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Voltage Sag Source Location Based on Pattern Recognition

机译:基于模式识别的电压暂降源定位

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摘要

Voltage sag is one of the major power quality (PQ) problems, and has been the focus of PQ studies due to the impact on sensitive industrial loads and costs led by the damages and maintenance. Voltage sag source location is significant for the customers and suppliers to solve the issue between them, as well as for possible mitigation. Five main methods (the disturbance power and energy method, the slope of system trajectory method, the real current component method, the resistance sign-based method, and the distance relay method) are reviewed first. However, these methods used single criteria, and their effect is limited as the literature shows. This paper presents a pattern recognition way to locate the source of voltage sag. In the proposed method, features for pattern recognition are extracted first, based on these five methods. Then, the thought of source location by pattern classification is discussed with three steps in detail, and support vector machine (SVM) is applied in the case. The nonlinear binary classifier with optimal hyperplane is established to classify the sag source from upstream or downstream by SVM learning. To illustrate the effectiveness of the proposed method, a 110-kV distribution system is tested under simulation conditions, and records from PQ monitors installed in 35-kV substations are used.
机译:电压骤降​​是主要的电能质量(PQ)问题之一,由于对敏感的工业负载的影响以及损坏和维护导致的成本,电压骤降一直是PQ研究的重点。电压骤降​​源的位置对于客户和供应商解决他们之间的问题以及可能的缓解措施很重要。首先回顾了五种主要方法(干扰功率和能量方法,系统轨迹的斜率方法,有功电流分量方法,基于电阻符号的方法以及距离继电器方法)。然而,这些方法使用单一标准,并且其效果如文献所示受到限制。本文提出了一种模式识别方法来定位电压暂降的来源。在提出的方法中,基于这五种方法,首先提取了模式识别的特征。然后,分三个步骤详细讨论了通过模式分类进行源定位的思想,并在这种情况下应用了支持向量机(SVM)。建立具有最优超平面的非线性二进制分类器,以通过SVM学习从上游或下游对垂度源进行分类。为了说明该方法的有效性,在模拟条件下测试了110 kV配电系统,并使用了安装在35 kV变电站中的PQ监视器的记录。

著录项

  • 来源
    《Journal of Energy Engineering》 |2013年第2期|136-141|共6页
  • 作者

    Ganyun Lv; Weimen Sun;

  • 作者单位

    Dept. of Electric Power Engineering, Nanjing Institute of Technology, 1# Hongjing Ave., Nanjing 211167, China, formerly, Dept. of Information Science and Engineering, Zhejiang Normal Univ., 688 Yingbin Ave., Jinhua City 321004, China (corresponding author).;

    Dept. of Information Science and Engineering, Zhejiang Normal Univ.,688 Yingbin Ave., Jinhua City 321004, P.R. China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    voltage sag; source location; pattern recognition; classification; support vector machine (SVM);

    机译:电压骤降源位置;模式识别;分类;支持向量机(SVM);

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