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Application of Improved Singular Spectrum Decomposition Method for Composite Fault Diagnosis of Gear Boxes

机译:改进的奇异谱分解方法在齿轮箱综合故障诊断中的应用

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摘要

Aiming at the problem that the composite fault signal of the gearbox is weak and the fault characteristics are difficult to extract under strong noise environment, an improved singular spectrum decomposition (ISSD) method is proposed to extract the composite fault characteristics of the gearbox. Singular spectrum decomposition (SSD) has been proved to have higher decomposition accuracy and can better suppress modal mixing and pseudo component. However, noise has a great influence on it, and it is difficult to extract weak impact components. In order to improve the limitations of SSD, we chose the minimum entropy deconvolution adjustment (MEDA) as the pre-filter of the SSD to preprocess the signal. The main function of the minimum entropy deconvolution adjustment is to reduce noise and enhance the impact component, which can make up for the limitations of SSD. However, the ability of MEDA to reduce noise and enhance the impact signal is greatly affected by its parameter, the filter length. Therefore, to improve the shortcomings of MEDA, a parameter adaptive method based on Cuckoo Search (CS) is proposed. First, construct the objective function as the adaptive function of CS to optimize the MEDA algorithm. Then, the pre-processed signal is decomposed into singular spectral components (SSC) by SSD, and the meaningful components are selected by Correlation coefficient. For the existing modal mixing phenomenon, the SSC component is reconstructed to eliminate the misjudgment of the result. Then, the frequency spectrum analysis is performed to obtain the frequency information for fault diagnosis. Finally, the effectiveness and superiority of ISSD are validated by simulation signals and applying to compound faults of a Gear box test rig.
机译:针对齿轮箱的复合故障信号弱,在强噪声环境下难以提取故障特征的问题,提出了一种改进的奇异谱分解(ISSD)方法来提取齿轮箱的复合故障特征。奇异频谱分解(SSD)已被证明具有更高的分解精度,并且可以更好地抑制模态混合和伪分量。然而,噪声对其影响很大,并且难以提取弱冲击分量。为了改善SSD的局限性,我们选择最小熵去卷积调整(MEDA)作为SSD的前置滤波器,对信号进行预处理。最小熵反卷积调整的主要功能是减少噪声并增强影响分量,这可以弥补SSD的局限性。但是,MEDA降低噪声和增强撞击信号的能力受其参数(滤波器长度)的影响很大。因此,为了改善MEDA的缺点,提出了一种基于布谷鸟搜索(CS)的参数自适应方法。首先,将目标函数构造为CS的自适应函数,以优化MEDA算法。然后,通过SSD将预处理后的信号分解为奇异频谱分量(SSC),然后根据相关系数选择有意义的分量。对于现有的模态混合现象,重建SSC分量以消除对结果的误判。然后,进行频谱分析以获得用于故障诊断的频率信息。最后,通过仿真信号验证了ISSD的有效性和优越性,并将其应用于齿轮箱试验台的复合故障。

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