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首页> 外文期刊>Journal of Sound and Vibration >A novel signal compression method based on optimal ensemble empirical mode decomposition for bearing vibration signals
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A novel signal compression method based on optimal ensemble empirical mode decomposition for bearing vibration signals

机译:基于最优整体经验模态分解的轴承振动信号压缩方法

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摘要

Today, remote machine condition monitoring is popular due to the continuous advancement in wireless communication. Bearing is the most frequently and easily failed component in many rotating machines. To accurately identify the type of bearing fault, large amounts of vibration data need to be collected. However, the volume of transmitted data cannot be too high because the bandwidth of wireless communication is limited. To solve this problem, the data are usually compressed before transmitting to a remote maintenance center. This paper proposes a novel signal compression method that can substantially reduce the amount of data that need to be transmitted without sacrificing the accuracy of fault identification. The proposed signal compression method is based on ensemble empirical mode decomposition (EEMD), which is an effective method for adaptively decomposing the vibration signal into different bands of signal components, termed intrinsic mode functions (IMFs). An optimization method was designed to automatically select appropriate EEMD parameters for the analyzed signal, and in particular to select the appropriate level of the added white noise in the EEMD method. An index termed the relative root-mean-square error was used to evaluate the decomposition performances under different noise levels to find the optimal level. After applying the optimal EEMD method to a vibration signal, the IMF relating to the bearing fault can be extracted from the original vibration signal. Compressing this signal component obtains a much smaller proportion of data samples to be retained for transmission and further reconstruction. The proposed compression method were also compared with the popular wavelet compression method. Experimental results demonstrate that the optimization of EEMD parameters can automatically find appropriate EEMD parameters for the analyzed signals, and the IMF-based compression method provides a higher compression ratio, while retaining the bearing defect characteristics in the transmitted signals to ensure accurate bearing fault diagnosis.
机译:如今,由于无线通信的不断发展,远程机器状态监视已变得很流行。轴承是许多旋转机械中最常见,最容易失效的组件。为了准确识别轴承故障的类型,需要收集大量的振动数据。但是,由于无线通信的带宽有限,因此发送的数据量不能太高。为了解决这个问题,通常在将数据传输到远程维护中心之前将其压缩。本文提出了一种新颖的信号压缩方法,该方法可以在不牺牲故障识别准确性的前提下,大大减少需要传输的数据量。所提出的信号压缩方法基于整体经验模式分解(EEMD),这是一种有效的方法,用于将振动信号自适应地分解为信号分量的不同频带,称为固有模式函数(IMF)。设计了一种优化方法,可以自动为分析的信号选择合适的EEMD参数,尤其是在EEMD方法中选择合适的添加白噪声电平。使用一个称为相对均方根误差的指数来评估不同噪声水平下的分解性能,以找到最佳水平。将最佳EEMD方法应用于振动信号后,可以从原始振动信号中提取与轴承故障有关的IMF。压缩该信号分量获得要保留的数据样本比例要小得多,以进行传输和进一步重建。还将提出的压缩方法与流行的小波压缩方法进行了比较。实验结果表明,通过优化EEMD参数可以自动为分析的信号找到合适的EEMD参数,基于IMF的压缩方法可提供更高的压缩比,同时保留传输信号中的轴承缺陷特征,以确保准确的轴承故障诊断。

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