Detection and Classification of Power Quality Disturbances Using Time-Frequency Analysis Technique

Abdul Rahim Abdullah, A. Sha'ameri, Abd Rahim Mat Sidek, Mohammad Razman Shaari
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引用次数: 26

Abstract

This paper presents the detection and classifications of power quality disturbances using time-frequency signal analysis. The method used is based on the pattern recognition approach. It consists of parameter estimation followed classification. Based on the spectrogram time-frequency analysis, a set of signal parameters are estimated as input to a classifier network. The power quality events that are analyzed are swell, sag, interruption, harmonic, interharmonic, transient, notching and normal voltage. The parameter estimation is characterized by voltage signal in rms per unit, waveform distortion, harmonic distortion and interharmonic distortion. A rule based system is developed to detect and classify the various types of power quality disturbances. The system has been tested with 100 data for each power quality event at SNR from OdB to 50dB to verify its performance. The results show that the system gives 100 percent accuracy of power quality signals at 30 dB of SNR.
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基于时频分析技术的电能质量扰动检测与分类
提出了一种基于时频信号分析的电能质量干扰检测与分类方法。所使用的方法是基于模式识别方法。它由参数估计和分类组成。基于谱图时频分析,估计一组信号参数作为分类器网络的输入。分析的电能质量事件有膨胀、凹陷、中断、谐波、间谐波、暂态、陷波和正常电压。参数估计的特点是电压信号单位有效值、波形畸变、谐波畸变和谐波间畸变。开发了一种基于规则的系统来检测和分类各种类型的电能质量干扰。在信噪比从OdB到50dB范围内,对每个电能质量事件进行了100个数据测试,以验证其性能。结果表明,该系统在信噪比为30 dB时,电能质量信号的准确度为100%。
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