An optimized multivariate variational mode decomposition for the fault diagnosis of rotating machinery

Q. Song, Xingxing Jiang, Qian Wang, Weiguo Huang, Juanjuan Shi, Zhongkui Zhu
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Abstract

Various failures are prone to occur in rotating machinery due to the harsh working conditions, thereby making it a vital work to perform accurate fault diagnosis to prevent performance degradation and safety hazards. The presence of multivariate variational mode decomposition (MVMD) provides a good knowledge of how to cope with multichannel data which contains more comprehensive information. In this work, an innovative diagnostic approach based on optimized MVMD is proposed for rotating machinery. Corner-stone of this method is the optimized MVMD, a new approach extracting modes successively with the proper adjustment of initial center frequencies. It achieves the mode decomposition without prior knowledge of the number of modes and initial center frequencies which affect the decomposition results greatly. Moreover, normalized frequency-to-energy ratio is employed as an index for selection of faulty modes. Analysis and comparison results of the experiment data from defective bearing indicates that the new approach shows a prominent superiority in fault identification.
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一种用于旋转机械故障诊断的优化多元变分模态分解
旋转机械由于工作条件恶劣,容易发生各种故障,因此准确的故障诊断是防止性能下降和安全隐患的重要工作。多元变分模态分解(MVMD)的存在为如何处理包含更全面信息的多通道数据提供了很好的知识。本文提出了一种基于优化MVMD的旋转机械诊断方法。该方法的基础是优化MVMD,即一种通过适当调整初始中心频率来连续提取模态的新方法。该方法在不知道模态个数和初始中心频率的情况下实现了模态分解。此外,采用归一化的频率能量比作为故障模态选择的指标。对故障轴承实验数据的分析和比较结果表明,该方法在故障识别方面具有突出的优越性。
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