An identification method of compound faults of rolling bearings blending variational mode decomposition and vector bispectrum

Mingyue Yu, Xin Wang, Xiangdong Ge, Yunhong Gao
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Abstract

To solve the difficulty in correctly identifying a compound fault of rolling bearing, a method combining variational mode decomposition (VMD) and harmonic fusion vector bispectrum (HFVB) is proposed. Firstly, to achieve adaptive decomposition of signals, the characteristic ability of envelope entropy to represent signal sparsity is utilized. By employing the minimum envelope entropy as the fitness function for the sparrow search algorithm (SSA), the decomposition levels and penalty factors of VMD are adaptively determined. Secondly, root-mean-square value is treated as fault feature index to self-adaptively choose from intrinsic mode function (IMF) which can embody fault features of bearings. Thirdly, to further highlight fault features, HFVB is used to blend chosen IMFs. Finally, faults of bearings were recognized with spectrum of signals. To verify the effectiveness of proposed method, an analysis was given to vibration signals in different situations, and SSA-VMD-HFVB was compared with classical method. The results demonstrate that the proposed SSA-VMD-HFVB method facilitates the adaptive decomposition of VMD, enabling the selection and effective integration of sensitive fault component signals. This approach enhances the accuracy of complex fault diagnosing in rolling bearings.
混合变模分解和矢量双谱的滚动轴承复合故障识别方法
为了解决正确识别滚动轴承复合故障的难题,提出了一种结合变异模态分解(VMD)和谐波融合矢量双谱(HFVB)的方法。首先,为了实现信号的自适应分解,利用了包络熵表示信号稀疏性的特征能力。通过采用最小包络熵作为麻雀搜索算法(SSA)的适配函数,自适应地确定 VMD 的分解级别和惩罚因子。其次,将均方根值作为故障特征指标,自适应地选择能体现轴承故障特征的本征模态函数(IMF)。第三,为了进一步突出故障特征,使用 HFVB 混合所选的 IMF。最后,利用信号频谱识别轴承故障。为了验证所提方法的有效性,对不同情况下的振动信号进行了分析,并将 SSA-VMD-HFVB 与经典方法进行了比较。结果表明,所提出的 SSA-VMD-HFVB 方法有助于对 VMD 进行自适应分解,从而选择并有效整合敏感的故障成分信号。这种方法提高了滚动轴承复杂故障诊断的准确性。
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