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基于高阶变分模态分解和电流-振动信号加权证据融合的永磁同步电机早期轴承故障诊断

Early Bearing Fault Diagnosis in PMSMs Based on HO-VMD and Weighted Evidence Fusion of Current-Vibration Signals.

作者信息

He Xianwu, Liu Xuhui, Lin Cheng, Fu Minjie, Wang Jiajin, Zhang Jian

机构信息

Sanmen County Rural Water Affairs Center, Taizhou 317100, China.

Standard & Quality Control Research Institute Ministry of Water Resources, Hangzhou 310012, China.

出版信息

Sensors (Basel). 2025 Jul 24;25(15):4591. doi: 10.3390/s25154591.

Abstract

To address the challenges posed by weak early fault signal features, strong noise interference, low diagnostic accuracy, poor reliability when using single information sources, and the limited availability of high-quality samples in practical applications for permanent magnet synchronous motor (PMSM) bearings, this paper proposes an early bearing fault diagnosis method based on Hippopotamus Optimization Variational Mode Decomposition (HO-VMD) and weighted evidence fusion of current-vibration signals. The HO algorithm is employed to optimize the parameters of VMD for adaptive modal decomposition of current and vibration signals, resulting in the generation of intrinsic mode functions (IMFs). These IMFs are then selected and reconstructed based on their kurtosis to suppress noise and harmonic interference. Subsequently, the reconstructed signals are demodulated using the Teager-Kaiser Energy Operator (TKEO), and both time-domain and energy spectrum features are extracted. The reliability of these features is utilized to adaptively weight the basic probability assignment (BPA) functions. Finally, a weighted modified Dempster-Shafer evidence theory (WMDST) is applied to fuse multi-source feature information, enabling an accurate assessment of the PMSM bearing health status. The experimental results demonstrate that the proposed method significantly enhances the signal-to-noise ratio (SNR) and enables precise diagnosis of early bearing faults even in scenarios with limited sample sizes.

摘要

针对永磁同步电机(PMSM)轴承实际应用中早期故障信号特征微弱、噪声干扰强、诊断准确率低、单一信息源可靠性差以及高质量样本获取有限等挑战,本文提出一种基于河马优化变分模态分解(HO-VMD)和电流 - 振动信号加权证据融合的轴承早期故障诊断方法。采用HO算法优化VMD参数,对电流和振动信号进行自适应模态分解,生成固有模态函数(IMF)。然后根据峭度对这些IMF进行选择和重构,以抑制噪声和谐波干扰。随后,使用Teager-Kaiser能量算子(TKEO)对重构信号进行解调,并提取时域和能谱特征。利用这些特征的可靠性对基本概率赋值(BPA)函数进行自适应加权。最后,应用加权修正的Dempster-Shafer证据理论(WMDST)融合多源特征信息,实现对PMSM轴承健康状态的准确评估。实验结果表明,该方法显著提高了信噪比(SNR),即使在样本量有限的情况下也能精确诊断轴承早期故障。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/96c3/12349668/bad7aa08316a/sensors-25-04591-g003.jpg

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