Identification and ranking of weak buses using modified counterpropagation neural network

M. Pandit, L. Srivastava, V. Singh
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引用次数: 8

Abstract

The task of maintaining power system security in the recently deregulated environment is gigantic with uncertain and diverse power transactions and benefit based operational schemes. Monitoring of the system and predicting possible voltage collapses can be accomplished by defining suitable indices that can trigger the preventive or corrective control actions when predefined thresholds are reached to make the system insecure. This paper proposes a modified counterpropagation neural network (MCPN) enhanced by the concept of neo fuzzy neurons for static voltage security assessment. The proposed method works by identifying weak buses on the basis of available reactive margin and ranks them in order of their sensitivity to voltage collapse. A novel feature selection method is used to reduce the dimension and training time of the neural network. The proposed method has been tested on a practical 75-bus Indian system and is found to identify weak buses correctly even for previously unseen operating conditions, instantaneously
利用改进的反传播神经网络对弱总线进行识别和排序
在最近放松管制的环境下,维持电力系统安全的任务是巨大的,电力交易不确定和多样化,以及基于效益的运营方案。系统监控和预测可能的电压崩溃可以通过定义合适的指标来完成,当达到预定义的阈值使系统不安全时,这些指标可以触发预防或纠正控制行动。本文提出了一种基于新模糊神经元的改进反传播神经网络(MCPN)用于静态电压安全评估。该方法基于可用的无功裕度来识别弱母线,并根据它们对电压崩溃的敏感性对它们进行排序。采用一种新颖的特征选择方法来降低神经网络的维数和训练时间。所提出的方法已经在一个实际的75总线印度系统上进行了测试,发现即使在以前未见过的操作条件下,也能立即正确识别弱总线
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