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Efficient feature extraction of vibration signals for diagnosing bearing defects in induction motors

机译:振动信号的有效特征提取,用于诊断感应电动机中的轴承缺陷

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This paper presents a model to extract and select a proper set of features for diagnosing bearing defects in induction motors. An efficient pre-processing of the vibration signals is of paramount importance to provide informative features for the fault classification module. The vibration signals are firstly analyzed by the wavelet packet transform to extract informative frequency domain features. The dimension of the set of extracted features is reduced by resorting to linear discriminant analysis to provide a small-size set of informative features for decision making. The fault classification module contains different classifiers that can learn the features-faults relations and classify multiple bearing defects including ball, inner race and outer race defects of different diameters. Experimental results verify the effectiveness of the proposed technique for diagnosing multiple bearing defects in induction motors.
机译:本文提出了一个模型,用于提取和选择一组适当的特征来诊断感应电动机中的轴承缺陷。振动信号的有效预处理对于为故障分类模块提供信息功能至关重要。首先通过小波包变换对振动信号进行分析,以提取出有意义的频域特征。通过使用线性判别分析来减小提取的特征集的维数,从而为决策制定提供少量的信息特征。故障分类模块包含不同的分类器,这些分类器可以学习特征-故障关系并分类多个轴承缺陷,包括不同直径的滚珠,内圈和外圈缺陷。实验结果验证了所提出的技术用于诊断感应电动机中多个轴承缺陷的有效性。

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