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基于人工神经网络的电力系统中振荡与短路模式识别的研究
引用本文:郁惟镛,李航,康建洲.基于人工神经网络的电力系统中振荡与短路模式识别的研究[J].继电器,2000,28(6):7-9,22.
作者姓名:郁惟镛  李航  康建洲
作者单位:上海交通大学电气工程与自动化系,上海 200240
摘    要:电力系统中的振荡会影响许多距离保护的性能 ,它是许多学者共同关注的难点。文章在比较了以往几种传统保护的原理之后 ,提出一种新的基于人工神经网络的判别算法 ,它能正确区分故障、振荡及振荡中故障等各种状态。并对BP网络算法进行改进后 ,应用于距离保护之中。EMTP仿真结果表明 ,此算法比以往的保护更可靠 ,功能更强大

关 键 词:电力系统振荡    人工神经网络    故障电流分量    BP算法

Identification on oscillation and short circuit modes in electric power system based on ANN
YU Wei_yong,LI Hang,KANG Jian_zhou.Identification on oscillation and short circuit modes in electric power system based on ANN[J].Relay,2000,28(6):7-9,22.
Authors:YU Wei_yong  LI Hang  KANG Jian_zhou
Abstract:The oscillation in electric power system would impact on the performances of the distance relay. It is a problem to solve. A new criterion based on ANN is proposed by comparing several traditional relaying principles. Using this new criterion, the modes of fault, oscillation and fault by oscillation can be distinguished correctly. BP algorithm is available for distance relay after innovated. The result from EMTP simulation shows that the new criterion is more reliable and available than that of the traditional one.
Keywords:oscillation in power system  ANN  fault current component  BP algorithm
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