基于端漏磁的双馈感应发电机短路故障性能退化评价方法

Shouwang Zhao, Yu Chen, Feng Liang, Sichao Zhang, Nadeem Shahbaz, Shuang Wang, Yong Zhao, Wei Deng, Yonghong Cheng
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引用次数: 0

摘要

双馈感应发电机(DFIG)的健康状态与实际运行条件、外部环境、突发因素的积累以及耦合效应有关。退化特征提取主要基于单个信号或单个信号的多个统计量。从DFIG的末端漏磁监测数据中提取主成分,对其性能退化进行评价。提出一种基于变分模态分解(VMD)和支持向量数据描述(SVDD)的短路故障性能退化评估方法。通过监测终端外漏磁来检测短路故障和性能下降的过程。对于短路,当漏磁信号监测受到外界环境、异常信号和噪声等问题时,采用VMD方法对漏磁信号进行分解,提取最相关的模态组成,即均方根(RMS)、奇异值分解(SVD)、样本熵(SE)、精细复合多尺度色散熵(RCMDE)作为主要特征向量。对于一组特征向量集的MFL信号,然后使用SVDD进行性能退化评估。利用待校验样本数据与训练好的超球模型中心的距离来描述性能退化程度,利用隶属度函数将距离指标转化为正常状态的隶属度作为性能退化指标,实现对生成器性能退化程度的状态评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation Method of Performance Degradation based on End Magnetic Flux Leakage for Short Circuit Fault of Doubly Fed Induction Generator
The health status of the Doubly Fed Induction Generator (DFIG) is related to the actual operating conditions, the external environment, the accumulation of sudden factors, and the coupling effect. The degradation feature extraction is mainly based on a single signal or multiple statistics of a single signal. The principal component components were extracted from the end magnetic flux leakage (MFL) monitoring data of DFIG to evaluate performance degradation. This paper proposes an evaluation method of performance degradation for short circuit faults based on Variational Mode Decomposition (VMD) and Support Vector Data Description (SVDD). The process for detecting short circuit faults and performance degradation by monitoring the end-external MFL. For short circuits, when the magnetic flux leakage signal monitoring by the external environment, abnormal signal and noise problems, the VMD method is used to decompose the MFL signals and extract the most relevant modal composition of Root Mean Square (RMS), Singular Value Decomposition (SVD), Sample Entropy (SE), Refined Composite Multiscale Dispersion Entropy (RCMDE) as the main feature vectors. For a set of feature vector sets of MFL signal, then using the SVDD to perform performance degradation assessment. The distance between the sample data to be checked and the center of the trained hypersphere model is used to describe the performance degradation degree, and the membership function is used to transform the distance index into the membership degree of the normal state as the performance degradation index, to realize the state evaluation of the performance degradation degree of the generator.
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