μPMU噪声特性分析及其对配电网故障定位的影响

Ren Xinyu, He Jinhan, W. Xiaojun, Wang Zhenji
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引用次数: 3

摘要

微相量测量单元(μPMU)的应用为配电网故障定位提供了一种新的技术途径。为了提高故障定位的准确性和可靠性,有必要研究μPMU噪声的特性及其对故障定位算法的影响。提出了一种用于PMU噪声特性分析的测量误差模型。并将噪声引入到系统中,考察了噪声对传统阻抗故障定位方法的影响。为了分析噪声特性,采用中值滤波从原始数据中提取μPMU噪声。采用蒙特卡罗方法获得了μPMU噪声影响下的故障定位误差样本。采用高斯混合模型(GMM)对观测数据进行拟合,并用回归分析理论中的拟合优度(GOF)指标进行评价。将该方法应用于μPMU噪声特性分析和μPMU噪声影响下的故障定位误差分析。得出结论:μPMU噪声和定位误差均服从高斯分布,并通过μPMU实测数据验证了结果。给出了考虑μPMU噪声的故障定位误差分析结果。结果表明,阻抗法的精度受μPMU噪声的影响较大,双端阻抗法的精度高于单端阻抗法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of μPMU Noise Characteristics and Its Influence on Distribution Network Fault Location
The application of Micro Phasor Measurement Unit (μPMU) provides a new technological approach for distribution network fault location. In order to improve the accuracy and reliability of fault location, the study of the characteristics for μPMU noise and its impact on fault location algorithms is of necessity. This paper proposed a PMU measurement error model for noise characteristics analysis. And the noise was introduced into the system to examine its effect on the traditional impedance fault location method. To analyze the noise characteristics, a median filter was used to extract the μPMU noise from the raw data. The Monte Carlo method was used to obtain the sample of the fault location error under the influence of μPMU noise. The observed data was fitted with the Gaussian Mixture Model (GMM) then evaluated by the goodness-of-fit (GOF) indexes in regression analysis theory. This method is used on both μPMU noise characteristics analysis and the fault location error under the influence of μPMU noise. The conclusion was reached: μPMU noise and the location error both obey the Gaussian distribution and the result was validated by actual μPMU measured data. The result of fault location error with μPMU noise is presented. The result shows that the accuracy of the impedance method is greatly influenced by the μPMU noise, and the accuracy of double-ended impedance method is higher than single-ended impedance method.
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