Fault Diagnosis of Traction Converter Based on Improved Multiscale Permutation Entropy and Wavelet Analysis

Lei Yang, Zheng Li, Haiying Dong
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Abstract

To solve the problems of low fault diagnosis rate and poor efficiency of AC-DC drive traction converter, a fault diagnosis method based on improved multiscale permutation entropy and wavelet analysis is proposed based on the multiple fault characteristics of input current curve in frequency domain. Firstly, the curve of the traction converter is decomposed by wavelet transform, and the modal components of different time scales are obtained. Then the fault characteristic parameters of different components are calculated by improved multi-scale permutation entropy. Finally, the multivariable support vector machine algorithm based on decision tree is used to obtain the tree-like optimal fault interval surface through small sample training, so as to achieve the fault classification of traction converters. The experimental results show that this method can effectively distinguish the fault types of traction converters, and improve the accuracy and efficiency of fault diagnosis, which has good adaptability and practical significance.
基于改进多尺度置换熵和小波分析的牵引变流器故障诊断
针对交直流驱动牵引变换器故障诊断率低、效率差的问题,基于输入电流曲线的频域多重故障特征,提出了一种基于改进多尺度排列熵和小波分析的故障诊断方法。首先,对牵引变流器曲线进行小波变换分解,得到不同时间尺度的模态分量;然后利用改进的多尺度排列熵计算不同分量的故障特征参数。最后,采用基于决策树的多变量支持向量机算法,通过小样本训练得到树状最优故障区间面,从而实现牵引变流器的故障分类。实验结果表明,该方法能有效区分牵引变流器的故障类型,提高故障诊断的准确性和效率,具有良好的适应性和实用意义。
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