基于Hilbert-Huang变换和SVM分类器的电能质量扰动监测

R. Shilpa, S. Prabhu, P. Puttaswamy
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引用次数: 4

摘要

电压信号的干扰会导致器件发热、老化等问题。对降低的供电电压进行增强是一项首要任务,需要对噪声进行识别和分类。因此,针对电压暂降、暂态、膨胀和谐波电压差等扰动,提出了Hilbert-Huang变换识别和支持向量机分类的方法。利用希尔伯特变换对采集到的变电站实时数据进行故障定位分析。同时给出了经验模态分解的性能估计及其噪声辅助版本——集成经验模态分解。并对互相关和支持向量机的分类结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power quality disturbances monitoring using Hilbert-Huang transform and SVM classifier
The voltage signal disturbances may lead to the difficulties viz. heating, device aging, etc. Enhancement of the devalued supplied power voltage is a prime task that needs identification and also the classification of the noise. Therefore, for disturbances namely voltage sag, transients, swell and harmonic voltage disparities, identification by Hilbert-Huang transform and classification by Support Vector Machine is presented. The fault location in the gathered real-time substation data is analyzed by Hilbert transform. Also the performance estimation of Empirical Mode Decomposition with its noise assisted version called Ensemble Empirical Mode Decomposition is presented. The comparison amongst the classification results of cross-correlation and SVM are also proposed.
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