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INDUCTION MOTOR FAULT DIAGNOSIS AND CLASSIFICATION THROUGH SPARSE REPRESENTATION

机译:通过稀疏表示感应电机故障诊断和分类

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Condition monitoring and fault diagnosis of induction motor play a critical role in operation safety and production efficiency. In recent study, sparse representation has demonstrated its simplicity in training, robustness to noise and high accuracy in classification. This paper evaluates the effectiveness of sparse representation as an alternative approach to induction motor fault diagnosis with fault classification rate and robustness to noise as performance measure. Aiming at eliminating the human intervention in fault characteristic frequency detection and extensive feature extraction steps in traditional method, the spatial pattern of the vibration signal is studied as the classifier input. The residual sparsity index (RSI) is proposed to quantify the degree of multi-class data separation and evaluate the reliability of classification results. Experimental results show that the sparse representation method using vibration signal achieves high motor multi-fault classification accuracy and good robustness to noise, with no human intervention required for fault characteristic pattern detection and the need for long feature extraction eliminated. Finally, RSI confirms the high overall reliability of classification results.
机译:感应电机的状态监测和故障诊断在运行安全和生产效率中起着关键作用。最近的研究中,稀疏代表在训练中表明了其简单性,噪声对噪声的鲁棒性和高精度。本文评估了稀疏表示的有效性作为替代电机故障诊断的替代方法,具有故障分类率和噪声稳健性作为性能测量。旨在消除在传统方法中的故障特征频率检测和广泛的特征提取步骤中的人为干预,研究了振动信号的空间图案作为分类器输入。建议剩余稀疏指数(RSI)量化多级数据分离程度,并评估分类结果的可靠性。实验结果表明,使用振动信号的稀疏表示方法实现了高电机多故障分类精度和良好的噪声稳健性,没有人为介入故障特性模式检测,并且对长特征提取的需求消除了。最后,RSI证实了分类结果的高总体可靠性。

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