Fault Diagnosis of Check Valve Based on WVD and NMF

Jihui Luo, Guoyong Huang, Jun Ma
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Abstract

This paper proposes a check valve fault diagnosis method based on time-frequency images and Non-negative Matrix Factorization (NMF), which transforms the fault features extraction of time domain signals into fault features extraction of time-frequency images. Firstly, the vibration signals of the check valve are decomposed by Differential Empirical Mode Decomposition (DEMD), and the Intrinsic Mode Functions (IMFs) containing more feature information are selected to reconstruct the signals by correlation coefficient method. Secondly, Wigner-Ville Distribution (WVD) is used to analysis the reconstruct signals and obtain the time-frequency images, then NMF is applied to decompose the time-frequency image matrixes and get the feature matrix. Finally, the feature vectors are classified via the Support Vector Machine (SVM) which is optimized by Genetic Algorithm (GA) to complete the fault diagnosis of the high pressure diaphragm pump check valve. The method is validated using data from three operating states of the high pressure diaphragm pump check valve. The experimental result shows that the proposed method can effectively extract the fault features and identify fault types of the check valve. The average classification accuracy rate is up to 99.17%, which is higher than using the time domain and frequency domain features as input.
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基于WVD和NMF的单向阀故障诊断
提出了一种基于时频图像和非负矩阵分解(NMF)的单向阀故障诊断方法,将时域信号的故障特征提取转化为时频图像的故障特征提取。首先,采用差分经验模态分解(DEMD)对单向阀振动信号进行分解,选取包含较多特征信息的本征模态函数(IMFs),采用相关系数法对信号进行重构;其次,利用WVD (Wigner-Ville Distribution)对重构信号进行分析,得到时频图像,然后利用NMF对时频图像矩阵进行分解,得到特征矩阵;最后,通过遗传算法优化的支持向量机(SVM)对特征向量进行分类,完成高压隔膜泵单向阀的故障诊断。用高压隔膜泵止回阀三种工作状态的数据对该方法进行了验证。实验结果表明,该方法能有效地提取单向阀故障特征,识别故障类型。平均分类准确率达到99.17%,高于使用时域和频域特征作为输入的分类准确率。
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