Voltage Stability Margin Estimation Using Machine Learning Tools

Gabriel Guañuna, S. Chamba, Nelson Granda, J. Cepeda, D. Echeverria, Walter Vargas
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Abstract

Real-time voltage stability assessment, via conventional methods, is a difficult task due to the required large amount of information, high execution times and computational cost. Based on these limitations, this technical work proposes a method for the estimation of the voltage stability margin through the application of artificial intelligence algorithms. For this purpose, several operation scenarios are first generated via Monte Carlo simulations, considering the load variability and the n-1 security criterion. Afterwards, the voltage stability margin of PV curves is determined for each scenario to obtain a database. This information allows structuring a data matrix for training an artificial neural network and a support vector machine, in its regression version, to predict the voltage stability margin, capable of being used in real time. The performance of the prediction tools is evaluated through the mean square error and the coefficient of determination. The proposed methodology is applied to the IEEE 14 bus test system, showing so promising results.
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使用机器学习工具估计电压稳定裕度
由于需要大量的信息,执行时间和计算成本高,通过传统方法进行实时电压稳定性评估是一项困难的任务。基于这些局限性,本技术工作提出了一种应用人工智能算法估计电压稳定裕度的方法。为此,考虑到负载可变性和n-1安全准则,首先通过蒙特卡罗模拟生成了几个操作场景。然后,确定每个场景下PV曲线的电压稳定裕度,得到数据库。这些信息允许构建一个数据矩阵来训练人工神经网络和支持向量机,在其回归版本中,预测电压稳定裕度,能够实时使用。通过均方误差和决定系数来评价预测工具的性能。将该方法应用于ieee14总线测试系统,取得了良好的效果。
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