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A fault diagnosis method for roller bearing based on empirical wavelet transform decomposition with adaptive empirical mode segmentation

机译:基于经验小波变换分解的滚子轴承故障诊断方法,自适应经验模型分割

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This paper proposes a fault diagnosis method for roller bearings based on the decomposition of vibration signals using the empirical wavelet transform (EWT) with adaptive empirical mode segmentation and the merging of redundant empirical modes. The proposed method employs scale- space histogram segmentation to determine the boundaries of the empirical modes adaptively, which helps to eliminate the effect of noise and obtain meaningful empirical modes that are more reflective of fault characteristics. In addition, the method merges similar empirical modes to rectify the tendency of conventional EWT to overly decompose empirical modes for fault feature extraction. To this end, an effective merging algorithm based on Pearson's correlation coefficient is developed to divide the empirical modes into groups according to their similarity prior to merging, which avoids a large increase in the amplitude of the signal after merging, and ensures the accuracy of the final result. The performance of the proposed method is first tested using an analytically derived signal. Then, the method is tested using actual vibration signals of roller bearings collected by NASA. The results demonstrate that the proposed method can identify fault information effectively and accurately.
机译:本文提出了一种基于振动信号分解的滚子轴承的故障诊断方法,其使用经验模型(EWT)具有自适应经验模式分割和冗余经验模式的合并。所提出的方法采用规模 - 空间直方图分割,以自适应地确定经验模式的边界,这有助于消除噪声的效果,并获得更具反射故障特性的有意义的经验模式。此外,该方法合并类似的经验模式以纠正传统EWT的趋势,以使故障特征提取的经验模式过度分解。为此,开发了一种基于Pearson相关系数的有效合并算法,以根据合并之前将经验模式分成组,这避免了合并后信号幅度的大幅增加,并确保了所需的准确性最后结果。首先使用分析衍生信号测试所提出的方法的性能。然后,使用NASA收集的滚子轴承的实际振动信号来测试该方法。结果表明,该方法可以有效准确地识别故障信息。

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