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RBF and SVM Neural Networks for Automated Power Quality Events Classification

机译:用于自动化电能质量事件的RBF和SVM神经网络分类

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This paper presents classification results of different power quality disturbances. SVM and RBF neural networks are considered as appropriate classifiers for power quality issues, however SVM networks show better performance. Simulation of disturbed signals by parametric equations enabled the assessment of signal parameters influence on classification rate. Positive results encouraged further research. Model of supply system suffering from sags was simulated. Independent from line length and sag duration the classifier was set to recognize different sag types. The idea of space phasor was applied to obtain distinctive patterns from three phase system. Wavelet transform was used to find the beginning of sags. Positive classification results were obtained.
机译:本文提出了不同电能质量障碍的分类结果。 SVM和RBF神经网络被视为电能质量问题的适当分类器,但SVM网络表现出更好的性能。参数方程的扰动信号仿真使信号参数对分类率的影响进行了评估。积极的结果鼓励进一步研究。模拟了患病的供应系统模型。独立于行长度和SAG持续时间,分类器设置为识别不同的SAG类型。空间量相器的想法被应用于从三相系统获得独特的模式。小波变换用于找到凹凸的开头。获得阳性分类结果。

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