to transform the time domain non-stationary vibration signal to angular domain stationary signal. Secondly, ensemble empirical mode decomposition is performed to decompose the angular domain stationary signal into a series of IMFs, and select the IMF in which the largest vibration energy occurs as the characteristic IMF. Thirdly, 1.5 dimension spectrum is further employed to analyze the characteristic IMF, and extract the fault features from background noise. The proposed method is applied to analyze the experimental vibration signals, and the analysis results confirm the effectiveness of the proposed method under variable conditions.
机译:为了在可变条件下有效提取滚动轴承故障特征,本文提出了一种基于订单跟踪和EEMD的混合方法。该方法采用订单跟踪,集合经验模式分解和1.5尺寸频谱的优点。首先,订单跟踪用于将时域非静止振动信号转换为角域固定信号。其次,执行集合经验模式分解,以将角域静止信号分解为一系列IMF,并选择作为特征IMF发生最大振动能量的IMF。第三,进一步采用1.5尺寸谱来分析特征IMF,并从背景噪声中提取故障特征。该方法用于分析实验振动信号,分析结果证实了在可变条件下提出的方法的有效性。

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