Classification of Power Quality Disturbances in Emerging Power System with Distributed Generation Using Space Phasor Model and Normalized Cross Correlation

R. Kankale, S. Paraskar, S. Jadhao
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Abstract

This paper introduces a new method for detecting and classifying power quality disturbances (PQDs) in emerging power system with Distributed Generation (DG). The Space Phasor Model (SPM) and Normalized Cross-Correlation (NCC) based image pattern (template) matching algorithm is proposed to detect and classify the PQDs. An emerging power system with DG system is simulated in MATLAB Simulink environment. In this paper, seven PQDs namely voltage sag, voltage swell, voltage interruption, oscillatory transients, voltage flicker, voltage notch, and voltage harmonics with notch which are caused by the DG operating conditions, and other causes are considered under study. The space phasor models represented in the complex plane are obtained for each case of PQDs using the three-phase voltage signals. The NCC-based image pattern matching technique is used to convert these space phasor models into template and matching images for the detection and classification of PQDs. The graphical results show that the proposed algorithm accurately detects and classifies the PQD provided in the template image by finding its exact match and position in the matching image.
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基于空间相量模型和归一化互相关的分布式新兴电力系统电能质量扰动分类
本文介绍了一种新型分布式电力系统中电能质量扰动检测与分类的新方法。提出了基于空间相量模型(SPM)和归一化互相关(NCC)的图像模式(模板)匹配算法来检测和分类pqd。在MATLAB Simulink环境下,对一种新兴的含DG系统的电力系统进行了仿真。本文研究了由DG运行工况及其他原因引起的电压暂降、电压膨胀、电压中断、振荡瞬态、电压闪变、电压陷波、带陷波的电压谐波等7种pqd。利用三相电压信号得到了每一种pqd的复平面空间相量模型。利用基于ncc的图像模式匹配技术,将这些空间相量模型转化为模板和匹配图像,用于pqd的检测和分类。图形化结果表明,该算法通过在匹配图像中找到PQD的精确匹配和位置,对模板图像中提供的PQD进行了准确的检测和分类。
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