Detection and classification of power quality disturbances in time domain using probabilistic neural network

Ziming Chen, Mengshi Li, T. Ji, Qinghua Wu
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引用次数: 13

Abstract

This paper proposes a new approach for detection and classification of power quality (PQ) disturbances in time domain. Most research in this field employs frequency domain analysis tools to analyse the features of PQ disturbances, such as Fourier transform and wavelet transform. However, the transient and steady-state characteristics of PQ disturbances are originally reflected on the waveforms of PQ disturbances, i.e., in time domain. In order to detect and classify the PQ disturbances in time domain, mathematical morphology (MM) and Teager energy operator (TEO), which are excellent analysis tools in time domain, are used for feature extraction in this paper. The features compose a feature vector. After that, a probabilistic neural network (PNN), which is more effective as a classifier than other neural network, is used to classify PQ disturbance signals. The feature vector composed of features extracted by MM and TEO is considered as the input of PNN. The proposed approach is tested by PQ disturbance signals, which are simulated according to the IEEE 1159-2009 standard, including swell, sag, interruption, harmonics, notching, oscillatory, fluctuation, and several combinations of these disturbances. The results demonstrate that the features extracted by MM and TEO are effective and the PNN classifies PQ disturbances with high accuracy rate.
基于概率神经网络的电能质量时域扰动检测与分类
本文提出了一种时域电能质量(PQ)扰动检测与分类的新方法。该领域的研究大多采用频域分析工具来分析PQ扰动的特征,如傅里叶变换和小波变换。然而,PQ扰动的瞬态和稳态特性最初反映在PQ扰动的波形上,即在时域上。为了在时域上检测和分类PQ干扰,本文将数学形态学(MM)和Teager能量算子(TEO)作为时域上优秀的分析工具进行特征提取。这些特征组成一个特征向量。然后,利用概率神经网络(PNN)对PQ干扰信号进行分类,该网络作为分类器比其他神经网络更有效。将MM和TEO提取的特征组成的特征向量作为PNN的输入。根据IEEE 1159-2009标准对PQ干扰信号进行了仿真,包括膨胀、凹陷、中断、谐波、陷波、振荡、波动以及这些干扰的几种组合。结果表明,MM和TEO提取的特征是有效的,PNN对PQ干扰具有较高的分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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