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首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >BASE WAVELET SELECTION FOR BEARING VIBRATION SIGNAL ANALYSIS
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BASE WAVELET SELECTION FOR BEARING VIBRATION SIGNAL ANALYSIS

机译:轴承振动信号分析的基小波选择

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A critical issue to ensuring the effectiveness of wavelet transform in machine condition monitoring and health diagnosis is the choice of the most suited base wavelet for signal decomposition and feature extraction. This paper addresses this issue by introducing a quantitative measure to select an appropriate base wavelet for analyzing vibration signals measured on rotary mechanical systems. Specifically, the measure based on energy-to- Shannon entropy ratio has been investigated. Both the simulated Gaussian-modulated sinusoidal signal and an actual ball bearing vibration signal have been used to evaluate the effectiveness of the developed measure on base wavelet selection. Experimental results demonstrate that the wavelet selected using the developed measure is better suited than other wavelets in diagnosing structural defects in the bearing. The method developed provides systematic guidance in wavelet selection.
机译:确保小波变换在机器状态监测和健康诊断中的有效性的关键问题是选择最合适的基本小波进行信号分解和特征提取。本文通过引入定量方法来选择适当的基本小波来分析旋转机械系统上测得的振动信号,从而解决了这一问题。具体地,已经研究了基于能量与香农熵比的量度。模拟的高斯调制正弦信号和实际的滚珠振动信号都已用于评估基于基本小波选择的改进措施的有效性。实验结果表明,在诊断轴承中的结构缺陷时,使用该改进方法选择的小波比其他小波更适合。开发的方法为小波选择提供了系统的指导。

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