Optimized Method for Locating the Source of Voltage Sags

IF 0.6 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Communications Software and Systems Pub Date : 2021-01-01 DOI:10.24138/jcomss-2021-0070
Jose Carlos Filho, Fabbio Anderson da Silva Borges, Ricardo de Andrade Lira Rabêlo, Ivan Saraiva Silva, A. O. de Carvalho Filho
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引用次数: 4

Abstract

Short-Duration Voltage Variations (SDVVs) are the power quality disturbances (PQD) that mainly affect industrial systems, and are originated for various reasons, in particular short circuits over large areas, even those originating in remote points of the electrical system. The location problem aims to indicate the area or region or distance from the substation that is connected to the source causing the voltage sags, and is a fundamental task to ensure good power quality. One of the strategies used to determine the location of sources causing SDVVs and for an implementation of machine learning algorithms in modern distribution networks, called Smart Grids. Monitoring a Smart Grid plays a key role, however mostly it generates a large volume of data (Big Data) and as a result, multiple challenges arise due to the properties of this data such as volume, variety and velocity. This work presents an optimization through genetic algorithm to select meters which already exist in the Smart Grid, using a voltage sag location method in order to reduce the data obtained and analyzed throughout the localization process. Optimization was evaluated through a comparison with a non-optimized localization method, this comparison showed a difference between the hit rates of less than 1%.
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电压跌落源定位的优化方法
短时电压变化(sdvv)是主要影响工业系统的电能质量扰动(PQD),其产生的原因多种多样,特别是大面积的短路,甚至是那些起源于电力系统的远程点。定位问题是指与电源相连的变电站产生电压跌落的区域或距离,是保证电能质量的一项基本任务。其中一种策略用于确定导致sdvv的源的位置,以及在现代配电网络中实施机器学习算法,称为智能电网。监控智能电网起着关键作用,但大多数情况下它会产生大量数据(大数据),因此,由于这些数据的属性(如数量、种类和速度),会出现多种挑战。本文通过遗传算法对智能电网中已有的电表进行优化选择,采用电压暂降定位方法,以减少在定位过程中获取和分析的数据。通过与非优化的定位方法的比较来评估优化,这种比较显示命中率的差异小于1%。
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来源期刊
Journal of Communications Software and Systems
Journal of Communications Software and Systems Engineering-Electrical and Electronic Engineering
CiteScore
2.00
自引率
14.30%
发文量
28
审稿时长
8 weeks
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