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Fault diagnosis for hydraulic pump based on EEMDKPCA and LVQ

机译:基于EEMDKPCA和LVQ的液压泵故障诊断

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Hydraulic pump is regarded as the heart of hydraulic system.Achieving the real-time fault diagnosis of hydraulic pump is of great importance for the maintenance of the entire system.An accurate fault clustering solution with self-adaptive signal processing is needed for extracting performance degradation information hidden in the nonlinear and non-stationary signals of hydraulic pumps.Therefore, a fault diagnosis approach based on ensemble empirical mode decomposition (EEMD), kernel principal component analysis (KPCA), and learning vector quantization (LVQ) network is proposed in this study.First, EEMD is employed to acquire more significant intrinsic mode functions (IMFs), thus overcoming the drawback of empirical mode decomposition, and further extracting the energy values of each IMF to form the feature vector.Second, KPCA, a nonlinear dimension reduction method, is used to remove redundancies of the extracted feature vector for high accuracy of fault diagnosis.Finally, LVQ is employed to classify faults based on the reduced feature vector.The efficiency and accuracy of the proposed method is validated by a case study based on the vibration dataset of a plunger pump.
机译:液压泵被认为是液压系统的心脏。液压泵的实时故障诊断对于维护整个系统来说非常重要。需要具有自适应信号处理的准确故障聚类解决方案来提取性能下降隐藏在液压泵非线性和非静止信号中的信息。因此,提出了基于集合经验分解(EEMD),内核主成分分析(KPCA)和学习矢量量化(LVQ)网络的故障诊断方法研究。首先,使用EEMD来获得更重要的内在模式功能(IMF),从而克服经验模式分解的缺点,并进一步提取每个IMF的能量值以形成特征载体。第二,KPCA,非线性尺寸减少方法,用于清除提取的特征向量的冗余以获得高精度的故障诊断。最后,LVQ是EPPLO基于减少的特征向量来分类故障。基于柱塞泵的振动数据集,通过案例研究验证了所提出的方法的效率和准确性。

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