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A Cluster-based Wavelet Feature Extraction Method for Machine Fault Diagnosis

机译:基于集群的小波特征提取方法,用于机器故障诊断

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In this paper, a cluster-based feature extraction from the coefficients of discrete wavelet transform is proposed for machine fault diagnosis. The proposed approach first divides the matrix of wavelet coefficients into clusters that are centered around the discriminative coefficient positions identified by an unsupervised procedure based on the entropy value of coefficients from a set of representative signals. The features that contain the informative attributes of the signals are computed from the energy content of so obtained clusters. Then machine faults are diagnosed based on these feature vectors using a neural network. The experimental results from the application on bearing fault diagnosis have shown that the proposed approach is able to effectively extract important intrinsic information content of the test signals, and increase the overall fault diagnostic accuracy as compared to conventional methods.
机译:本文提出了一种基于集群的特征提取,从离散小波变换系数中提取,用于机器故障诊断。所提出的方法首先将小波系数的矩阵划分为围绕由基于来自一组代表性信号的系数的熵值来围绕由无监督过程识别的识别过程识别的判别系数位置的簇。包含信号的信息属性的特征是从所获得的集群的能量内容计算的。然后根据使用神经网络的这些特征向量诊断机器故障。轴承故障诊断应用的实验结果表明,与传统方法相比,所提出的方法能够有效提取重要内在信息含量,并提高总故障诊断精度。

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