Artificial Neural Network Based Approach for Voltage Stability Analysis of for Sustained Operation of Power System

Y. R. Adhikari, Rishi Kr. Barnawal
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Abstract

For reliable and secure power system, the stability analysis is recognized as an important problem. Voltage stability is the capacity of a power system to maintain steady acceptable voltages at all buses in the system. Voltage stability index (VSI) evaluation for a situation of power system can act as an accurate and fast indicator of the proximity of the system to voltage instability. Recently there has been considerable interest in intelligent methods based on artificial neural network (ANN), fuzzy logic and genetic algorithm to voltage stability assessment problem. ANN, with the ability to provide non-linear input/output mapping, parallel processing, learning and generalization have the potential to make them ideally suited for estimating VSI’s of a power system without solving the governing power system equations. This paper is to purpose an alternative method using ANN for finding the closeness of system operating point to voltage collapse that would be claimed to have better computational speed, accuracy, efficiency and reliability. Voltage Stability Analysis (VSA) using VSI is performed for different alternate loading strategies of power network building ANN models for every different scenario. The outcome found working satisfactorily in analyzing voltage stability problem, basically in ranking the network buses according vulnerability order.
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基于人工神经网络的电力系统持续运行电压稳定性分析方法
为了保证电力系统的可靠和安全,稳定性分析是一个重要的问题。电压稳定性是电力系统在系统中所有母线保持稳定的可接受电压的能力。电压稳定指数(VSI)评价可以准确、快速地反映电力系统接近电压不稳定的程度。近年来,基于人工神经网络(ANN)、模糊逻辑和遗传算法的智能方法已引起人们对电压稳定评估问题的极大兴趣。人工神经网络具有提供非线性输入/输出映射、并行处理、学习和泛化的能力,有可能使它们非常适合在不求解控制电力系统方程的情况下估计电力系统的VSI。本文的目的是利用人工神经网络寻找系统工作点与电压崩溃的密切度,该方法具有更好的计算速度、准确性、效率和可靠性。利用VSI对电网的不同备用负荷策略进行了电压稳定性分析,并针对不同情况建立了人工神经网络模型。结果表明,该方法在分析电压稳定问题方面,基本上是在对网络母线进行脆弱性排序方面,取得了满意的效果。
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