基于增长自组织特征映射的相干识别[电力系统稳定性]

T.N. Nababhushana, K.T. Veeramanju, Shivanna
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引用次数: 26

摘要

从可靠性的角度来看,扰动后电力系统的稳定运行是非常重要的。为此,需要在线评估,以便在短时间内评估受影响的系统组件。对扰动影响的快速评估需要外部系统动态等效的表述。另一方面,增强稳定性的预防性措施需要先验地了解将受扰动影响的部件。本文提出了一种无监督学习神经网络,即“生长自组织特征映射”,它动态生成网络结构,用于电力系统中相干发电机的识别。神经网络的数据是通过对一个1000总线、62发电机系统的仿真得到的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coherency identification using growing self organizing feature maps [power system stability]
Stable operation of a power system following a disturbance is very important from the point of view of reliability. For this purpose, online assessment is needed to evaluate the impacted system components in a short time. Fast evaluation of a disturbance impact requires the formulation of dynamic equivalence of external systems. On the other hand, preventive measures for stability enhancement requires a priori knowledge of the components that will be affected by the disturbance. This paper presents the identification of coherent generators in power systems using an unsupervised learning neural network called a "growing self-organizing feature map" which dynamically generates the network architecture. The data for the neural network has been obtained from the simulation of a 1000 bus, 62 generator system.
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