光谱特征信息变分模型及其在机械故障诊断中的应用

Xingxing Jiang, Xin Wang, Q. Song, Guifu Du, Zhongkui Zhu
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引用次数: 0

摘要

变异模式提取(VME)是一种本质上基于频域滤波器的新型信号分解方法,近年来已成为故障诊断的一种潜在工具。然而,原始的 VME 算法并不具备完全的自适应能力,其在提取故障特征方面的性能受制于初始参数的预定义,包括初始中心频率(ICF)和平衡参数。为了解决这些问题,我们构建了一种频谱特征信息变分模型(SFIVM)算法,以克服参数设置的缺陷,并在不预先知道的情况下高效地实现故障诊断。具体来说,首先开发了一种受 ICF 收敛特性启发的频谱特征检测器,以揭示频谱特征,包括检测到的中心频率和边界频率。然后,设计一个平衡参数估计公式,利用上述频谱特征自适应地确定目标平衡参数。最后,提出了一种高效的分解模型,用于从振动信号中提取与故障相关的模态,无需进行迭代优化。一个模拟案例和两个实验案例验证了所提出的 SFIVM 方法的有效性。此外,通过与一些先进的经典故障诊断方法进行比较,证明了 SFIVM 方法的优越性和高效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral feature informed variational model and its applications to machinery fault diagnosis
Variational mode extraction (VME), a novel signal decomposition method based on a frequency-domain filter in essence, has recently become a potential tool in fault diagnosis. However, the original VME algorithm is not provided with full self-adaptation, and its performance in the extraction of fault features is subject to predefining the initial parameters, including initial center frequency (ICF) and balance parameter. To address these issues, a spectral feature informed variational model (SFIVM) algorithm is constructed to overcome the defects of parameters setting and efficiently realize the fault diagnosis without prior knowledge. Specifically, a spectral feature detector inspired by the convergence property of ICF is first developed to reveal the spectral features, including the detected center frequencies and boundary frequencies. Then, a balance parameter estimation formula is designed to adaptively determine the target balance parameter by taking advantage of the above spectral features. Finally, a highly efficient decomposition model is proposed to extract the fault-related mode from the vibration signal, where iterative optimization is unnecessary. The effectiveness of the proposed SFIVM method is verified by one simulated and two experimental cases. Moreover, its superiority and high efficiency are demonstrated by comparing it with some advanced and classical fault diagnosis methods.
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