General framework for neural network based real-time voltage stability assessment of electric power system

S. Repo
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引用次数: 5

Abstract

The need for real-time security assessment of electric power systems has increased due to open systems, an increase in the number of power wheeling transactions and environmental concerns. In this paper, special attention is focused on neural network generalisation in large-scale system modelling. Generalisation has been improved by operation points classification and a reduction of the number of neural network inputs. The results prove the capability of neural networks to model the most critical voltage stability margin in a large electric power system. The proposed approach is tested with an IEEE 118-bus test network. The generalisation and training time of a neural network model can be improved significantly using the proposed methods.
基于神经网络的电力系统电压实时稳定评估总体框架
由于开放系统、电力轮转交易数量的增加和环境问题,对电力系统实时安全评估的需求增加了。本文特别关注神经网络泛化在大规模系统建模中的应用。通过操作点分类和减少神经网络输入的数量,改进了泛化。结果证明了神经网络对大型电力系统最临界电压稳定裕度的建模能力。该方法在IEEE 118总线测试网络上进行了测试。使用该方法可以显著提高神经网络模型的泛化和训练时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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