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基于多判据神经网络的单相自适应重合闸的研究
引用本文:赵微.基于多判据神经网络的单相自适应重合闸的研究[J].吉林电力,2008,36(6).
作者姓名:赵微
作者单位:吉林供电公司,吉林,吉林,132001
摘    要:提出了一种基于多判据神经网络的电力系统单相自适应重合闸优化方案,该方法能够正确进行瞬时故障和永久故障的区分.当瞬时性故障发生时,在短路点电弧熄灭后的恢复电压阶段,断开相各电气量的关系与永久性故障将有本质的不同.在详细分析断开相工频电气量的基础上,用滤波后的采样值通过预处理层构成3种判据,利用神经网络将它们的自适应赋予权值,最后得出正确的结果.经过大量的仿真试验,该方案获得了满意的效果.

关 键 词:单相自适应重合闸  电力系统  瞬时性故障  永久性故障  神经网络

Study on Single-phase Adaptive Auto-reclosure Based on Multi-criterion Neural Network
ZHAO Wei.Study on Single-phase Adaptive Auto-reclosure Based on Multi-criterion Neural Network[J].Jilin Electric Power,2008,36(6).
Authors:ZHAO Wei
Abstract:An optimized scheme based on multi-criterion neural network for single-pole adaptive reclosing in power system is proposed.It can distinguish transient fault from permanent fault occurred on the EHV transmission line properly.During the voltage recovery period after the extinction of fault arc,the amplitude and phase of transient fault voltage is essentially different from those of permanent fault voltage.Based on the analysis of fault voltage using filtered sample data,three criterions are set up through p...
Keywords:single-phase adaptive auto-reclosure  power system  transient fault  permanent fault  neural network  
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