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Online Monitoring of Voltage Stability Margin Using an Artificial Neural Network

机译:使用人工神经网络在线监测电压稳定裕度

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摘要

In this paper, an artificial neural network (ANN) based method is developed for quickly estimating the long-term voltage stability margin. The investigation presented in the paper showed that node voltage magnitudes and the phase angles are the best predictors of voltage stability margin. Further, the paper shows that the proposed ANN based method can successfully estimate the voltage stability margin not only under normal operation but also under N-1 contingency situations. If the voltage magnitudes and phase angles are obtained in real-time from phasor measurement units (PMUs) using the proposed method, the voltage stability margin can be estimated in real time and used for initiating stability control actions. Finally, a suboptimal approach to determine the best locations for PMUs is presented. Numerical examples of the proposed techniques are presented using the New England 39-bus test system and a practical power system which consists of 1844 buses, 746 load buses, and 302 generator buses.
机译:本文提出了一种基于人工神经网络(ANN)的方法,用于快速估算长期电压稳定裕度。本文提出的研究表明,节点电压幅度和相角是电压稳定裕度的最佳预测指标。此外,本文表明,所提出的基于ANN的方法不仅可以在正常操作下而且在N-1应急情况下都可以成功地估计电压稳定裕度。如果使用所提出的方法从相量测量单元(PMU)实时获得电压幅度和相角,则可以实时估计电压稳定裕度,并将其用于启动稳定性控制动作。最后,介绍了确定PMU最佳位置的次优方法。使用新英格兰的39总线测试系统和由1844条总线,746条负载总线和302条发电机总线组成的实际电力系统,介绍了所建议技术的数值示例。

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