On-line power systems voltage stability monitoring using artificial neural networks

C. Bulac, I. Tristiu, Alexandru Mandiş, L. Toma
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引用次数: 14

Abstract

A method for on-line voltage stability monitoring of a power system based on Multilayer Perceptron (MLP) neural network is proposed in this paper. Considering that the power system is operating under quasistatic conditions, by using power flow model and singular value decomposition of the reduced Jacobian matrix, a suitable index to quantify the proximity of power system voltage instability is defined. Then, a neuronal network is trained to learn the correlation between the key factors of the voltage stability phenomena and this index. Once trained, the neural network provides the above mentioned voltage stability index as output for a predefined set of input variables that are known as directly influencing the stability conditions of the power system. Since the input variables for the neural network may be obtained from the steady state estimator, the proposed method can be implemented as a function of the Energy Management System (EMS) for on-line voltage stability monitoring. Tests are carried out using the IEEE 30-bus system, where different operating scenarios are considered.
基于人工神经网络的电力系统电压稳定在线监测
提出了一种基于多层感知器(MLP)神经网络的电力系统电压稳定在线监测方法。考虑到电力系统在准静态状态下运行,利用潮流模型和约简雅可比矩阵的奇异值分解,定义了一个合适的指标来量化电力系统电压不稳定的接近度。然后,训练神经网络来学习电压稳定现象的关键因素与该指标之间的相关性。经过训练后,神经网络将上述电压稳定指标作为一组预定义的输入变量的输出,这些输入变量被称为直接影响电力系统的稳定条件。由于神经网络的输入变量可以从稳态估计器中获得,因此该方法可以作为能量管理系统(EMS)的函数来实现在线电压稳定监测。使用IEEE 30总线系统进行测试,其中考虑了不同的操作场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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