感应电机轴承故障检测EEMD-MED与VMD-MED技术的比较研究

Yasser Damine, S. Sbaa, N. Bessous, A. C. Megherbi
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引用次数: 0

摘要

为了提高旋转电机的缺陷检测水平,在这一领域应用了许多技术。轴承缺陷可损坏REMs。将最小熵反褶积集成经验模态分解(EEMD-MED)与最小熵反褶积变分模态分解(VMD-MED)在轴承缺陷检测中的应用进行了比较。首先,VMD将信号分成多个imf。此外,选取峰度值显著的分量进行重构。为了增强故障检测能力,对重构信号进行MED处理。同时,EEMD将轴承信号分解为IMF分量。选取峰度较高的imf进行重建,并应用MED。最后一步是对所得结果进行比较分析,以确定检测轴承缺陷的最佳技术。这项工作是基于实验结果,这使我们能够比较两种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Study Between EEMD-MED and VMD-MED Techniques Dedicated to Bearing Fault Detection in Induction Motors
To improve defect detection in rotating electrical machines (REMs), many techniques are used in this field. Bearing defects can be damaged the REMs. This paper compares Ensemble Empirical Mode Decomposition combined with Minimum Entropy Deconvolution (EEMD-MED) to variational mode decomposition with MED (VMD-MED) to detect bearing defects. First, VMD divides the signal into IMFs. In addition, the components with significant kurtosis values were selected for reconstruction. To enhance fault detection, the MED was performed on the reconstructed signal. Meanwhile, EEMD decomposes the bearing signal into IMF components. IMFs of higher kurtosis values were selected for reconstruction, and MED was applied. A final step is to compare the analysis of the results obtained to determine the best technique for detecting defects in bearings. This work is based on experimental results, which allow us to compare the two methods.
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