夏彦, 许春雨, 宋建成, 耿蒲龙, 赵钰, 杨健康. 基于LabVIEW的高压配电装置振动信号特征提取和模式识别方法[J]. 煤矿安全, 2015, 46(8): 103-106.
    引用本文: 夏彦, 许春雨, 宋建成, 耿蒲龙, 赵钰, 杨健康. 基于LabVIEW的高压配电装置振动信号特征提取和模式识别方法[J]. 煤矿安全, 2015, 46(8): 103-106.
    XIA Yan, XU Chunyu, SONG Jiancheng, GENG Pulong, ZHAO Yu, YANG Jiankang. Feature Extraction and Pattern Recognition Method of Vibration Signals in High Voltage Distribution Equipment Based on LabVIEW[J]. Safety in Coal Mines, 2015, 46(8): 103-106.
    Citation: XIA Yan, XU Chunyu, SONG Jiancheng, GENG Pulong, ZHAO Yu, YANG Jiankang. Feature Extraction and Pattern Recognition Method of Vibration Signals in High Voltage Distribution Equipment Based on LabVIEW[J]. Safety in Coal Mines, 2015, 46(8): 103-106.

    基于LabVIEW的高压配电装置振动信号特征提取和模式识别方法

    Feature Extraction and Pattern Recognition Method of Vibration Signals in High Voltage Distribution Equipment Based on LabVIEW

    • 摘要: 针对高压配电装置分合闸机构机械振动信号的非平稳特性,提出一种基于LabVIEW的小波包分解与重构、Hilbert变换和归一化能量谱相结合的振动信号特征提取方法。在配电装置上进行模拟试验,获取了正常状态、分闸弹簧松动和铁心卡涩模式下的样本数据。对振动信号做时频特性分析,利用K近邻算法对不同状态特征量进行了模式识别。结果表明:配电装置正常信号归一化能量谱向量各元素分布较均匀,而故障信号所得的归一化能量谱向量元素变化较大;K近邻(KNN)算法识别率达93.3%,识别速度快,验证了通过K近邻算法诊断高压配电装置机械故障的可行性。

       

      Abstract: Focusing on the non-stationary characteristics of mechanical vibration signals of high voltage distribution equipment, a novel feature extraction method of vibration signals was proposed based on a joint analysis of wavelet packet decomposition and reconstruction, Hilbert transform and normalized energy spectrum which all can be performed on the platform of LabVIEW. Simulating experiments on distribution equipment were conducted and vibration signals of normal condition, opening spring loose and friction in solenoid were collected. The vibration signals were analyzed based on the characteristics of a time-frequency and K-nearest neighbor algorithm for different conditions feature quantity pattern recognition can make a detailed analysis of the signal. Experiment results show that each element of the normalized energy spectrum vector of normal signal in the distribution equipment is evenly distributed; while the elements of fault signal normalized energy spectrum vectors are remarkably varied. The accuracy of KNN is 93.3% and its recognition speed is fast, and the results verify the feasibility of the mechanical fault diagnosis approach for high voltage distribution equipment employing K-nearest neighbor algorithm scheme.

       

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