Off-line voltage security assessment of power transmission systems using UVSI through artificial neural network

K. Chakraborty, Gitanjali Saha
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引用次数: 8

Abstract

Coming days are becoming a much challenging task for the power system researchers due to the anomalous increase in the load demand with the existing system. As a result there exists a discordant between the transmission and generation framework which is severely pressurizing the power utilities. In this paper a quick and efficient methodology has been proposed to identify the most sensitive or susceptible regions in any power system network. The technique used in this paper comprises of correlation of a multi-bus power system network to an equivalent two-bus network along with the application of Artificial neural network(ANN) Architecture with training algorithm for online monitoring of voltage security of the system under all multiple exigencies which makes it more flexible. A fast voltage stability indicator has been proposed known as Unified Voltage Stability Indicator (UVSI) which is used as a substratal apparatus for the assessment of the voltage collapse point in a IEEE 30-bus power system in combination with the Feed Forward Neural Network (FFNN) to establish the accuracy of the status of the system for different contingency configurations.
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基于人工神经网络的UVSI输变电系统离线电压安全评估
由于现有系统的负荷需求异常增加,未来的一段时间将成为电力系统研究人员面临的一项极具挑战性的任务。因此,输电与发电之间存在着不协调,给电力公司带来了巨大的压力。本文提出了一种快速有效的方法来识别任何电网中最敏感或最易受影响的区域。本文采用的技术是将多母线电网与等效的双母线网络相关联,并应用人工神经网络(ANN)体系结构和训练算法对系统在各种紧急情况下的电压安全进行在线监测,使其更加灵活。提出了一种快速电压稳定指标——统一电压稳定指标(UVSI),并将其与前馈神经网络(FFNN)相结合,作为评估IEEE 30总线电力系统电压崩溃点的基础装置,以确定不同应急配置下系统状态的准确性。
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