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Real-time system for automatic classification of power quality disturbances

机译:用于电能质量扰动自动分类的实时系统

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This paper presents an automatic system, implemented in LabVIEW, for real-time classification of electrical disturbances. Its basic structure can be listed in three stages: signal acquisition, feature extraction and final classification. The first one refers to the signal sampling by means of a monitoring embedded system and to filtering through a notch filter in order to divide the data into a fundamental component and an error signal. The RMS value and the second-order cumulants are extracted from the fundamental component and the error signal, respectively. The extracted features are then sent to the classification process, which is based on a decision tree constructed with perceptrons and a Bayesian classifier. It was possible to classify twenty classes of multiple and isolated disturbances. The results were satisfactory in which a classification accuracy of 98.47% was achieved for signals simulated through arbitrary waveform generator.
机译:本文介绍了一个在LabVIEW中实现的自动系统,用于对电干扰进行实时分类。它的基本结构可以分为三个阶段:信号获取,特征提取和最终分类。第一个是指通过监视嵌入式系统进行信号采样,并通过陷波滤波器进行滤波,以便将数据分为基本分量和误差信号。 RMS值和二阶累积量分别从基本分量和误差信号中提取。然后将提取的特征发送到分类过程,该过程基于由感知器和贝叶斯分类器构成的决策树。可以将二十种多重和孤立的干扰分类。结果令人满意,其中通过任意波形发生器模拟的信号的分类精度达到98.47%。

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