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Multifractal characterization of plunger pump vibration signal through improved empirical mode decomposition based detrended fluctuation analysis

机译:基于改进的基于经验模态分解的趋势波动分析,对柱塞泵振动信号进行多重分形表征

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Promptly and accurately detecting the plunger pump fault in the hydraulic system is a serious issue in terms of improving reliability and decreasing accidents. A main work is analyzing the character of the collected samples. We used an improved empirical mode decomposition (EMD) based multifractal detrended fluctuation analysis (MFDFA) to extract the multifractal characters. The current method utilizes intrinsic mode functions (IMFs) selection and Kolmogorov - Smirnov test (K-S test) in the detrending procedure. The IMFs selection is used to deal with the undesired IMFs, and the two-sample K-S test works on each IMF and Gaussian noise to detect the noise-like IMFs. The proposed method adaptive to the nature of data and weakening the effect of noise make this approach work well for the non-stationary signal from the real system. We used the proposed method on the plunger pump vibration signal in the hydraulic system to verify the present of multifractal.
机译:就提高可靠性和减少事故而言,及时,准确地检测液压系统中的柱塞泵故障是一个严重的问题。一项主要工作是分析收集到的样本的特征。我们使用基于改进的经验模式分解(EMD)的多分形去趋势波动分析(MFDFA)来提取多分形特征。当前的方法在去趋势过程中利用了固有模式函数(IMF)选择和Kolmogorov-Smirnov测试(K-S测试)。 IMF的选择用于处理不需要的IMF,并且对每个IMF和高斯噪声进行两次样本K-S测试,以检测类似噪声的IMF。所提出的方法适应于数据的性质并减弱噪声的影响,使得该方法对于来自真实系统的非平稳信号非常有效。我们针对液压系统中的柱塞泵振动信号使用了所提出的方法来验证多重分形的存在。

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