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An Image Processing Approach to Machine Fault Diagnosis Based on Visual Words Representation

机译:基于视觉词表示的机器故障诊断的图像处理方法

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Machine fault diagnosis and remaining service life prognosis provide the basis for condition-based maintenance, and is key to operational reliability. Accurate assessment of machine health requires effective analysis of vibration data, which is typically performed by examining the change in frequency components. One limitation associated with these methods is the empirical knowledge required for fault feature selection. This paper presents an image processing approach to automatically extract features from vibration signal, based on visual words representation. Specifically, a time-frequency image of vibration signal is obtained through wavelet transform, which is then used to extract "visual word" features for recognizing fault related patterns. The extracted features are subsequently fed into sparse representation-based classifier for classification. Evaluation using experimental bearing data confirmed the effectiveness of the developed method with a classification accuracy of 99.7%.
机译:机器故障诊断和剩余的使用寿命预后为基于条件的维护提供了基础,是操作可靠性的关键。准确评估机器健康需要有效地分析振动数据,通常通过检查频率分量的变化来执行。与这些方法相关的一个限制是故障特征选择所需的经验知识。本文介绍了一种图像处理方法,可以基于视觉单词表示自动提取振动信号的特征。具体地,通过小波变换获得振动信号的时频图像,然后用于提取用于识别故障相关模式的“视觉字”特征。随后将提取的特征送入基于稀疏表示的基于分类的分类。使用实验轴承数据的评估证实了开发方法的有效性,分类精度为99.7%。

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