Running Status Diagnosis of S700K Turnout Based on VMD-KPCA and Fuzzy Clustering

Zheng Li, Wenjun Wei, Xiaochun Wu, Yang Liu, Jinbo Yu
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Abstract

S700K turnout is the key equipment of railway line conversion. The diagnosis of S700K turnout in a normal, sub-health, and fault running state is the primary premise to ensure the safe operation of the railway. Aiming at the consistency between the characteristics of the power curve of S700K turnout and its state information, this paper proposes a new algorithm based on variational mode decomposition (VMD) and kernel principal component analysis (KPCA) to extract the characteristics of the power curve of S700K turnout. It uses fuzzy clustering analysis to diagnose the running state of S700K turnout. First, to extract the detailed components of the action power curve, it is decomposed into intrinsic mode function with limited bandwidth (BIMF) by VMD. Secondly, the multi-scale permutation entropy (MPE) is used to characterize the signal complexity of the power curve and different BIMF components, which are taken as the running state feature set. After KPCA analysis, eigenvalues with a contribution rate greater than 95% are selected as the state eigenvector. The experimental results show that the diagnosis algorithm can effectively identify the running state of S700K turnout, meet the characteristics of fewer fault samples of S700K turnout, and do not need to train in advance, which is of great significance for field guidance.
基于VMD-KPCA和模糊聚类的S700K道岔运行状态诊断
S700K型道岔是铁路线路转换的关键设备。S700K道岔正常、亚健康、故障运行状态的诊断是保证铁路安全运行的首要前提。针对S700K道岔功率曲线特征与其状态信息的一致性,提出了一种基于变分模态分解(VMD)和核主成分分析(KPCA)的S700K道岔功率曲线特征提取算法。采用模糊聚类分析方法对S700K型道岔的运行状态进行诊断。首先,通过VMD将动作功率曲线分解为有限带宽内禀模态函数(BIMF),提取动作功率曲线的详细分量;其次,利用多尺度置换熵(MPE)表征功率曲线和不同BIMF分量的信号复杂度,并将其作为运行状态特征集;经过KPCA分析,选取贡献率大于95%的特征值作为状态特征向量。实验结果表明,该诊断算法能有效识别S700K道岔运行状态,满足S700K道岔故障样本少的特点,且不需要提前训练,对现场指导具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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