自适应变分模式提取的轴承故障诊断方法

王鑫,江星星,宋秋昱,杜贵府,朱忠奎

振动与冲击 ›› 2023, Vol. 42 ›› Issue (15) : 83-91.

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PDF(2780 KB)
振动与冲击 ›› 2023, Vol. 42 ›› Issue (15) : 83-91.
论文

自适应变分模式提取的轴承故障诊断方法

  • 王鑫,江星星,宋秋昱,杜贵府,朱忠奎
作者信息 +

Bearing fault diagnosis method based on adaptive variational mode extraction

  • WANG Xin, JIANG Xingxing, SONG Qiuyu, DU Guifu, ZHU Zhongkui
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文章历史 +

摘要

变分模式提取(variational mode extraction, VME)能够从复杂信号中提取特定的模式分量,但其在轴承故障诊断中的应用潜力受到初始中心频率和平衡参数的影响。因此,为了克服VME在轴承故障诊断应用中超参数的设置问题,深入探究VME模型中心频率迭代更新过程,发现中心频率收敛趋势现象并通过理论证明其存在性,由此提出中心频率定位策略,可自适应地确定目标中心频率。为了最大化匹配故障信息,构造基于故障特征幅值比的平衡参数优化策略,能够优化目标分量的带宽。以上中心频率定位策略和平衡参数优化策略,构成自适应变分模式提取的故障诊断方法,该方法能够在无需预设初始中心频率及平衡参数的情况下自适应提取故障相关分量。仿真和两个实验案例分析结果验证所提方法在轴承故障诊断领域相比于连续变分模式分解、经验模式分解和快速谱峭度方法更具有效性和优越性。

Abstract

Variational mode extraction (VME) can extract specific mode component from the complicated signal, but its application in bearing fault diagnosis is affected by initial center frequency and balance parameter. Therefore, in order to overcome the problem of setting hyperparameters in the application of VME in bearing fault diagnosis, the iterative updating process of center frequency of VME model is deeply explored to find the convergence trend of center frequency whose rationality is proved by theory. Then, a center frequency location strategy is formulated to adaptively determine the target center frequency. In order to match the maximize fault information, a balance parameter optimization strategy based on the ratio of fault characteristic amplitude is constructed, which can optimize the bandwidth of the target mode. The above center frequency location and balance parameter optimization strategy constitute a fault diagnosis method based on adaptive variational mode extraction, which can adaptively extract fault related components without presetting the initial center frequency and balance parameter. Compared with successive variational mode decomposition, empirical mode decomposition and fast Kurtogram method, the proposed method is more effective and superior in the field of bearing fault diagnosis.

关键词

变分模式提取 / 中心频率 / 平衡参数 / 滚动轴承 / 故障诊断

Key words

variational mode extraction / center frequency / balance parameter / rolling bearing / fault diagnosis

引用本文

导出引用
王鑫,江星星,宋秋昱,杜贵府,朱忠奎. 自适应变分模式提取的轴承故障诊断方法[J]. 振动与冲击, 2023, 42(15): 83-91
WANG Xin, JIANG Xingxing, SONG Qiuyu, DU Guifu, ZHU Zhongkui. Bearing fault diagnosis method based on adaptive variational mode extraction[J]. Journal of Vibration and Shock, 2023, 42(15): 83-91

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