Ma Zhenrong, Zhang Ying
School of Mechanical Engineering, Changchun Guanghua University, Changchun, 130022, China.
Sci Rep. 2025 Feb 8;15(1):4712. doi: 10.1038/s41598-025-89161-3.
To address the challenges of feature extraction in Variational Mode Decomposition (VMD) for rolling bearing fault diagnosis, this paper proposes a feature extraction method optimized by the RIME algorithm, called RIME-VMD. First, under various rolling bearing fault conditions, the RIME algorithm is employed to determine the optimal combination of decomposition components and penalty factors in VMD. Next, the kurtosis values of each decomposed Intrinsic Mode Function (IMF) are calculated, and the component with the most prominent fault features is selected for noise reduction through reconstruction. Finally, the sample entropy of the reconstructed signal is calculated as a fault feature and input into a Support Vector Machine (SVM) for rapid identification and diagnosis of various rolling bearing fault types. Simulation results indicate that, compared to the Whale Optimization Algorithm optimized VMD (WOA-VMD), the RIME algorithm optimized VMD (RIME-VMD) achieves shorter search times and higher search efficiency. It facilitates faster identification of decomposition parameters under various fault conditions, enhancing the robustness of fault signal detection and enabling rapid, efficient identification of rolling bearing faults. The findings of this study offer guidance and reference for future research on rolling bearing fault diagnosis.
为解决变分模态分解(VMD)在滚动轴承故障诊断中特征提取的挑战,本文提出一种由RIME算法优化的特征提取方法,称为RIME-VMD。首先,在各种滚动轴承故障条件下,采用RIME算法确定VMD中分解分量和惩罚因子的最优组合。其次,计算每个分解的本征模态函数(IMF)的峭度值,选择故障特征最突出的分量进行重构降噪。最后,计算重构信号的样本熵作为故障特征,并输入支持向量机(SVM)中,以快速识别和诊断各种滚动轴承故障类型。仿真结果表明,与鲸鱼优化算法优化的VMD(WOA-VMD)相比,RIME算法优化的VMD(RIME-VMD)搜索时间更短、搜索效率更高。它有助于在各种故障条件下更快地识别分解参数,增强故障信号检测的鲁棒性,并能快速、高效地识别滚动轴承故障。本研究结果为滚动轴承故障诊断的未来研究提供了指导和参考。