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Feature Extraction Method for Condition Monitoring of Rolling Element Bearings Based on Dual-Tree Complex Wavelet Packet Transform and VMD

机译:基于双树复杂小波包变换和VMD的滚动元件轴承条件监测特征提取方法

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摘要

The feature extraction of rolling element bearings vibration signals is one of the key issue for high-speed rotating machinery condition monitoring. A new scheme based on Dual-Tree Complex Wavelet Packet Transform (DTCWPT) and Variational Mode Decomposition (VMD) for extracting vibration condition monitoring feature is proposed. First, DTCWPT is used to reduce noise and pseudo frequency components from vibration signals by the energy ratio. Second, a set of Intrinsic Mode Function components (IMFs) can be got by VMD. Then, the energy ratio between the screening vibration signal and IMFs are calculated. And, the corresponding IMFs are selected according to the energy ratio threshold. Finally, applying the spectrum analysis technology, the condition monitoring feature can be extracted from the reconstructing signal. The experimental results of simulation signals and practical rolling element bearings vibration signals show that the scheme is feasible and effective for extracting the bearings operation state feature.
机译:滚动元件轴承振动信号的特征提取是高速旋转机械状态监测的关键问题之一。提出了一种基于双树复小波分组变换(DTCWPT)和用于提取振动条件监测特征的变分模式分解(VMD)的新方案。首先,DTCWPT用于通过能量比从振动信号降低噪声和伪频率分量。其次,VMD可以获得一组内在模式功能组件(IMF)。然后,计算筛选振动信号和IMF之间的能量比。并且,根据能量比阈值选择相应的IMF。最后,应用频谱分析技术,可以从重建信号中提取状态监测特征。仿真信号和实用滚动元件轴承振动信号的实验结果表明,该方案是可行且有效地提取轴承操作状态特征。

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