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An Efficient Hilbert–Huang Transform-Based Bearing Faults Detection in Induction Machines

机译:基于希尔伯特-黄变换的高效感应电机轴承故障检测

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摘要

This paper focuses on rolling elements bearing fault detection in induction machines based on stator currents analysis. Specifically, it proposes to process the stator currents using the Hilbert–Huang transform. This approach relies on two steps: empirical mode decomposition and Hilbert transform. The empirical mode decomposition is used in order to estimate the intrinsic mode functions (IMFs). These IMFs are assumed to be mono-component signals and can be processed using demodulation technique. Afterward, the Hilbert transform is used to compute the instantaneous amplitude (IA) and instantaneous frequency (IF) of these IMFs. The analysis of the IA and IF allows identifying fault signature that can be used for more accurate diagnosis. The proposed approach is used for bearing fault detection in induction machines at several fault degrees. The effectiveness of the proposed approach is verified by a series of simulation and experimental tests corresponding to different bearing fault conditions. The fault severity is assessed based on the IMFs energy and the variance of the IA and IF of each IMF.
机译:本文重点研究基于定子电流分析的感应电机滚动轴承故障检测。具体来说,它建议使用希尔伯特-黄变换来处理定子电流。该方法依赖于两个步骤:经验模式分解和希尔伯特变换。为了估计固有模式函数(IMF),使用经验模式分解。假定这些IMF为单分量信号,可以使用解调技术对其进行处理。然后,使用希尔伯特变换来计算这些IMF的瞬时幅度(IA)和瞬时频率(IF)。通过对IA和IF的分析,可以识别可用于更准确诊断的故障特征。所提出的方法用于感应电机中多个故障程度的轴承故障检测。通过针对不同轴承故障情况的一系列仿真和实验测试,验证了该方法的有效性。根据IMF的能量以及每个IMF的IA和IF的方差评估故障的严重程度。

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