Artificial neural networks based steady state equivalents of power systems

Y. Jilai, L. Zhuo
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引用次数: 1

Abstract

The authors propose a new method for artificial neural networks (ANNs) based steady state equivalents of power systems. Because the multilayer Perceptron network (MPN) is a typical ANN and its training algorithm is quite effective, the authors use this network. When the studied power system is divided into three parts, which are internal system (IS), external system (ES) and boundary system (BS). Some tests show that the method has advantages of high accuracy, powerful suitability and high recognition speed.<>
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基于人工神经网络的电力系统稳态等效
作者提出了一种基于人工神经网络的电力系统稳态等效的新方法。由于多层感知器网络(MPN)是一种典型的人工神经网络,其训练算法非常有效,因此本文采用了该网络。将所研究的电力系统分为内部系统(is)、外部系统(ES)和边界系统(BS)三部分。实验表明,该方法具有精度高、适用性强、识别速度快等优点。
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