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Analysis of SSR using artificial neural networks power system simulation

机译:使用人工神经网络的SSR分析电力系统仿真

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摘要

Artificial neural networks (ANNs) are being advantageously applied to power system analysis problems. They possess the ability to establish complicated input-output mappings through a learning process, without any explicit programming. In this paper, an ANN based method for subsynchronous resonance (SSR) analysis is presented. The designed ANN outputs a measure of the possibility of the occurrence of SSR and is fully trained to accommodate the variations of power system parameters over the entire operating range. The effectiveness of this approach is tested by experimenting on the first bench mark model proposed by IEEE Task Force on SSR.
机译:人工神经网络(ANN)正在有利地应用于电力系统分析问题。它们具有通过学习过程建立复杂的输入-输出映射的能力,而无需任何明确的编程。本文提出了一种基于ANN的次同步谐振(SSR)分析方法。设计的人工神经网络输出了发生SSR可能性的度量,并且经过全面培训,可以适应整个工作范围内电力系统参数的变化。通过对IEEE特别工作组(SSSR)提出的第一个基准模型进行实验,测试了该方法的有效性。

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