利用人工神经网络实现暂态稳定评估

Dalia M. Eltigani, K. Ramadan, E. Zakaria
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引用次数: 6

摘要

本文旨在验证人工神经网络(ANN)在评估单机无限母线系统暂态稳定性方面的准确性。将人工神经网络得到的故障临界清除时间与传统等面积判据方法的结果进行了比较。将多层前馈人工神经网络的概念应用到系统中。人工神经网络的训练是通过监督学习实现的;并采用反向传播技术作为学习方法,使训练误差最小化。训练数据集的生成过程分为两步。首先,采用等面积准则确定临界角度。然后用点到点法求解摆振方程直至临界角度,确定临界清场时间。然后对系统的稳定性进行了验证。结果我们发现,除非神经网络训练良好,否则在相同的输入数据集上,使用神经网络预测临界清除时间的准确性略低于传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of transient stability assessment using artificial neural networks
This paper aims at verifying the accuracy of Artificial Neural Networks (ANN) in assessing the transient stability of a single machine infinite bus system. The fault critical clearing time obtained through ANN is compared to the results of the conventional equal area criterion method. The multilayer feedforward artificial neural network concept is applied to the system. The training of the ANN is achieved through the supervised learning; and the back propagation technique is used as a learning method in order to minimize the training error. The training data set is generated using two steps process. First, the equal area criterion is used to determine the critical angle. After that the swing equation is solved using the point-to-point method up to the critical angle to determine the critical clearing time. Then the stability of the system is verified. As a result we find that the critical clearing time is predicted with slightly less accuracy using ANN compared to the conventional methods for the same input data sets unless the ANN is well trained.
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