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Application of an Improved Ensemble Local Mean Decomposition Method for Gearbox Composite Fault Diagnosis

机译:改进的集合局部平均分解方法在齿轮箱复合故障诊断中的应用

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In industrial production, it is highly essential to extract faults in gearbox accurately. Specifically, in a strong noise environment, it is difficult to extract the fault features accurately. LMD (local mean decomposition) is widely used as an adaptive decomposition method in fault diagnosis. In order to improve the mode mixing of LMD, ELMD (ensemble Local Mean Decomposition) is proposed as local mode mixing exists in noisy environment, but white noise added in ELMD cannot be completely neutralized leading to the influence of increased white noise on PF (product function) component. This further leads to the increase in reconstruction errors. Therefore, this paper proposes a composite fault diagnosis method for gearboxes based on an improved ensemble local mean decomposition. The idea is to add white noise in pairs to optimize ELMD, defined as CELMD (Complementary Ensemble Local Mean Decomposition) then remove the decomposed high noise component by PE (Permutation Entropy) while applying the SG (Savitzky-Golay) filter to smooth out the low noise in PFs. The method is applied to both simulated signal and experimental signal, which overcomes mode mixing phenomenon and reduces reconstruction error. At the same time, this method avoids the occurrence of pseudocomponents and reduces the amount of calculation. Compared with LMD, ELMD, CELMD, and CELMDAN, it shows that improved ensemble local mean decomposition method is an effective method for extracting composite fault features.
机译:在工业生产中,精确地提取齿轮箱中的故障是非常重要的。具体地,在强烈的噪声环境中,难以准确提取故障特征。 LMD(局部平均分解)广泛用作故障诊断中的自适应分解方法。为了改善LMD的模式混合,提出ELMD(集成局部均值分解)作为局部模式混合在嘈杂的环境中,但ELMD中添加的白噪声不能被完全中和,导致PF上增加的白噪声的影响(产品功能)组件。这进一步导致重建误差的增加。因此,本文提出了一种基于改进的集合局部平均分解的变速箱复合故障诊断方法。该想法是成对添加白噪声以优化ELMD,定义为CELMD(互补集合局部均值分解),然后通过PE(置换熵)删除分解的高噪声分量(置换熵),同时应用SG(Savitzky-Golay)过滤器来平滑PFS中的低噪音。该方法应用于模拟信号和实验信号,克服了模式混合现象并减少了重建误差。同时,该方法避免了伪组件的发生并降低了计算量。与LMD,ELMD,CELMD和CELMDAN相比,它表明改进的集合局部平均分解方法是提取复合故障特征的有效方法。

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