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Fault Detection for Vibration Signals on Rolling Bearings Based on the Symplectic Entropy Method

机译:基于辛熵方法的滚动轴承振动信号故障检测

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Bearing vibration response studies are crucial for the condition monitoring of bearings and the quality inspection of rotating machinery systems. However, it is still very difficult to diagnose bearing faults, especially rolling element faults, due to the complex, high-dimensional and nonlinear characteristics of vibration signals as well as the strong background noise. A novel nonlinear analysis method?¢????the symplectic entropy (SymEn) measure?¢????is proposed to analyze the measured signals for fault monitoring of rolling bearings. The core technique of the SymEn approach is the entropy analysis based on the symplectic principal components. The dynamical characteristics of the rolling bearing data are analyzed using the SymEn method. Unlike other techniques consisting of high-dimensional features in the time-domain, frequency-domain and the empirical mode decomposition (EMD)/wavelet-domain, the SymEn approach constructs low-dimensional (i.e., two-dimensional) features based on the SymEn estimate. The vibration signals from our experiments and the Case Western Reserve University Bearing Data Center are applied to verify the effectiveness of the proposed method. Meanwhile, it is found that faulty bearings have a great influence on the other normal bearings. To sum up, the results indicate that the proposed method can be used to detect rolling bearing faults.
机译:轴承振动响应研究对于轴承状态监测和旋转机械系统的质量检查至关重要。然而,由于振动信号的复杂,高维和非线性特性以及强烈的背景噪声,仍然很难诊断轴承故障,尤其是滚动元件故障。提出了一种新的非线性分析方法-辛熵(SymEn)测度,以分析测量信号,用于滚动轴承的故障监测。 SymEn方法的核心技术是基于辛主成分的熵分析。使用SymEn方法分析了滚动轴承数据的动力学特性。与其他由时域,频域和经验模式分解(EMD)/小波域中的高维特征组成的技术不同,SymEn方法基于SymEn构造低维(即二维)特征估计。来自我们的实验和凯斯西储大学轴承数据中心的振动信号被用于验证所提方法的有效性。同时,发现有故障的轴承对其他普通轴承的影响很大。综上所述,结果表明该方法可用于滚动轴承故障的检测。

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