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A methodology based on neural networks for the determination of the critical clearing time of power systems transient stability

机译:基于神经网络的电力系统暂态稳定临界清除时间确定方法

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In this paper, the authors propose a methodology based on artificial neural networks (ANN) trained conveniently to compute the critical clearing time (CCT) of power system transient stability. The selected ANN is a feedforward multilayer perceptron (MLP). The critical clearing time is the only variable considered in the output. The input variables of the neural network were selected after careful assessment and they are composed of the electrical network parameters and topology represented by elements of the admittance matrix, the amplitude and bandwidth corresponding to the first large oscillation of the swing curve power vs. angle of the advanced generator. Training of the ANN has been enhanced in terms of speed and precision with the adoption of the second order Levenberg-Marquardt optimization method. After training, the ANN is used in such manner that the input data is obtained with only one time-domain study of any fault and clearing time, then the neural network will estimate the CCT. The proposed methodology is valid not only for the first-oscillation transient stability analysis but also to calculate the CCT of power systems that may experience several over oscillations. The New England 10-generator system has been used to test the proposed ANN-based methodology. Results of the tests indicate that the maximum testing error in the calculation of the critical clearing time is below 5%.
机译:在本文中,作者提出了一种基于人工神经网络(ANN)的方法,该方法经过方便地训练,可以计算电力系统暂态稳定的临界清除时间(CCT)。所选的ANN是前馈多层感知器(MLP)。关键清除时间是输出中考虑的唯一变量。经过仔细评估,选择了神经网络的输入变量,它们由电网参数和以导纳矩阵元素表示的拓扑组成,其振幅和带宽对应于摆幅曲线功率第一次相对于角度的大振荡。先进的发电机。通过采用二阶Levenberg-Marquardt优化方法,ANN的训练在速度和精度上得到了增强。训练后,以这样的方式使用ANN:仅对任何故障和清除时间进行一次时域研究即可获得输入数据,然后神经网络将估计CCT。所提出的方法不仅对于第一次振荡的瞬态稳定性分析有效,而且对于计算可能会经历几次过度振荡的电力系统的CCT都是有效的。新英格兰10发电机系统已用于测试所提出的基于ANN的方法。测试结果表明,关键清除时间的计算中最大测试误差低于5%。

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