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Rolling element bearing fault detection based on optimal antisymmetric real Laplace wavelet

机译:基于最优反对称实拉普拉斯小波的滚动轴承故障检测

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摘要

The presence of periodical impulses in vibration signals usually indicates the occurrence of rolling element bearing faults. Unfortunately, detecting the impulses of incipient faults is a difficult job because they are rather weak and often interfered by heavy noise and higher-level macro-structural vibrations. Therefore, a proper signal processing method is necessary. We proposed a differential evolution (DE) optimization and antisymmetric real Laplace wavelet (ARLW) filter-based method to extract the impulsive features buried in noisy vibration signals. The wavelet used in paper is developed from the fault characteristic signal model based on the idea of sparse representation in time-frequency domain. We first filter the original vibration signal using DE-optimized ARLW filter to eliminate the interferential vibrations and suppress random noise, then, demodulate the filtered signal and calculate its envelope spectrum. The analysis results of the simulation signals and real fault bearing vibration signals showed that the proposed method can effectively extract weak fault features.
机译:振动信号中周期性脉冲的出现通常表示滚动轴承故障的发生。不幸的是,检测初生故障的冲动是一项艰巨的工作,因为初生故障的冲动很弱并且经常受到重噪声和更高级别的宏观结构振动的干扰。因此,需要适当的信号处理方法。我们提出了一种基于差分演化(DE)优化和基于反对称实拉普拉斯小波(ARLW)滤波器的方法,以提取隐藏在噪声振动信号中的脉冲特征。本文中的小波是基于时频域中稀疏表示的思想,从故障特征信号模型发展而来的。我们首先使用DE优化的ARLW滤波器对原始振动信号进行滤波,以消除干扰振动并抑制随机噪声,然后对滤波后的信号进行解调并计算其包络谱。仿真信号和实际故障轴承振动信号的分析结果表明,该方法可以有效地提取弱故障特征。

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