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Blind vibration component separation and nonlinear feature extraction applied to the nonstationary vibration signals for the gearbox multi-fault diagnosis

机译:盲振动分量分离和非线性特征提取应用于非平稳振动信号的变速箱多故障诊断

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摘要

Fault diagnosis of gearboxes, especially the gears and bearings, is of great importance to the long-term safe operation. An unexpected damage on the gearbox may break the whole transmission line down. It is therefore crucial for engineers and researchers to monitor the health condition of the gearbox in a timely manner to eliminate the impending faults. However, useful fault detection information is often submerged in heavy background noise. Thereby, a new fault detection method for gearboxes using the blind source separation (BSS) and nonlinear feature extraction techniques is presented in this paper. The non-stationary vibration signals were analyzed to reveal the operation state of the gearbox. The kernel independent component analysis (KICA) algorithm was used hereby as the BSS approach for the mixed observation signals of the gearbox vibration to discover the characteristic vibration source associated with the gearbox faults. Then the wavelet packet transform (WPT) and empirical mode decomposition (EMD) nonlinear analysis methods were employed to deal with the nonstationary vibrations to extract the original fault feature vector. Moreover, the locally linear embedding (LLE) algorithm was performed as the nonlinear feature reduction technique to attain distinct features from the feature vector. Lastly, the fuzzy k-nearest neighbor (FKNN) was applied to the fault pattern identification of the gearbox. Two case studies were carried out to evaluate the effectiveness of the proposed diagnostic approach. One is for the gear fault diagnosis, and the other is to diagnose the rolling bearing faults of the gearbox. The nonstationary vibration data was acquired from the gear and rolling bearing fault test-beds, respectively. The experimental test results show that sensitive fault features can be extracted after the KICA processing, and the proposed diagnostic system is effective for the multi-fault diagnosis of the gears and rolling bearings. In addition, the proposed method can achieve higher performance than that without KICA processing with respect to the classification rate.
机译:变速箱,尤其是齿轮和轴承的故障诊断对于长期安全运行至关重要。变速箱上的意外损坏可能会损坏整个传动系统。因此,对于工程师和研究人员而言,及时监控变速箱的健康状况以消除即将发生的故障至关重要。但是,有用的故障检测信息通常被淹没在沉重的背景噪声中。因此,本文提出了一种利用盲源分离(BSS)和非线性特征提取技术的齿轮箱故障检测新方法。分析了非平稳振动信号以揭示变速箱的运行状态。因此,采用核独立分量分析(KICA)算法作为BSS方法对变速箱振动的混合观测信号进行发现,以发现与变速箱故障相关的特征振动源。然后采用小波包变换(WPT)和经验模态分解(EMD)非线性分析方法处理非平稳振动,提取出原始故障特征向量。此外,作为非线性特征约简技术,执行了局部线性嵌入(LLE)算法,以从特征向量中获得独特的特征。最后,将模糊近邻法(FKNN)应用于齿轮箱的故障模式识别。进行了两个案例研究,以评估所提出的诊断方法的有效性。一种用于齿轮故障诊断,另一种用于诊断齿轮箱的滚动轴承故障。非稳态振动数据分别从齿轮和滚动轴承故障试验台获得。实验测试结果表明,经过KICA处理后,可以提取出敏感的故障特征,所提出的诊断系统对于齿轮和滚动轴承的多故障诊断是有效的。另外,在分类率方面,所提出的方法可以实现比没有KICA处理的方法更高的性能。

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