基于Kohonen模型的电力系统动态稳定人工神经网络技术

H. Mori, Y. Tamaru, S. Tsuzuki
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引用次数: 73

摘要

提出了一种基于人工神经网络的在线电力系统动态稳定性评估方法。利用s矩阵法的矩阵变换,可以将z平面上最关键特征值的绝对值视为电力系统的动态稳定指标。采用Kohonen人工神经网络对指标进行估计,减少了计算量,避免了数值不稳定性问题。Kohonen模型基于自组织特征映射(SOFM)技术,该技术将输入模式转换为二维网格上的神经元。所使用的算法不需要老师的信号,也不太复杂,生成的映射使得输入模式在视觉上很容易理解。利用SOFM技术将电力系统条件分配给二维网格上的输出神经元。提出了两种计算估计索引的方法,使输出神经元调用与输入模式相对应的索引。比较了学习过程中使用的线性和非线性递减函数。验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An artificial neural-net based technique for power system dynamic stability with the Kohonen model
An artificial neural network-based method for evaluating online power system dynamic stability is presented. Using the matrix transformation of the S-matrix method, the absolute value of the most critical eigenvalue in the z-plane may be regarded as a power system dynamic stability index. The artificial neural net of Kohonen is used to estimate the index so that computational efforts are reduced and numerical instability problems are avoided. The Kohonen model is based on the self-organization feature mapping (SOFM) technique that transforms input patterns into neurons on the two-dimensional grid. The algorithm used does not require the teacher's signals and is not too complicated, and the resulting mapping makes it visually easy to understand the input pattern. Power system conditions are assigned to the output neurons on the two-dimensional grid with the SOFM technique. Two methods are presented to calculate the estimate index so that an output neuron calls the index corresponding to an input pattern. The linear and nonlinear decreasing function employed at the learning process are compared. The effectiveness of the proposed method is demonstrated.<>
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