Bearing fault diagnosis of induction machines using VMD-DWT and composite multiscale weighted permutation entropy

COMPEL Pub Date : 2024-05-06 DOI:10.1108/compel-11-2023-0580
Ahmed Taibi, Said Touati, Lyes Aomar, Nabil Ikhlef
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Abstract

Purpose

Bearings play a critical role in the reliable operation of induction machines, and their failure can lead to significant operational challenges and downtime. Detecting and diagnosing these defects is imperative to ensure the longevity of induction machines and preventing costly downtime. The purpose of this paper is to develop a novel approach for diagnosis of bearing faults in induction machine.

Design/methodology/approach

To identify the different fault states of the bearing with accurately and efficiently in this paper, the original bearing vibration signal is first decomposed into several intrinsic mode functions (IMFs) using variational mode decomposition (VMD). The IMFs that contain more noise information are selected using the Pearson correlation coefficient. Subsequently, discrete wavelet transform (DWT) is used to filter the noisy IMFs. Second, the composite multiscale weighted permutation entropy (CMWPE) of each component is calculated to form the features vector. Finally, the features vector is reduced using the locality-sensitive discriminant analysis algorithm, to be fed into the support vector machine model for training and classification.

Findings

The obtained results showed the ability of the VMD_DWT algorithm to reduce the noise of raw vibration signals. It also demonstrated that the proposed method can effectively extract different fault features from vibration signals.

Originality/value

This study suggested a new VMD_DWT method to reduce the noise of the bearing vibration signal. The proposed approach for bearing fault diagnosis of induction machine based on VMD-DWT and CMWPE is highly effective. Its effectiveness has been verified using experimental data.

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利用 VMD-DWT 和复合多尺度加权排列熵诊断感应机轴承故障
目的轴承在感应机器的可靠运行中起着至关重要的作用,其故障可能导致严重的运行挑战和停机。检测和诊断这些故障对于确保感应机的使用寿命和防止代价高昂的停机时间至关重要。为了准确高效地识别轴承的不同故障状态,本文首先使用变异模态分解(VMD)技术将原始轴承振动信号分解为多个固有模态函数(IMF)。利用皮尔逊相关系数选出包含较多噪声信息的 IMF。随后,使用离散小波变换 (DWT) 过滤噪声 IMF。其次,计算每个分量的复合多尺度加权排列熵(CMWPE),形成特征向量。最后,使用局部敏感判别分析算法对特征向量进行还原,并将其输入支持向量机模型进行训练和分类。本研究提出了一种新的 VMD_DWT 方法来降低轴承振动信号的噪声。所提出的基于 VMD-DWT 和 CMWPE 的感应机轴承故障诊断方法非常有效。实验数据验证了该方法的有效性。
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