Research on feature of series arc fault based on improved SVD

Hongxin Gao, Xili Wang, Tuannghia Nguyen, Fengyi Guo, Zhiyong Wang, Jianglong You, Yong Deng
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引用次数: 11

Abstract

In order to study the feature and extraction methods of series arc fault, the series arc fault experiments under different current conditions were carried out with the motor load and inverter respectively. A method of feature extraction based on improved singular value decomposition was proposed, and arc faults were distinguished by support vector machine (SVM). SVM was optimized by genetic algorithm (GA). Current signals were used to structure the attractor track matrix, and the time- delay step of the matrix was reconstructed by autocorrelation analysis. By means of singular value decomposition of the trace matrix, singular values of the matrix were obtained, the feature of arc fault were obtained by screening these values. Finally, GA- SVM was used to test the feature of the arc fault. The results showed that the method could effectively extract the series arc fault feature in the motor and inverter load circuit.
基于改进奇异值分解的串联电弧故障特征研究
为了研究串联电弧故障的特征和提取方法,分别在电机负载和逆变器上进行了不同电流条件下的串联电弧故障实验。提出了一种基于改进奇异值分解的特征提取方法,并利用支持向量机对电弧故障进行识别。采用遗传算法对支持向量机进行优化。利用电流信号构造吸引子轨迹矩阵,通过自相关分析重构矩阵的时滞步长。通过对轨迹矩阵进行奇异值分解,得到矩阵的奇异值,对这些奇异值进行筛选,得到电弧故障的特征。最后,利用遗传-支持向量机对电弧故障特征进行检测。结果表明,该方法能够有效地提取电机和逆变器负载电路中的串联电弧故障特征。
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