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A Frequency-Weighted Energy Operator and complementary ensemble empirical mode decomposition for bearing fault detection

机译:频率加权能量算子和互补集成经验模态分解用于轴承故障检测

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摘要

Signal processing techniques for non-stationary and noisy signals have recently attracted considerable attentions. Among them, the empirical mode decomposition (EMD) which is an adaptive and efficient method for decomposing signals from high to low frequencies into intrinsic mode functions (IMFs). Ensemble EMD (EEMD) is proposed to overcome the mode mixing problem of the EMD. In the present paper, the Complementary EEMD (CEEMD) is used for bearing fault detection. As a noise-improved method, the CEEMD not only overcomes the mode mixing, but also eliminates the residual of added white noise persisting into the IMFs and enhance the calculation efficiency of the EEMD method. Afterward, a selection method is developed to choose relevant IMFs containing information about defects. Subsequently, a signal is reconstructed from the sum of relevant IMFs and a Frequency-Weighted Energy Operator is tailored to extract both the amplitude and frequency modulations from the selected IMFs. This operator outperforms the conventional energy operator and the enveloping methods, especially in the presence of strong noise and multiple vibration interferences. Furthermore, simulation and experimental results showed that the proposed method improves performances for detecting the bearing faults. The method has also high computational efficiency and is able to detect the fault at an early stage of degradation.
机译:最近,用于非平稳和嘈杂信号的信号处理技术引起了相当大的关注。其中,经验模式分解(EMD)是一种自适应且高效的方法,用于将信号从高频到低频分解为固有模式函数(IMF)。为了克服EMD的模式混合问题,提出了集成EMD(EEMD)。在本文中,互补EEMD(CEEMD)用于轴承故障检测。作为一种改进的噪声方法,CEEMD不仅克服了模式混合,而且消除了残留在IMF中的添加白噪声残留,提高了EEMD方法的计算效率。之后,开发了一种选择方法来选择包含有关缺陷信息的相关IMF。随后,从相关IMF的总和中重建信号,并调整频率加权能量运算符以从选定的IMF中提取幅度和频率调制。该运算符的性能优于常规的能量运算符和包络方法,尤其是在存在强噪声和多重振动干扰的情况下。仿真和实验结果表明,该方法提高了轴承故障的检测性能。该方法还具有较高的计算效率,并且能够在降级的早期阶段检测故障。

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